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Delphi8 for.NET开发Web应用程序的探讨 被引量:1
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作者 郭江峰 袁丽萍 《西部探矿工程》 CAS 2005年第3期220-221,共2页
针对Delphi8for .NET的技术特点 ,分析了利用其开发Web应用程序的现实意义 ,提出了Delphi8for .NET开发Web应用程序的典型框架。基于MSAccess和MSSQLServer两种数据库 ,对Delphi8for .
关键词 delphi8 for.net WEB应用程序 数据库 技术比较
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基于Delphi8 for.NET开发Web应用程序
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作者 郭江峰 《南通纺织职业技术学院学报》 2004年第3期12-14,共3页
针对Delphi8for.NET的技术特点,阐述了利用其开发Web应用程序的现实意义,介绍了Delphi8for.NET开发Web应用程序的典型框架.对使用Delphi8for.NET开发基于MSSQLServer数据库的Web应用程序进行了探讨.
关键词 delphi8 for.net WEB应用程序 数据库
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基于VGG19Net-CBAM和双重匹配机制的牛唇纹身份识别研究
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作者 蒲朝燚 王月明 +2 位作者 李泽昊 李琦 陈波 《黑龙江畜牧兽医》 北大核心 2026年第1期85-93,共9页
为了解决畜牧保险行业中牛个体身份精确识别的问题,本研究提出了一种基于VGG19Net-CBAM模型和双重匹配算法的牛唇纹身份识别方法。首先,使用YOLOv8牛唇纹目标检测模型提取图片中的牛唇纹目标图像;其次,构建嵌入CBAM注意力机制模块的VGG1... 为了解决畜牧保险行业中牛个体身份精确识别的问题,本研究提出了一种基于VGG19Net-CBAM模型和双重匹配算法的牛唇纹身份识别方法。首先,使用YOLOv8牛唇纹目标检测模型提取图片中的牛唇纹目标图像;其次,构建嵌入CBAM注意力机制模块的VGG19Net卷积网络模型,并结合Triplet Loss与Softmax损失函数进行联合训练后,从牛唇纹目标图像中提取可用于身份识别的牛唇纹特征向量;最后,采用结合多数投票和决策机制的双重身份匹配算法,将提取到的特征向量与数据库中预先录入的牛唇纹特征向量进行匹配,从而实现牛只身份的精确识别。结果表明:YOLOv8牛唇纹目标检测模型输入分辨率为640像素×640像素时,牛唇纹目标检测精确率为99.9%,平均精确率(m AP) 50为99.5%、m AP50-95为81.2%,召回率为100%。使用3×3标准卷积核构建嵌入CBAM注意力机制模块的VGG19Net卷积神经网络的牛只身份识别精确率为99.6%。在身份匹配过程中使用K值为15的双重匹配算法进行身份识别时,识别精确率为99.8%,召回率为93.4%,调和均值为96.5%。说明该方法可为畜牧保险业务中的牛只身份精准识别提供新的解决方案。 展开更多
关键词 牛唇纹 身份识别 畜牧保险 YOLOv8 VGG19net 注意力机制
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LT-YOLO:A Lightweight Network for Detecting Tomato Leaf Diseases 被引量:1
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作者 Zhenyang He Mengjun Tong 《Computers, Materials & Continua》 2025年第3期4301-4317,共17页
Tomato plant diseases often first manifest on the leaves,making the detection of tomato leaf diseases particularly crucial for the tomato cultivation industry.However,conventional deep learning models face challenges ... Tomato plant diseases often first manifest on the leaves,making the detection of tomato leaf diseases particularly crucial for the tomato cultivation industry.However,conventional deep learning models face challenges such as large model sizes and slow detection speeds when deployed on resource-constrained platforms and agricultural machinery.This paper proposes a lightweight model for detecting tomato leaf diseases,named LT-YOLO,based on the YOLOv8n architecture.First,we enhance the C2f module into a RepViT Block(RVB)with decoupled token and channel mixers to reduce the cost of feature extraction.Next,we incorporate a novel Efficient Multi-Scale Attention(EMA)mechanism in the deeper layers of the backbone to improve detection of critical disease features.Additionally,we design a lightweight detection head,LT-Detect,using Partial Convolution(PConv)to significantly reduce the classification and localization costs during detection.Finally,we introduce a Receptive Field Block(RFB)in the shallow layers of the backbone to expand the model’s receptive field,enabling effective detection of diseases at various scales.The improved model reduces the number of parameters by 43%and the computational load by 50%.Additionally,it achieves a mean Average Precision(mAP)of 90.9%on a publicly available dataset containing 3641 images of tomato leaf diseases,with only a 0.7%decrease compared to the baseline model.This demonstrates that the model maintains excellent accuracy while being lightweight,making it suitable for rapid detection of tomato leaf diseases. 展开更多
关键词 YOLOv8n target detection LIGHTWEIGHT TOMATO attention mechanism
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基于改进FasterNet-YOLOv8的焊缝表面缺陷检测算法
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作者 李冠胜 阮景奎 +1 位作者 王宸 闫伟伟 《机电工程技术》 2026年第2期78-83,共6页
针对焊缝缺陷复杂背景干扰性强,检测精度和效率较低的问题,提出了一种改进的FasterNet-YOLOv8缺陷检测算法。在Backbone端更换FasterNet轻量级模型主干,捕获重要特征信息。将FasterNet-Block和卷积注意力融合模块(Convolution and Atten... 针对焊缝缺陷复杂背景干扰性强,检测精度和效率较低的问题,提出了一种改进的FasterNet-YOLOv8缺陷检测算法。在Backbone端更换FasterNet轻量级模型主干,捕获重要特征信息。将FasterNet-Block和卷积注意力融合模块(Convolution and Atten⁃tion Fusion Module,CAFM)开发到网络的特征提取模块中,设计了一种新颖的C2f-Faster-CAFM轻量级架构,减少网络的冗余通道的同时自适应捕捉全局关键信息。设计采用特征聚焦扩散金字塔网络(Feature Focused Diffusion Pyramid Network,FDPN)来增强多尺度信息融合提取能力,从而提高网络在多尺度场景中的鲁棒性和检测精度。实验结果表明,与原YOLOv8算法相比,Faster⁃Net-YOLOv8的精确率达到94.9%,召回率达到93.5%,平均检测精度提升至97.4%,提高了3.1%。 展开更多
