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Erratum to"GenomeSyn:a bioinformatics tool for visualizing genome synteny and structural variations"[J.Genet.Genom.(2022)49,11741176]
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作者 Zu-Wen Zhou Zhi-Guang Yu +4 位作者 Xiao-Ming Huang Jin-Shen Liu Yi-Xiong Guo Ling-Ling Chen Jia-Ming Song 《Journal of Genetics and Genomics》 2025年第8期1068-1069,共2页
Fig.1.The GenomeSyn tool for visualizing genome synteny and characterizing structural variations.A:The first synteny visualization map showed the detailed information of two or three genomes and can display structural... Fig.1.The GenomeSyn tool for visualizing genome synteny and characterizing structural variations.A:The first synteny visualization map showed the detailed information of two or three genomes and can display structural variations and other annotation information.B:The second type of visualization map was simple and only showed the synteny relationship between the chromosomes of two or three genomes.C:Multiplatform general GenomeSyn submission page,applicable to Windows,MAC and web platforms;other analysis files can be entered in the"other"option.The publisher would like to apologise for any inconvenience caused. 展开更多
关键词 two three genomes structural variations synteny relationship genomesyn visualizing genome synteny characterizing structural variationsa genome synteny synteny visualization map
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Effective convolution mixed Transformer Siamese network for robust visual tracking
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作者 Lin Chen Yungang Liu Yuan Wang 《Control Theory and Technology》 2025年第2期221-236,共16页
Siamese tracking algorithms usually take convolutional neural networks(CNNs)as feature extractors owing to their capability of extracting deep discriminative features.However,the convolution kernels in CNNs have limit... Siamese tracking algorithms usually take convolutional neural networks(CNNs)as feature extractors owing to their capability of extracting deep discriminative features.However,the convolution kernels in CNNs have limited receptive fields,making it difficult to capture global feature dependencies which is important for object detection,especially when the target undergoes large-scale variations or movement.In view of this,we develop a novel network called effective convolution mixed Transformer Siamese network(SiamCMT)for visual tracking,which integrates CNN-based and Transformer-based architectures to capture both local information and long-range dependencies.Specifically,we design a Transformer-based module named lightweight multi-head attention(LWMHA)which can be flexibly embedded into stage-wise CNNs and improve the network’s representation ability.Additionally,we introduce a stage-wise feature aggregation mechanism which integrates features learned from multiple stages.By leveraging both location and semantic information,this mechanism helps the SiamCMT to better locate and find the target.Moreover,to distinguish the contribution of different channels,a channel-wise attention mechanism is introduced to enhance the important channels and suppress the others.Extensive experiments on seven challenging benchmarks,i.e.,OTB2015,UAV123,GOT10K,LaSOT,DTB70,UAVTrack112_L,and VOT2018,demonstrate the effectiveness of the proposed algorithm.Specially,the proposed method outperforms the baseline by 3.5%and 3.1%in terms of precision and success rates with a real-time speed of 59.77 FPS on UAV123. 展开更多
关键词 visual tracking Siamese network TRANSFORMER Feature aggregation channel-wise attention
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VPM-Net:Person Re-ID Network Based on Visual Prompt Technology and Multi-Instance Negative Pooling
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作者 Haitao Xie Yuliang Chen +3 位作者 Yunjie Zeng Lingyu Yan Zhizhi Wang Zhiwei Ye 《Computers, Materials & Continua》 2025年第5期3389-3410,共22页
With the rapid development of intelligent video surveillance technology,pedestrian re-identification has become increasingly important inmulti-camera surveillance systems.This technology plays a critical role in enhan... With the rapid development of intelligent video surveillance technology,pedestrian re-identification has become increasingly important inmulti-camera surveillance systems.This technology plays a critical role in enhancing public safety.However,traditional methods typically process images and text separately,applying upstream models directly to downstream tasks.This approach significantly increases the complexity ofmodel training and computational costs.Furthermore,the common class imbalance in existing training datasets limitsmodel performance improvement.To address these challenges,we propose an innovative framework named Person Re-ID Network Based on Visual Prompt Technology andMulti-Instance Negative Pooling(VPM-Net).First,we incorporate the Contrastive Language-Image Pre-training(CLIP)pre-trained model to accurately map visual and textual features into a unified embedding space,effectively mitigating inconsistencies in data distribution and the training process.To enhancemodel adaptability and generalization,we introduce an efficient and task-specific Visual Prompt Tuning(VPT)technique,which improves the model’s relevance to specific tasks.Additionally,we design two key modules:the Knowledge-Aware Network(KAN)and theMulti-Instance Negative Pooling(MINP)module.The KAN module significantly enhances the model’s understanding of complex scenarios through deep contextual semantic modeling.MINP module handles samples,effectively improving the model’s ability to distinguish fine-grained features.The experimental outcomes across diverse datasets underscore the remarkable performance of VPM-Net.These results vividly demonstrate the unique advantages and robust reliability of VPM-Net in fine-grained retrieval tasks. 展开更多
关键词 Person re-identification multi-instance negative pooling visual prompt tuning
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DIEONet:Domain-Invariant Information Extraction and Optimization Network for Visual Place Recognition
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作者 Shaoqi Hou Zebang Qin +3 位作者 Chenyu Wu Guangqiang Yin Xinzhong Wang Zhiguo Wang 《Computers, Materials & Continua》 2025年第3期5019-5033,共15页
Visual Place Recognition(VPR)technology aims to use visual information to judge the location of agents,which plays an irreplaceable role in tasks such as loop closure detection and relocation.It is well known that pre... Visual Place Recognition(VPR)technology aims to use visual information to judge the location of agents,which plays an irreplaceable role in tasks such as loop closure detection and relocation.It is well known that previous VPR algorithms emphasize the extraction and integration of general image features,while ignoring the mining of salient features that play a key role in the discrimination of VPR tasks.To this end,this paper proposes a Domain-invariant Information Extraction and Optimization Network(DIEONet)for VPR.The core of the algorithm is a newly designed Domain-invariant Information Mining Module(DIMM)and a Multi-sample Joint Triplet Loss(MJT Loss).Specifically,DIMM incorporates the interdependence between different spatial regions of the feature map in the cascaded convolutional unit group,which enhances the model’s attention to the domain-invariant static object class.MJT Loss introduces the“joint processing of multiple samples”mechanism into the original triplet loss,and adds a new distance constraint term for“positive and negative”samples,so that the model can avoid falling into local optimum during training.We demonstrate the effectiveness of our algorithm by conducting extensive experiments on several authoritative benchmarks.In particular,the proposed method achieves the best performance on the TokyoTM dataset with a Recall@1 metric of 92.89%. 展开更多
关键词 visual place recognition domain-invariant information mining module multi-sample joint triplet loss
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SFFSlib:A Python library for optimizing attribute layouts from micro to macro scales in network visualization
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作者 Ke-Chao Zhang Sheng-Yue Jiang Jing Xiao 《Chinese Physics B》 2025年第5期124-138,共15页
Complex network modeling characterizes system relationships and structures,while network visualization enables intuitive analysis and interpretation of these patterns.However,existing network visualization tools exhib... Complex network modeling characterizes system relationships and structures,while network visualization enables intuitive analysis and interpretation of these patterns.However,existing network visualization tools exhibit significant limitations in representing attributes of complex networks at various scales,particularly failing to provide advanced visual representations of specific nodes and edges,community affiliation attribution,and global scalability.These limitations substantially impede the intuitive analysis and interpretation of complex network patterns through visual representation.To address these limitations,we propose SFFSlib,a multi-scale network visualization framework incorporating novel methods to highlight attribute representation in diverse network scenarios and optimize structural feature visualization.Notably,we have enhanced the visualization of pivotal details at different scales across diverse network scenarios.The visualization algorithms proposed within SFFSlib were applied to real-world datasets and benchmarked against conventional layout algorithms.The experimental results reveal that SFFSlib significantly enhances the clarity of visualizations across different scales,offering a practical solution for the advancement of network attribute representation and the overall enhancement of visualization quality. 展开更多