关键词 缺陷检测 YOLOv8 Fasternet 注意力机制 特征聚焦扩散金字塔网络
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Encapsulating lipase on the surface of magnetic ZIF-8 nanosphers with mesoporous SiO_(2)nano-membrane for enhancing catalytic performance
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作者 Guang-Xu Duan Queting Chen +3 位作者 Rui-Rui Shao Hui-Huang Sun Tong Yuan Dong-Hao Zhang 《Chinese Chemical Letters》 2025年第2期251-255,共5页
The preparation of immobilized enzyme with excellent performance is one of the difficulties that restrict the application of enzyme catalysis technology.Here,Candida rugosa lipase(CRL)was firstly adsorbed on the surfa... The preparation of immobilized enzyme with excellent performance is one of the difficulties that restrict the application of enzyme catalysis technology.Here,Candida rugosa lipase(CRL)was firstly adsorbed on the surface of magnetic zeolitic imidazolate framework-8(ZIF-8)nanospheres,which was further encapsulated with a mesoporous SiO_(2)nano-membrane formed by tetraethyl orthosilicate(TEOS)polycondensation.Consequently,lipase could be firmly immobilized on carrier surface by physical binding rather than chemical binding,which did not damage the active conformation of enzyme.There were mesopores on the silica nano-membrane,which could improve the accessibility of enzyme and its apparent catalytic activity.Moreover,silica membrane encapsulation could also improve the stability of enzyme,suggesting an effective enzyme immobilization strategy.It showed that TEOS amount and the encapsulation time had significant effects on the thickness of silica membrane and the enzyme activity.The analysis in enzyme activity and protein secondary structure showed that lipase encapsulated in silica membrane retained the active conformation to the greatest extent.Compared with the adsorbed lipase,the encapsulated lipase increased its thermostability by 3 times and resistance to chemical denaturants by 7 times.The relative enzyme activity remained around 80%after 8 repetitions,while the adsorbed lipase only remained at7.3%. 展开更多
关键词 Enzyme immobilization ZIF-8 ENCAPSULATION Mesoporous silica membrane Lipase activity
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Dual-Stream Attention-Based Classification Network for Tibial Plateau Fractures via Diffusion Model Augmentation and Segmentation Map Integration
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作者 Yi Xie Zhi-wei Hao +8 位作者 Xin-meng Wang Hong-lin Wang Jia-ming Yang Hong Zhou Xu-dong Wang Jia-yao Zhang Hui-wen Yang Peng-ran Liu Zhe-wei Ye 《Current Medical Science》 2025年第1期57-69,共13页
Objective This study aimed to explore a novel method that integrates the segmentation guidance classification and the dif-fusion model augmentation to realize the automatic classification for tibial plateau fractures(... Objective This study aimed to explore a novel method that integrates the segmentation guidance classification and the dif-fusion model augmentation to realize the automatic classification for tibial plateau fractures(TPFs).Methods YOLOv8n-cls was used to construct a baseline model on the data of 3781 patients from the Orthopedic Trauma Center of Wuhan Union Hospital.Additionally,a segmentation-guided classification approach was proposed.To enhance the dataset,a diffusion model was further demonstrated for data augmentation.Results The novel method that integrated the segmentation-guided classification and diffusion model augmentation sig-nificantly improved the accuracy and robustness of fracture classification.The average accuracy of classification for TPFs rose from 0.844 to 0.896.The comprehensive performance of the dual-stream model was also significantly enhanced after many rounds of training,with both the macro-area under the curve(AUC)and the micro-AUC increasing from 0.94 to 0.97.By utilizing diffusion model augmentation and segmentation map integration,the model demonstrated superior efficacy in identifying SchatzkerⅠ,achieving an accuracy of 0.880.It yielded an accuracy of 0.898 for SchatzkerⅡandⅢand 0.913 for SchatzkerⅣ;for SchatzkerⅤandⅥ,the accuracy was 0.887;and for intercondylar ridge fracture,the accuracy was 0.923.Conclusion The dual-stream attention-based classification network,which has been verified by many experiments,exhibited great potential in predicting the classification of TPFs.This method facilitates automatic TPF assessment and may assist surgeons in the rapid formulation of surgical plans. 展开更多
关键词 Artificial intelligence YOLOv8 Tibial plateau fracture Diffusion model augmentation Segmentation map
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Lightweight YOLOM-Net for Automatic Identification and Real-Time Detection of Fatigue Driving
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作者 Shanmeng Zhao Yaxue Peng +2 位作者 Yaqing Wang Gang Li Mohammed Al-Mahbashi 《Computers, Materials & Continua》 2025年第3期4995-5017,共23页
In recent years,the country has spent significant workforce and material resources to prevent traffic accidents,particularly those caused by fatigued driving.The current studies mainly concentrate on driver physiologi... In recent years,the country has spent significant workforce and material resources to prevent traffic accidents,particularly those caused by fatigued driving.The current studies mainly concentrate on driver physiological signals,driving behavior,and vehicle information.However,most of the approaches are computationally intensive and inconvenient for real-time detection.Therefore,this paper designs a network that combines precision,speed and lightweight and proposes an algorithm for facial fatigue detection based on multi-feature fusion.Specifically,the face detection model takes YOLOv8(You Only Look Once version 8)as the basic framework,and replaces its backbone network with MobileNetv3.To focus on the significant regions in the image,CPCA(Channel Prior Convolution Attention)is adopted to enhance the network’s capacity for feature extraction.Meanwhile,the network training phase employs the Focal-EIOU(Focal and Efficient Intersection Over Union)loss function,which makes the network lightweight and increases the accuracy of target detection.Ultimately,the Dlib toolkit was employed to annotate 68 facial feature points.This study established an evaluation metric for facial fatigue and developed a novel fatigue detection algorithm to assess the driver’s condition.A series of comparative experiments were carried out on the self-built dataset.The suggested method’s mAP(mean Average Precision)values for object detection and fatigue detection are 96.71%and 95.75%,respectively,as well as the detection speed is 47 FPS(Frames Per Second).This method can balance the contradiction between computational complexity and model accuracy.Furthermore,it can be transplanted to NVIDIA Jetson Orin NX and quickly detect the driver’s state while maintaining a high degree of accuracy.It contributes to the development of automobile safety systems and reduces the occurrence of traffic accidents. 展开更多
关键词 Fatigue driving facial feature lightweight network Mobilenetv3-YOLOv8 dlib toolkit REAL-TIME
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Construction of a mental health literacy evaluation index system for adolescents with mental disorders
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作者 Ying-Qiong Ge Xiao-Shuang Ouyang +2 位作者 Zheng-Min Zhu Bi-Can Tan Xiao-Jian Jiang 《World Journal of Psychiatry》 2026年第1期299-311,共13页
BACKGROUND Timely and accurate evaluation of mental disorders in adolescents using appropriate mental health literacy assessment tools is essential for improving their mental health literacy levels.AIM To develop an e... BACKGROUND Timely and accurate evaluation of mental disorders in adolescents using appropriate mental health literacy assessment tools is essential for improving their mental health literacy levels.AIM To develop an evaluation index system for the mental health literacy of adolescent patients with mental disorders,providing a scientific,comprehensive,and reliable tool for the monitoring and intervention of mental health literacy of such patients.METHODS From December 2022 to June 2023,the evaluation index system for mental health literacy of adolescents with mental disorders was