关键词 complex network visualization layout algorithm signed network fuzzy community structure social bot network
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基于深度强化学习NoisyNet-A3C算法的自动化渗透测试方法
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作者 董卫宇 刘鹏坤 +2 位作者 刘春玲 唐永鹤 马钰普 《郑州大学学报(工学版)》 北大核心 2025年第5期60-68,共9页
在自动化渗透测试领域,现有攻击路径决策算法大多基于部分可观测马尔可夫决策过程(POMDP),存在算法复杂度过高、收敛速度慢、易陷入局部最优解等问题。针对这些问题,提出了一种基于马尔可夫决策过程(MDP)的强化学习算法NoisyNet-A3C,并... 在自动化渗透测试领域,现有攻击路径决策算法大多基于部分可观测马尔可夫决策过程(POMDP),存在算法复杂度过高、收敛速度慢、易陷入局部最优解等问题。针对这些问题,提出了一种基于马尔可夫决策过程(MDP)的强化学习算法NoisyNet-A3C,并用于自动化渗透测试领域。该算法通过多线程训练actor-critic,每个线程的运算结果反馈到主神经网络中,同时从主神经网络中获取最新的参数更新,充分利用计算机性能,减少数据相关性,提高训练效率。另外,训练网络添加噪声参数与权重网络训练更新参数,增加了行为策略的随机性,利于更快探索有效路径,减少了数据扰动的影响,从而增强了算法的鲁棒性。实验结果表明:与A3C、Q-learning、DQN和NDSPI-DQN算法相比,NoisyNet-A3C算法收敛速度提高了30%以上,验证了所提算法的收敛速度更快。 展开更多
关键词 渗透测试 攻击路径决策 A3c算法 深度强化学习 METASPLOIT
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基于FCM-SENet-TCN的低压台区光伏超短期功率预测方法 被引量:2
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作者 魏伟 余鹤 +1 位作者 叶利 汪应春 《中国电力》 北大核心 2025年第6期172-179,共8页
现有光伏功率预测的方法在应对低压台区分布式光伏时,存在初始数据过于冗余、预测特征提取困难,进而导致预测精度不足的问题。提出一种基于FCM-SENet-TCN的低压台区光伏超短期功率预测方法。首先,利用模糊C均值聚类算法(fuzzy cmeans,F... 现有光伏功率预测的方法在应对低压台区分布式光伏时,存在初始数据过于冗余、预测特征提取困难,进而导致预测精度不足的问题。提出一种基于FCM-SENet-TCN的低压台区光伏超短期功率预测方法。首先,利用模糊C均值聚类算法(fuzzy cmeans,FCM)充分挖掘多源气象环境数据,将初始数据集以不同天气进行聚类,降低初始数据冗余度;其次,将压缩和激励网络(squeeze-and-excitation networks,SENet)融入时间卷积网络(temporal convolutional network,TCN),高效提取复杂特征并提高预测精度;最后,应用平均绝对百分比误差和均方根误差作为评价指标,对预测结果进行评估。仿真结果表明:所提预测方法可以充分利用初始气象数据,能够针对低压台区分布式光伏发电机组出力特点,做出更为精确的超短期功率预测。 展开更多
关键词 低压台区 光伏功率预测 模糊c均值聚类
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基于Visual Basic6.0导线测量平差程序设计
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作者 孟令涛 《价值工程》 2025年第22期123-125,共3页
本文针对导线测量平差的繁杂性及用户对处理软件的易用性要求,结合Visual Basic6.0语言的可视化编程的优势,依据导线测量平差的基本原理与方法,采用Visual Basic6.0语言编程方法,设计并实现导线测量平差系统软件。以一个具体导线实例验... 本文针对导线测量平差的繁杂性及用户对处理软件的易用性要求,结合Visual Basic6.0语言的可视化编程的优势,依据导线测量平差的基本原理与方法,采用Visual Basic6.0语言编程方法,设计并实现导线测量平差系统软件。以一个具体导线实例验证系统的可行性和简便性,体现Visual Basic6.0编程在测量平差计算中的优越性。 展开更多
关键词 visual Basic6.0 附合导线 程序设计
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蛋白激酶C抑制剂通过减少NETs形成减轻二氧化硅诱导的肺纤维化
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作者 王菲 严瑞卿 +2 位作者 李霞 谢子豪 穆敏 《右江民族医学院学报》 2025年第4期551-558,共8页
目的探究二氧化硅暴露致肺纤维化的分子机制(聚焦NETs的作用),并评估蛋白激酶C抑制剂(LXS196)在不同时间窗的治疗效果。方法构建硅沉着病小鼠模型,将C57BL/6雄性小鼠随机分为5组(n=5),(1)对照组(Veh组):鼻腔滴注生理盐水60μL;(2)二氧... 目的探究二氧化硅暴露致肺纤维化的分子机制(聚焦NETs的作用),并评估蛋白激酶C抑制剂(LXS196)在不同时间窗的治疗效果。方法构建硅沉着病小鼠模型,将C57BL/6雄性小鼠随机分为5组(n=5),(1)对照组(Veh组):鼻腔滴注生理盐水60μL;(2)二氧化硅暴露组(CS组):鼻腔滴注二氧化硅悬液60μL(12 mg/60μL);(3)治疗组:二氧化硅暴露后分别于第1~2天(LXS 1 d组)、第5~6天(LXS 5 d组)和第12~13天(LXS 12 d组)腹腔注射蛋白激酶C抑制剂LXS196(15 mg/kg·d,连续2 d)。本研究通过监测小鼠体重变化及肺功能呼吸参数,评估硅沉着病小鼠的生理状态。实验终点处死小鼠后取肺组织,采用组织病理学技术(HE、Masson染色)观察二氧化硅暴露后小鼠肺部炎症反应及纤维化程度,并通过免疫荧光染色共标检测中性粒细胞胞外陷阱(NETs)的表达变化。蛋白质免疫印迹法检测肺组织中MPO、CitH3、α-SMA和TGF-β1等关键蛋白的表达水平。结果与Veh组相比,CS组小鼠的体重恢复缓慢(P<0.05),小鼠呼吸功能受损,其中LXS 5 d治疗组在用药后体重和肺功能改善最明显(P<0.05)。病理学检查表明,二氧化硅暴露显著加剧了肺部炎症反应和纤维化进程(P<0.001),同时表明暴露后第5天给药治疗效果最为显著(P<0.05)。分子机制研究显示,CS组小鼠肺组织中MPO、CitH3、α-SMA和TGF-β1等与炎症和纤维化相关蛋白表达水平均显著上调(P<0.05),而LXS196治疗可显著抑制这些指标的表达水平(P<0.05)。结论二氧化硅暴露通过诱发强烈的炎症反应并产生NETs导致严重肺毒性,LXS196治疗后减少了NETs的释放,进而缓解了硅沉着病肺纤维化,其中在二氧化硅暴露后第5天、第6天时(急性期)(LXS 5 d组)给药治疗效果最明显,这一发现为阐明二氧化硅暴露致肺纤维化的分子机制提供了新的实验依据,并为治疗硅沉着病肺纤维化提供新思路。 展开更多
关键词 矽肺 肺纤维化 中性粒细胞胞外陷阱 蛋白激酶c
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Women in visual neural regeneration research
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作者 Tonia S.Rex David J.Calkins 《Neural Regeneration Research》 SCIE CAS 2025年第2期489-490,共2页