developed through literature reviews,semi-structured interviews,expert letter consultations,and the analytic hierarchy process.Based on this index system,a self-assessment questionnaire was compiled and administered to 305 adolescents with mental disorders to test the reliability and validity of the index system.RESULTS The final evaluation index system for mental health literacy of adolescents with mental disorders included 4 first-level indicators,10 second-level indicators,and 52 third-level indicators.The overall Cronbach’sαcoefficient of the index system was 0.957,with a partial reliability of 0.826 and a content validity index of 0.975.The cumulative variance contribution rate of 10 common factors was 66.491%.The correlation coefficients between each dimension and the total questionnaire ranged from 0.672 to 0.724,while the correlation coefficients in each dimension ranged from 0.389 to 0.705.CONCLUSION The evaluation index system for mental health literacy of adolescents with mental disorders,developed in this study,demonstrated notable reliability and validity,making it a valuable tool for evaluating mental health literacy in this population. 展开更多
关键词 Adolescents Mental disorders Mental health literacy Evaluation index system Delphi method
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面向印刷电路板缺陷检测的轻量化YOLOv8n-LSCNet目标检测模型
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作者 赖俊杰 曾猛杰 任洪亮 《华侨大学学报(自然科学版)》 2026年第1期61-67,共7页
针对印刷电路板表面缺陷检测中面板线路复杂、缺陷微小且检测精度与效率难以兼顾的问题,提出一种轻量化、高效的YOLOv8n-LSCNet目标检测模型。首先,在YOLOv8n模型基础上,引入C2f-OREPA模块,利用在线重参数化技术提升特征提取能力;其次,... 针对印刷电路板表面缺陷检测中面板线路复杂、缺陷微小且检测精度与效率难以兼顾的问题,提出一种轻量化、高效的YOLOv8n-LSCNet目标检测模型。首先,在YOLOv8n模型基础上,引入C2f-OREPA模块,利用在线重参数化技术提升特征提取能力;其次,设计一种轻量化检测头,通过共享卷积减少冗余计算;最后,采用扩展交并比(EIoU)损失函数优化边界框回归精度。使用北大印刷电路板(PCB)数据集进行训练与测试,通过消融实验与对比实验验证各模块的有效性。结果表明:相比YOLOv8n模型,YOLOv8n-LSCNet模型的精确率与均值平均精度(交并比阈值≥0.50)分别提升了0.94%和0.47%,参数量与浮点计算量分别降低了21.4%和19.7%;该模型在精度与效率之间取得了良好平衡,具备较强的工程应用潜力。 展开更多
关键词 印刷电路板(PCB)缺陷检测 轻量化检测 YOLOv8n 小目标检测 损失函数
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AlodgeNet:一种基于无人机RGB图像的紫花苜蓿倒伏识别方法
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作者 葛永琪 唐道统 +2 位作者 刘瑞 朱子欣 李昂 《江苏农业学报》 北大核心 2026年第1期90-98,共9页
针对复杂大田场景中紫花苜蓿倒伏区域边界模糊、形状不规则及小范围倒伏难以准确识别的问题,本研究提出一种基于无人机RGB(R、G、B分别表示红、绿、蓝)图像的紫花苜蓿倒伏识别方法——AlodgeNet模型。为提升模型对不规则形状与小面积倒... 针对复杂大田场景中紫花苜蓿倒伏区域边界模糊、形状不规则及小范围倒伏难以准确识别的问题,本研究提出一种基于无人机RGB(R、G、B分别表示红、绿、蓝)图像的紫花苜蓿倒伏识别方法——AlodgeNet模型。为提升模型对不规则形状与小面积倒伏特征的捕捉能力,并增强空间层次结构学习,在YOLO v8x-seg网络中引入大型可分离卷积核注意力(LSKA)机制和空间深度转化卷积(SPD-Conv),以替换原网络中的部分卷积层。同时在宁夏引黄灌区,通过无人机采集了不同飞行高度(5.0 m、7.5 m、10.0 m)与生育期的紫花苜蓿倒伏RGB图像,并以此构建数据集对模型进行训练。试验结果表明,AlodgeNet模型对飞行高度10.0 m采集图像中紫花苜蓿倒伏区域的识别效果最好,且其对初花期采集图像中紫花苜蓿倒伏区域的识别性能高于分枝期。AlodgeNet模型精确率、召回率、交并比(IoU)阈值为0.50时的平均精度均值(mAP 50)和交并比(IoU)阈值从0.50到0.95(步长0.05)的平均精度均值(mAP 50∶95)分别达到84.9%、79.2%、83.8%和56.7%,整体性能优于YOLO v5x-seg模型、YOLO v10x-seg模型、YOLO v11x-seg模型、YOLO v8x-seg模型、RT-DETR模型和MASK-RCNN模型。相较于原始模型YOLO v8x-seg,AlodgeNet模型mAP 50和mAP 50∶95分别提升5.8个百分点和7.3个百分点。本研究结果为复杂大田环境下紫花苜蓿倒伏的快速识别与面积估算提供了一种高效、便捷的监测手段,有助于实现精准农业中的倒伏灾情评估与管理决策支持。 展开更多
关键词 深度学习 YOLO v8x-seg算法 紫花苜蓿倒伏 飞行高度
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Protocol for a global electronic Delphi on integrating artificial intelligence into solid organ transplantation
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作者 Rowan Abuyadek Sara A Ghitani +6 位作者 Ramy Shaaban Muhammad AbdelAziz Quoritem Mohammed S Foula Rodaina Osama Abdel Majid Manar Mokhtar Yasir Ahmed Mohammed Elhadi Amr Alnagar 《World Journal of Transplantation》 2026年第1期9-16,共8页
Artificial intelligence(AI)is increasingly recognized as a transformative force in the field of solid organ transplantation.From enhancing donor-recipient matching to predicting clinical risks and tailoring immunosupp... Artificial intelligence(AI)is increasingly recognized as a transformative force in the field of solid organ transplantation.From enhancing donor-recipient matching to predicting clinical risks and tailoring immunosuppressive therapy,AI has the potential to improve both operational efficiency and patient outcomes.Despite these advancements,the perspectives of transplant professionals-those at the forefront of critical decision-making-remain insufficiently explored.To address this gap,this study utilizes a multi-round electronic Delphi approach to gather and analyses insights from global experts involved in organ transplantation.Participants are invited to complete structured surveys capturing demographic data,professional roles,institutional practices,and prior exposure to AI technologies.The survey also explores perceptions of AI’s potential benefits.Quantitative responses are analyzed using descriptive statistics,while open-ended qualitative responses undergo thematic analysis.Preliminary findings indicate a generally positive outlook on AI’s role in enhancing transplantation processes,particularly in areas such as donor matching and post-operative care.These mixed views reflect both optimism and caution among professionals tasked with integrating new technologies into high-stakes clinical workflows.By capturing a wide range of expert opinions,the findings will inform future policy development,regulatory considerations,and institutional readiness frameworks for the integration of AI into organ transplantation. 展开更多
关键词 Artificial intelligence Solid organ transplantation Electronic Delphi Expert consensus Donor matching Digital health
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Co_(9)S_(8)/Co@coral-like carbon nanofibers/porous carbon hybrids with magnetic-dielectric synergy for superior microwave absorption
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作者 Haotian Jiang Chengjuan Wang +7 位作者 Cuicui Chen Xiaodan Xu Shichao Dai Bohan Ding Jinghe Guo Yue Sun Yanxiang Wang Chengguo Wang 《Journal of Materials Science & Technology》 2025年第8期179-190,共12页
Carbon-based electromagnetic wave(EMW)absorbing materials attached with metal sulfides famous for good dielectric properties are favored by researchers,which can form heterogeneous interfaces and thus provide suppleme... Carbon-based electromagnetic wave(EMW)absorbing materials attached with metal sulfides famous for good dielectric properties are favored by researchers,which can form heterogeneous interfaces and thus provide supplementary loss mechanisms to make up for the deficiencies of a single material in energy attenuation.Here,Co_(9)S_(8)/Co@coral-like carbon nanofibers(CNFs)/porous carbon hybrids are successfully fabricated by hydrothermal and chemical vapor deposition.The samples have exceptional EMW absorb-ing properties,with a minimum reflection loss of-57.48 dB at a thickness of 2.94 mm and an effective absorption bandwidth of up to 6.10 GHz at only 2.20 mm.The interlocking structure formed by Co@coral-like CNFs,interfacial polarization generated by heterostructure of Co_(9)S_(8),abundant defects and large specific surface area resulted from porous properties are important factors in attaining magnetic-dielectric balance and excellent absorption performance.Different matrixes are selected instead of paraffin to investigate the effect of matrix materials on EMW absorbing capacity.Besides,the EMW attenuation potential for practical applications is also demonstrated by radar cross-section simulations,electric field intensity distribution and power loss density.This work provides a novel strategy for designing outstanding EMW absorbers with unique microstructures using facile and low-cost synthetic routes. 展开更多
关键词 Coral-like carbon nanofibers Biomass porous carbon Electromagnetic wave absorption Co_(9)S_(8) Magnetic-dielectric synergy
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基于YOLOv8与改进ResNet50的电子元器件检测与分类
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作者 郭文琪 杨国威 +1 位作者 黄璐瑶 王飞 《天津科技大学学报》 2026年第1期61-68,共8页
电子元器件种类繁多且没有一致的细粒度分类标准,为快速满足元器件在不同粒度下的分类需求,提出一种基于深度学习的YOLOR-ECA(YOLOv8 and ResNet50 with efficient channel attention)电子元器件检测算法。首先采用YOLOv8网络定位元器... 电子元器件种类繁多且没有一致的细粒度分类标准,为快速满足元器件在不同粒度下的分类需求,提出一种基于深度学习的YOLOR-ECA(YOLOv8 and ResNet50 with efficient channel attention)电子元器件检测算法。首先采用YOLOv8网络定位元器件位置,然后采用ResNet50网络对定位获取的元器件进行识别分类,通过元器件种类的增减满足不同细粒度的分类标准。为提升模型对尺寸小、特征相似元器件的细节特征提取能力,分类网络引入ECA注意力机制,并对残差结构的捷径连接部分进行改进;为避免神经元失活,采用GELU(Gaussian Error Linear Units)激活函数。实验结果表明,改进的YOLOR-ECA模型的检测准确率为96.6%,并且对于小尺寸元器件的识别精度最高可达100%,对于具有特征相似性元器件的误检率最低可降到0.01%,能实现电子元器件在不同细粒度分类标准下的高效检测。 展开更多
关键词 深度学习 电子元器件 YOLOv8 Resnet50
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An Efficient and Dynamic Framework for Multi-Scale Target Detection of Underwater Organisms