The year 2024 marks the 60^(th)anniversary of Title IX and 25 years since the New York Times revealed bias against female faculty members at the Massachusetts Institute of Technology.We take an opportunity here to exa... The year 2024 marks the 60^(th)anniversary of Title IX and 25 years since the New York Times revealed bias against female faculty members at the Massachusetts Institute of Technology.We take an opportunity here to examine the state of gender bias in a relatively new yet already prominent field,neural regeneration in the visual system,for which there is a well-defined context useful for this purpose.The National Eye Institute(NEI)provided the first round of research funding for its Audacious Goals Initiative(AGI)on visual neural regeneration in 2013 and the last round in 2021.Therefore,we focus on this timespan.Data sources included PubMed,the National Science Foundation(NSF),the NEI,the Blue Ridge Institute for Medical Research and data from the major professional organization for eye and vision research,the Association for Research in Vision and Ophthalmology(ARVO). 展开更多
关键词 NEURAL visual TIMES
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基于Visual Studio的风电法兰均布螺栓孔CAM系统开发与应用 被引量:1
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作者 夏静文 《南方农机》 2025年第6期126-129,共4页
【目的】针对风电法兰分类细、规格多、直径大、孔数多,导致多孔加工坐标计算量大、输入效率低,且极坐标、旋转坐标及宏程序、二次开发等加工方案难以满足法兰生产企业实际生产需求的问题,提出一种高效解决方案。【方法】基于Visual Stu... 【目的】针对风电法兰分类细、规格多、直径大、孔数多,导致多孔加工坐标计算量大、输入效率低,且极坐标、旋转坐标及宏程序、二次开发等加工方案难以满足法兰生产企业实际生产需求的问题,提出一种高效解决方案。【方法】基于Visual Studio 2022开发平台,开发了一款高效实用、能灵活快速生成螺栓孔加工程序的专用CAM系统。该系统应用了模块化设计思路,把零件信息、加工参数等按相应模块独立处理,有利于系统根据法兰设计标准的变化而及时调整,自动生成不同规格的风电法兰螺栓孔加工程序。【结果】所开发的风电法兰螺栓孔加工CAM系统,实现了多孔加工程序的快速自动生成,显著降低了数控编程员的劳动强度,提高了法兰孔加工生产效率。【结论】未来可进一步对AutoCAD、NX平台进行二次开发,借助平台强大的二维三维图形设计基础,开发基于法兰零件的集设计制造为一体的中小型CAD/CAM系统,以满足企业不断发展的生产管理需求。 展开更多
关键词 风电法兰 螺栓孔 数控加工 cAM visual Studio
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MG-SLAM: RGB-D SLAM Based on Semantic Segmentation for Dynamic Environment in the Internet of Vehicles 被引量:1
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作者 Fengju Zhang Kai Zhu 《Computers, Materials & Continua》 2025年第2期2353-2372,共20页
The Internet of Vehicles (IoV) has become an important direction in the field of intelligent transportation, in which vehicle positioning is a crucial part. SLAM (Simultaneous Localization and Mapping) technology play... The Internet of Vehicles (IoV) has become an important direction in the field of intelligent transportation, in which vehicle positioning is a crucial part. SLAM (Simultaneous Localization and Mapping) technology plays a crucial role in vehicle localization and navigation. Traditional Simultaneous Localization and Mapping (SLAM) systems are designed for use in static environments, and they can result in poor performance in terms of accuracy and robustness when used in dynamic environments where objects are in constant movement. To address this issue, a new real-time visual SLAM system called MG-SLAM has been developed. Based on ORB-SLAM2, MG-SLAM incorporates a dynamic target detection process that enables the detection of both known and unknown moving objects. In this process, a separate semantic segmentation thread is required to segment dynamic target instances, and the Mask R-CNN algorithm is applied on the Graphics Processing Unit (GPU) to accelerate segmentation. To reduce computational cost, only key frames are segmented to identify known dynamic objects. Additionally, a multi-view geometry method is adopted to detect unknown moving objects. The results demonstrate that MG-SLAM achieves higher precision, with an improvement from 0.2730 m to 0.0135 m in precision. Moreover, the processing time required by MG-SLAM is significantly reduced compared to other dynamic scene SLAM algorithms, which illustrates its efficacy in locating objects in dynamic scenes. 展开更多
关键词 visual SLAM dynamic scene semantic segmentation GPU acceleration key segmentation frame
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Formula-S:Situated Visualization for Traditional Chinese Medicine Formula Learning 被引量:1
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作者 Zhi-Yue Wu Su-Yuan Peng +1 位作者 Yan Zhu Liang Zhou 《Chinese Medical Sciences Journal》 2025年第1期57-67,I0007,共12页
Objective The study of medicine formulas is a core component of traditional Chinese medicine(TCM),yet traditional learning methods often lack interactivity and contextual understanding,making it challenging for beginn... Objective The study of medicine formulas is a core component of traditional Chinese medicine(TCM),yet traditional learning methods often lack interactivity and contextual understanding,making it challenging for beginners to grasp the intricate composition rules of formulas.To address this gap,we introduce Formula-S,a situated visualization method for TCM formula learning in augmented reality(AR)and evaluate its performance.This study aims to evaluate the effectiveness of Formula-S in enhancing TCM formula learning for beginners by comparing it with traditional text-based formula learning and web-based visualization.Methods Formula-S is an interactive AR tool designed for TCM formula