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作者 LI Zhuang LI Guixiang +1 位作者 SONG Xiangyang WANG Xinhua 《Journal of Ocean University of China》 2026年第1期150-160,共11页
The continuous decrease in global fishery resources has increased the importance of precise and efficient underwater fish monitoring technology.First,this study proposes an improved underwater target detection framewo... The continuous decrease in global fishery resources has increased the importance of precise and efficient underwater fish monitoring technology.First,this study proposes an improved underwater target detection framework based on YOLOv8,with the aim of enhancing detection accuracy and the ability to recognize multi-scale targets in blurry and complex underwater environments.A streamlined Vision Transformer(ViT)model is used as the feature extraction backbone,which retains global self-attention feature extraction and accelerates training efficiency.In addition,a detection head named Dynamic Head(DyHead)is introduced,which enhances the efficiency of processing various target sizes through multi-scale feature fusion and adaptive attention modules.Furthermore,a dynamic loss function adjustment method called SlideLoss is employed.This method utilizes sliding window technology to adaptively adjust parameters,which optimizes the detection of challenging targets.The experimental results on the RUOD dataset show that the proposed improved model not only significantly enhances the accuracy of target detection but also increases the efficiency of target detection. 展开更多
关键词 underwater target detection complex underwater environment YOLOv8 object detection
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ZIF-8 confined carbon dots/bilirubin oxidase on microalgal cells to boost oxygen reduction reaction in photo-biocatalytic fuel cells for pollutants removal
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作者 Sili Qing Xuanzhao Lu +8 位作者 Yujing Jiang Charitha Thambiliyagodage Bing Song Ao Xia Jian-Rong Zhang Wenlei Zhu Li-Ping Jiang Xiaoge Wu Jun-Jie Zhu 《Chinese Chemical Letters》 2026年第1期702-708,共7页
Photocatalytic fuel cells provide promising opportunities for sustainable wastewater treatment and energy conversion.However,their applications are challenged by the sluggish oxygen reducton reaction(ORR)kinetics at c... Photocatalytic fuel cells provide promising opportunities for sustainable wastewater treatment and energy conversion.However,their applications are challenged by the sluggish oxygen reducton reaction(ORR)kinetics at cathodes owning to the low O_(2) solubility and diffusion rate.Herein,we proposed a photobiocatalytic fuel cell(PBFC) with a novel hybrid biocathode based on artificially engineered algal cells coated by ZIF-8 confined carbon dots/bilirubin oxidase(ZIF-8/CDs/BOD@algae).Microalgae absorbed CO_(2) and provided O_(2) in situ for BOD catalysts.Due to effective absorption of O_(2) by imidazole and confinement of hydrophobic porous ZIF-8,oxygen diffusion has been accelerated in MOF/enzyme systems.Importantly,the introduction of CDs alleviated the poor conductivity of ZIF-8 and improved the electron transfer rate of BOD.Thus,the biocathode exhibited a high current density of 1767 μA/cm^(2),a 2.26-fold increase compared with that of CDs/BOD/algae biocathode.Also,it displayed enduring operational stability for up to 60 h since the firmly wrapped ZIF-8 shells could encapsulate proteins and protect algae from the external stimulation.When coupled with Mo:BiVO_(4) photoanodes,the PBFC exhibited a remarkable power output of 131.8 μW/cm^(2) using tetracycline hydrochloride(TCH) as a fuel and an increased degradation rate of TCH.Therefore,this work not only establishs an effective confinement strategy for enzyme to enrich oxygen,but also unveils new possibilities for modified microalgal cells aiding photoelectrocatalytic systems to recover energy from wastewater treatment. 展开更多
关键词 Microalgal cells ZIF-8 Carbon dots ORR Photo-biocatalytic fuel cell Degradation
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Visual Detection Algorithms for Counter-UAV in Low-Altitude Air Defense