learning,featuring three modes(3D,Web,and Table).The dataset included TCM formulas and herb properties extracted from authoritative references,including textbook and the SymMap database.In Formula-S,the hierarchical visualization of the formulas as herbal medicine compositions,is linked to the multidimensional herb attribute visualization and embedded in the real world,where real herb samples are presented.To evaluate its effectiveness,a controlled study(n=30)was conducted.Participants who had no formal TCM knowledge were tasked with herbal medicine identification,formula composition,and recognition.In the study,participants interacted with the AR tool through HoloLens 2.Data were collected on both task performance(accuracy and response time)and user experience,with a focus on task efficiency,accuracy,and user preference across the different learning modes.Results The situated visualization method of Formula-S had comparable accuracy to other methods but shorter response time for herbal formula learning tasks.Regarding user experience,our new approach demonstrated the highest system usability and lowest task load,effectively reducing cognitive load and allowing users to complete tasks with greater ease and efficiency.Participants reported that Formula-S enhanced their learning experience through its intuitive interface and immersive AR environment,suggesting this approach offers usability advantages for TCM education.Conclusions The situated visualization method in Formula-S offers more efficient and accurate searching capabilities compared to traditional and web-based methods.Additionally,it provides superior contextual understanding of TCM formulas,making it a promising new solution for TCM learning. 展开更多
关键词 health informatics situated visualization augmented reality traditional chinese medicine FORMULA
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UV-assisted ratiometric fiuorescence sensor for one-pot visual detection of Salmonella 被引量:1
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作者 Ren Shen Yanmei Fang +4 位作者 Chunxiao Yang Quande Wei Pui-In Mak Rui P.Martins Yanwei Jia 《Chinese Chemical Letters》 2025年第4期593-599,共7页
Rapid diagnosis of Salmonella is crucial for the effective control of food safety incidents, especially in regions with poor hygiene conditions. Polymerase chain reaction(PCR), as a promising tool for Salmonella detec... Rapid diagnosis of Salmonella is crucial for the effective control of food safety incidents, especially in regions with poor hygiene conditions. Polymerase chain reaction(PCR), as a promising tool for Salmonella detection, is facing a lack of simple and fast sensing methods that are compatible with field applications in resource-limited areas. In this work, we developed a sensing approach to identify PCR-amplified Salmonella genomic DNA with the naked eye in a snapshot. Based on the ratiometric fiuorescence signals from SYBR Green Ⅰ and Hydroxyl naphthol blue, positive samples stood out from negative ones with a distinct color pattern under UV exposure. The proposed sensing scheme enabled highly specific identification of Salmonella with a detection limit at the single-copy level. Also, as a supplement to the intuitive naked-eye visualization results, numerical analysis of the colored images was available with a smartphone app to extract RGB values from colored images. This work provides a simple, rapid, and user-friendly solution for PCR identification, which promises great potential in molecular diagnosis of Salmonella and other pathogens in field. 展开更多
关键词 Bacteria detection Polymerase chain reaction Naked-eye visualization Ratiometric fiuorescence Smartphone app
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Visualizing global progress and challenges in esophagogastric variceal bleeding 被引量:1
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作者 De-Xin Wang Xue-Jie Wu +7 位作者 Jin-Zhong Yu Jun-Yi Zhan Fei-Fei Xing Wei Liu Jia-Mei Chen Ping Liu Cheng-Hai Liu Yong-Ping Mu 《World Journal of Gastrointestinal Surgery》 2025年第4期369-388,共20页
BACKGROUND Esophageal and gastric variceal bleeding is a catastrophic complication of portal hypertension,most commonly caused by cirrhosis of various etiologies.Although a considerable body of research has been condu... BACKGROUND Esophageal and gastric variceal bleeding is a catastrophic complication of portal hypertension,most commonly caused by cirrhosis of various etiologies.Although a considerable body of research has been conducted in this area,the complexity of the disease and the lack of standardized treatment strategies have led to fragmented findings,insufficient information,and a lack of systematic investigation.Bibliometric analysis can help clarify research trends,identify core topics,and reveal potential future directions.Therefore,this study aims to use bibliometric methods to conduct an in-depth exploration of research progress in this field,with the expectation of providing new insights for both clinical practice and scientific research.AIM To evaluate research trends and advancements in esophagogastric variceal bleeding(EGVB)over the past twenty years.METHODS Relevant publications on EGVB were retrieved from the Web of Science Core Collection.VOSviewer,Pajek,CiteSpace,and the bibliometrix package were then employed to perform bibliometric visualizations of publication volume,countries,institutions,journals,authors,keywords,and citation counts.RESULTS The analysis focused on original research articles and review papers.From 2004 to 2023,a total of 2097 records on EGVB were retrieved.The number of relevant publications has increased significantly over the past two decades,especially in China and the United States.The leading contributors in this field,in terms of countries,institutions,authors,and journals,were China,Assistance Publique-Hôpitaux de Paris,Bosch Jaime,and World Journal of Gastroenterology,respectively.Core keywords in this field include portal hypertension,management,liver cirrhosis,risk,prevention,and diagnosis.Future research directions may focus on optimizing diagnostic methods,personalized treatment,and multidisciplinary collaboration.CONCLUSION Using bibliometric methods,this study reveals the developmental trajectory and trends in research on EGVB,underscoring risk assessment and diagnostic optimization as the core areas of current focus.The study provides an innovative and systematic perspective for this field,indicating that future research could center on multidisciplinary collaboration,personalized treatment approaches,and the development of new diagnostic tools.Moreover,this work offers practical research directions for both the academic community and clinical practice,driving continued advancement in this domain. 展开更多
关键词 Esophagogastric variceal bleeding Liver cirrhosis Portal hypertension Non-cirrhotic portal hypertension BIBLIOMETRIcS visualIZATION
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DKP-SLAM:A Visual SLAM for Dynamic Indoor Scenes Based on Object Detection and Region Probability
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作者 Menglin Yin Yong Qin Jiansheng Peng 《Computers, Materials & Continua》 SCIE EI 2025年第1期1329-1347,共19页
In dynamic scenarios,visual simultaneous localization and mapping(SLAM)algorithms often incorrectly incorporate dynamic points during camera pose computation,leading to reduced accuracy and robustness.This paper prese... In dynamic scenarios,visual simultaneous localization and mapping(SLAM)algorithms often incorrectly incorporate dynamic points during camera pose computation,leading to reduced accuracy and robustness.This paper presents a dynamic SLAM algorithm that leverages object detection and regional dynamic probability.Firstly,a parallel thread employs the YOLOX object detectionmodel to gather 2D semantic information and compensate for missed detections.Next,an improved K-means++clustering algorithm clusters bounding box regions,adaptively determining the threshold for extracting dynamic object contours as dynamic points change.This process divides the image into low dynamic,suspicious dynamic,and high dynamic regions.In the tracking thread,the dynamic point removal module assigns dynamic probability weights to the feature points in these regions.Combined with geometric methods,it detects and removes the dynamic points.The final evaluation on the public TUM RGB-D dataset shows that the proposed dynamic SLAM algorithm surpasses most existing SLAM algorithms,providing better pose estimation accuracy and robustness in dynamic environments. 展开更多
关键词 visual SLAM dynamic scene YOLOX K-means++clustering dynamic probability
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Malicious Document Detection Based on GGE Visualization
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作者 Youhe Wang Yi Sun +1 位作者 Yujie Li Chuanqi Zhou 《Computers, Materials & Continua》 SCIE EI 2025年第1期1233-1254,共22页