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作者 Minghui Li Hongbo Li +1 位作者 Jiaqi Zhu Xupeng Zhang 《Computers, Materials & Continua》 2026年第3期823-844,共22页
To address the challenge of real-time detection of unauthorized drone intrusions in complex low-altitude urban environments such as parks and airports,this paper proposes an enhanced MBS-YOLO(Multi-Branch Small Target... To address the challenge of real-time detection of unauthorized drone intrusions in complex low-altitude urban environments such as parks and airports,this paper proposes an enhanced MBS-YOLO(Multi-Branch Small Target Detection YOLO)model for anti-drone object detection,based on the YOLOv8 architecture.To overcome the limitations of existing methods in detecting small objects within complex backgrounds,we designed a C2f-Pu module with excellent feature extraction capability and a more compact parameter set,aiming to reduce the model’s computational complexity.To improve multi-scale feature fusion,we construct a Multi-Branch Feature Pyramid Network(MB-FPN)that employs a cross-level feature fusion strategy to enhance the model’s representation of small objects.Additionally,a shared detail-enhanced detection head is introduced to address the large size variations of Unmanned Aerial Vehicle(UAV)targets,thereby improving detection performance across different scales.Experimental results demonstrate that the proposed model achieves consistent improvements across multiple benchmarks.On the Det-Fly dataset,it improves precision by 3%,recall by 5.6%,and mAP50 by 4.5%compared with the baseline,while reducing parameters by 21.2%.Cross-validation on the VisDrone dataset further validates its robustness,yielding additional gains of 3.2%in precision,6.1%in recall,and 4.8%in mAP50 over the original YOLOv8.These findings confirm the effectiveness of the proposed algorithm in enhancing UAV detection performance under complex scenarios. 展开更多
关键词 Small target detection anti-drone yolov8 shared convolution feature fusion network
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YOLO-DS:a detection model for desert shrub identification and coverage estimation in UAV remote sensing
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作者 Weifan Xu Huifang Zhang +6 位作者 Yan Zhang Kangshuo Liu Jinglu Zhang Yali Zhu Baoerhan Dilixiati Jifeng Ning Jian Gao 《Journal of Forestry Research》 2026年第1期242-255,共14页
Desert shrubs are indispensable in maintaining ecological stability by reducing soil erosion,enhancing water retention,and boosting soil fertility,which are critical factors in mitigating desertification processes.Due... Desert shrubs are indispensable in maintaining ecological stability by reducing soil erosion,enhancing water retention,and boosting soil fertility,which are critical factors in mitigating desertification processes.Due to the complex topography,variable climate,and challenges in field surveys in desert regions,this paper proposes YOLO-Desert-Shrub(YOLO-DS),a detection method for identifying desert shrubs in UAV remote sensing images based on an enhanced YOLOv8n framework.This method accurately identifying shrub species,locations,and coverage.To address the issue of small individual plants dominating the dataset,the SPDconv convolution module is introduced in the Backbone and Neck layers of the YOLOv8n model,replacing conventional convolutions.This structural optimization mitigates information degradation in fine-grained data while strengthening discriminative feature capture across spatial scales within desert shrub datasets.Furthermore,a structured state-space model is integrated into the main network,and the MambaLayer is designed to dynamically extract and refine shrub-specific features from remote sensing images,effectively filtering out background noise and irrelevant interference to enhance feature representation.Benchmark evaluations reveal the YOLO-DS framework attains 79.56%mAP40weight,demonstrating 2.2%absolute gain versus the baseline YOLOv8n architecture,with statistically significant advantages over contemporary detectors in cross-validation trials.The predicted plant coverage exhibits strong consistency with manually measured coverage,with a coefficient of determination(R^(2))of 0.9148 and a Root Mean Square Error(RMSE)of1.8266%.The proposed UAV-based remote sensing method utilizing the YOLO-DS effectively identify and locate desert shrubs,monitor canopy sizes and distribution,and provide technical support for automated desert shrub monitoring. 展开更多
关键词 Desert shrubs Deep learning Object detection UAV remote sensing YOLOv8 Mamba
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CD44-targeting and ZIF-8 gated gold nanocage for programmed breast cancer therapy through Pt-induced immunogenic cell death
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作者 Xin Li Fei Xiong +7 位作者 Xudong Cao Wei Liu Haobo Chen Jiayu He Weina Zhang Longguang Tang Wei Huang Xikuang Yao 《Chinese Chemical Letters》 2026年第1期462-467,共6页
The field of nanomedicine has been revolutionized by the concept of immunogenic cell death(ICD)-enhanced cancer therapy,which holds immense promise for the efficient treatment of cancer.However,precise delivery of ICD... The field of nanomedicine has been revolutionized by the concept of immunogenic cell death(ICD)-enhanced cancer therapy,which holds immense promise for the efficient treatment of cancer.However,precise delivery of ICD inducer is severely hindered by complex biological barriers.How to design and build intelligent nanoplatform for adaptive and dynamic cancer therapy remains a big challenge.Herein,this article presents the design and preparation of CD44-targeting and ZIF-8 gated gold nanocage(Au@ZH) for programmed delivery of the 1,2-diaminocyclohexane-Pt(Ⅱ)(DACHPt) as ICD inducer.After actively targeting the CD44 on the surface of 4T1 tumor cell,this Pt-Au@ZH can be effectively endocytosed by the 4T1 cell and release the DACHPt in tumor acidic environment,resulting in ICD effect and superior antitumor efficacy both in vitro and in vivo in the presence of mild 808 nm laser irradiation.By integration of internal and external stimuli intelligently,this programmed nanoplatform is poised to become a cornerstone in the pursuit of effective and targeted cancer therapy in the foreseeable future. 展开更多
关键词 Programmed drug release ZIF-8-gated Gold nanocage Immunogenic cell death Cancer therapy
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ZIF-8 composited with carbon nanotubes via controllable in situ growth on magnesium anodes for improved electrochemical performance of magnesium batteries
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作者 Wenzi Huang Bowen Lin +4 位作者 Yanbinhui Zhang Jinyu Liu Wei Shang Jiqiong Jiang Yuqing Wen 《International Journal of Minerals,Metallurgy and Materials》 2026年第2期669-682,共14页
Magnesium-based anode materials have attracted significant attention in the energy storage domain because of their high theoretical capacities and low electrochemical potentials.However,in conventional electrolyte sys... Magnesium-based anode materials have attracted significant attention in the energy storage domain because of their high theoretical capacities and low electrochemical potentials.However,in conventional electrolyte systems,magnesium metal electrodes dynamically generate an ion-blocking surface layer,resulting in prominent voltage polarization,which severely limits their practical applications.In this study,ZIF-8/carbon nanotubes(CNTs)coatings were used to modify the anodes of magnesium batteries.Compared with the unaltered magnesium battery,the voltage lag time of the ZIF-8/CNTs coating was shortened from 4 s before modification to 0.26 s,and the battery impedance was lowered by two orders of magnitude.The duration of the discharge platform was increased from 4 h before modification to 6-10 h,the anode utilization rate was more than doubled,and the specific energy density was significantly enhanced compared with the battery before modification.The mechanism indicates that the ZIF-8/CNTs coating can limit the infiltration of corrosive substances,extend their transmission path,and offer more effective protection to the magnesium anode.The incorporation of CNTs improves the conductivity of the battery,and it significantly improves the electrochemical performance of the magnesium battery. 展开更多
关键词 aqueous magnesium battery ZIF-8/carbon nanotubes coating surface modification electrochemical performance
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