With the development of anti-virus technology,malicious documents have gradually become the main pathway of Advanced Persistent Threat(APT)attacks,therefore,the development of effective malicious document classifiers ... With the development of anti-virus technology,malicious documents have gradually become the main pathway of Advanced Persistent Threat(APT)attacks,therefore,the development of effective malicious document classifiers has become particularly urgent.Currently,detection methods based on document structure and behavioral features encounter challenges in feature engineering,these methods not only have limited accuracy,but also consume large resources,and usually can only detect documents in specific formats,which lacks versatility and adaptability.To address such problems,this paper proposes a novel malicious document detection method-visualizing documents as GGE images(Grayscale,Grayscale matrix,Entropy).The GGE method visualizes the original byte sequence of the malicious document as a grayscale image,the information entropy sequence of the document as an entropy image,and at the same time,the grayscale level co-occurrence matrix and the texture and spatial information stored in it are converted into grayscale matrix image,and fuses the three types of images to get the GGE color image.The Convolutional Block Attention Module-EfficientNet-B0(CBAM-EfficientNet-B0)model is then used for classification,combining transfer learning and applying the pre-trained model on the ImageNet dataset to the feature extraction process of GGE images.As shown in the experimental results,the GGE method has superior performance compared with other methods,which is suitable for detecting malicious documents in different formats,and achieves an accuracy of 99.44%and 97.39%on Portable Document Format(PDF)and office datasets,respectively,and consumes less time during the detection process,which can be effectively applied to the task of detecting malicious documents in real-time. 展开更多
关键词 Malicious document visualIZATION Efficientnet-B0 convolutional block attention module GGE image
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Visual synapse based on reconfigurable organic photovoltaic cell 被引量:1
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作者 Xiangrong Pu Fan Shu +2 位作者 Qifan Wang Gang Liu Zhang Zhang 《Journal of Semiconductors》 2025年第2期105-112,共8页
The hierarchical and coordinated processing of visual information by the brain demonstrates its superior ability to min-imize energy consumption and maximize signal transmission efficiency.Therefore,it is crucial to d... The hierarchical and coordinated processing of visual information by the brain demonstrates its superior ability to min-imize energy consumption and maximize signal transmission efficiency.Therefore,it is crucial to develop artificial visual synapses that integrate optical sensing and synaptic functions.This study fully leverages the excellent photoresponsivity proper-ties of the PM6:Y6 system to construct a vertical photo-tunable organic memristor and conducts in-depth research on its resis-tive switching performance,photodetection capability,and simulation of photo-synaptic behavior,showcasing its excellent per-formance in processing visual information and simulating neuromorphic behaviors.The device achieves stable and gradual resis-tance change,successfully simulating voltage-controlled long-term potentiation/depression(LTP/LTD),and exhibits various photo-electric synergistic regulation of synaptic plasticity.Moreover,the device has successfully simulated the image percep-tion and recognition functions of the human visual nervous system.The non-volatile Au/PM6:Y6/ITO memristor is used as an artificial synapse and neuron modeling,building a hierarchical coordinated processing SLP-CNN cascade neural network for visual image recognition training,its linear tunable photoconductivity characteristic serves as the weight update of the net-work,achieving a recognition accuracy of up to 93.4%.Compared with the single-layer visual target recognition model,this scheme has improved the recognition accuracy by 19.2%. 展开更多
关键词 organic memristor visual synapse neuromorphic computing PM6:Y6 image recognition
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Studying and Estimating Visual Pollution in Irbid City (Centre of Irbid City-Case Study)
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作者 Mohmd Addad Shehadeh A-Taani 《Journal of Environmental Science and Engineering(A)》 CAS 2025年第1期14-30,共17页
Despite the global attention towards pollution,it remains a significant global threat and challenge for both developed and developing countries.Urbanization and economic development influence different types of pollut... Despite the global attention towards pollution,it remains a significant global threat and challenge for both developed and developing countries.Urbanization and economic development influence different types of pollution.Visual pollution is considered a new phenomenon referring to the impact of existing and growing mainstream pollution which impairs an individual’s ability to enjoy visits or views.Recently,Jordanian cities have expanded in response to urbanization and ongoing development.Irbid City has the second largest population in Jordan after the capital Amman City highest population density in Jordan.In the modern era,Irbid City dramatically increased in population and dimension.The growth of the demographic population has been significant and has led to overpopulation,rapid urbanization,and unresolved problems associated with spatial planning and infrastructures leading to different types of pollution including visual pollution.The study area focuses on the city center with the most crowded population through field visits and actual observations.The study technique is descriptive and analytical,with a focus on meticulous monitoring and a follow-up-based questionnaire which is a tool for the study,involving data collection,classification,presentation,analysis,interpretation,and exploration to identify new facts and generalizations that can help solve current issues of visual pollution.The study provides recommendations for Irbid Municipal to eliminate visual pollution,in parallel with stricter supervision from the municipality during the building process to ensure proper implementation of the new rules,adopting an integrated policy for the city with the rest of the social,political,sensory,cultural,economic,and functional aspects,so that this policy is in the short and long term. 展开更多
关键词 visual pollution Irbid city spatial planning OVERPOPULATION QUESTIONNAIRE visual distortion urban planning.
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Global trends and hotspots of type 2 diabetes in children and adolescents:A bibliometric study and visualization analysis
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作者 Fang-Shuo Zhang Hai-Jing Li +7 位作者 Xue Yu Yi-Ping Song Yan-Feng Ren Xuan-Zhu Qian Jia-Li Liu Wen-Xun Li Yi-Ran Huang Kuo Gao 《World Journal of Diabetes》 SCIE 2025年第1期140-168,共29页
BACKGROUND Epidemiological surveys indicate an increasing incidence of type 2 diabetes mellitus(T2DM)among children and adolescents worldwide.Due to rapid disease progression,severe long-term cardiorenal complications... BACKGROUND Epidemiological surveys indicate an increasing incidence of type 2 diabetes mellitus(T2DM)among children and adolescents worldwide.Due to rapid disease progression,severe long-term cardiorenal complications,a lack of effective treatment strategies,and substantial socioeconomic burdens,it has become an urgent public health issue that requires management and resolution.Adolescent T2DM differs from adult T2DM.Despite a significant increase in our understanding of youth-onset T2DM over the past two decades,the related review and evidence-based content remain limited.AIM To visualize the hotspots and trends in pediatric and adolescent T2DM research and to forecast their future research themes.METHODS This study utilized the terms“children”,“adolescents”,and“type 2 diabetes”,retrieving relevant articles published between 1983 and 2023 from three citation databases within the Web of Science Core Collection(SCI,SSCI,ESCI).Utilizing CiteSpace and VoSviewer software,we analyze and visually represent the annual output of literature,countries involved,and participating institutions.This allows us to predict trends in this research field.Our analysis encompasses co-cited authors,journal overlays,citation overlays,time-zone views,keyword analysis,and reference analysis,etc.RESULTS A total of 9210 articles were included,and the annual publication volume in this field showed a steady growth trend.The United States had the highest number of publications and the highest H-index.The United States also had the most research institutions and the strongest research capacity.The global hot journals were primarily diabetes professional journals but also included journals related to nutrition,endocrinology,and metabolism.Keyword analysis showed that research related to endothelial dysfunction,exposure risk,cardiac metabolic risk,changes in gut microbiota,the impact on comorbidities and outcomes,etc.,were emerging keywords.They have maintained their popularity in this field,suggesting that these areas have garnered significant research interest in recent years.CONCLUSION Pediatric and adolescent T2DM is increasingly drawing global attention,with genes,behaviors,environmental factors,and multisystemic interventions potentially emerging as future research hot spots. 展开更多
关键词 cHILD ADOLEScENT Type 2 diabetes mellitus BIBLIOMETRIcS Knowledge mapping visualIZATION citeSpace VOSviewer
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