期刊文献+
共找到36,832篇文章
< 1 2 250 >
每页显示 20 50 100
Retraced Multi-dimensional Chinese Logic System behind Chinese Medicine
1
作者 Edwin C.L.Yu 《Chinese Medicine and Culture》 2025年第1期1-12,共12页
The ancient tacit knowledge behind the logic system permeated the culture and promoted numerous impactful inventions throughout the history. Traditional Chinese medicine with its effectiveness should also have stemmed... The ancient tacit knowledge behind the logic system permeated the culture and promoted numerous impactful inventions throughout the history. Traditional Chinese medicine with its effectiveness should also have stemmed out from such logic system. This article aims to rearticulate the underlying lucid multi-dimensional logic system, which faded in obscurity only because of time-out loss of the mid-right concept. Retracing this past tacit but important concept could uncover a multi-dimensional system over a point relating to all matters while capturing the central core of the matter. The seemingly unmanageable multidimensional logic was strengthened by verification processes which affirmed its further extensions, and made up the language of the people, the concepts of yin-yang(阴阳), and the development of extensions of Ba Gua(八卦) derivatives, which furthered the interpretation of the space-time properties and Chinese medicine. 展开更多
关键词 multi-dimensional logic system Traditional Chinese medicine YIN-YANG
暂未订购
Effective stress dissipation by multi-dimensional architecture engineering for ultrafast and ultralong sodium storage
2
作者 Man Zhang Jing Zhu +7 位作者 Qianqian Li Fenghua Zheng Sijiang Hu Youguo Huang Hongqiang Wang Xing Ou Qichang Pan Qingyu Li 《Journal of Energy Chemistry》 2025年第2期619-629,I0013,共12页
Stress accumulation is a key factor leading to sodium storage performance deterioration for NiSe_(2)-based anodes.Therefore,inhibiting the concentrated local stress during the sodiataion/desodiation process is crucial... Stress accumulation is a key factor leading to sodium storage performance deterioration for NiSe_(2)-based anodes.Therefore,inhibiting the concentrated local stress during the sodiataion/desodiation process is crucial for acquiring stable NiSe2-based materials for sodium-ion batteries(SIBs),Herein,a stress dissipation strategy driven by architecture engineering is proposed,which can achieve ultrafast and ultralong sodium storage properties.Different from the conventional sphere-like or rod-like architecture,the three-dimensional(3D)flower-like NiSe_(2)@C composite is delicately designed and assembled with onedimensional nanorods and carbon framework.More importantly,the fundamental mechanism of improved structure stability is unveiled by simulations and experimental results simultaneously.It demonstrates that this designed multidimensional flower-like architecture with dispersed nanorods can balance the structural mismatch,avoid concentrated local strain,and relax the internal stress,mainly induced by the unavoidable volume variation during the repeated conversion processes.Moreover,it can provide more Na^(+)-storage sites and multi-directional migration pathways,leading to a fast Na^(+)-migration channel with boosted reaction kinetic.As expected,it delivers superior rate performance(441 mA h g^(-1)at 5.0 A g^(-1))and long cycling stability(563 mA h g^(-1)at 1.0 A g^(-1)over 1000 cycles)for SIBs.This work provides useful insights for designing high-performance conversion-based anode materials for SIBs. 展开更多
关键词 Stress dissipation multi-dimensional architecture Structure engineering Conversion-based anodes Sodium-ion batteries
在线阅读 下载PDF
Research on Multi-Dimensional Collaborative Strategies in Design Management,Investment Management,and Beyond from the Perspective of Whole-Process Engineering Consulting
3
作者 Zexin Chen 《Journal of Architectural Research and Development》 2025年第5期21-28,共8页
This paper explores whole-process engineering consulting,including its application models in public buildings and elderly-friendly projects,such as service integration and whole lifecycle management.It also addresses ... This paper explores whole-process engineering consulting,including its application models in public buildings and elderly-friendly projects,such as service integration and whole lifecycle management.It also addresses the construction of multi-dimensional collaborative theoretical models,public space streamline organization,and other aspects,emphasizing the importance of multi-dimensional collaboration.Additionally,it highlights the role of talent cultivation and digital transformation in enhancing project efficiency. 展开更多
关键词 Whole-process engineering consulting multi-dimensional collaboration Project efficiency
在线阅读 下载PDF
Practical Application of the Multi-Dimensional Interactive Teaching Model in College English
4
作者 Bo Sun 《Journal of Contemporary Educational Research》 2025年第10期106-111,共6页
The multi-dimensional interactive teaching model significantly enhances the effectiveness of college English instruction by emphasizing dynamic engagement between teachers and students,as well as among students themse... The multi-dimensional interactive teaching model significantly enhances the effectiveness of college English instruction by emphasizing dynamic engagement between teachers and students,as well as among students themselves.This paper explores practical strategies for implementing this model,focusing on four key aspects:deepening teachers’understanding of the model through continuous learning,innovating interactive methods such as questioning techniques and practical activities,leveraging modern technology to integrate resources and track learning progress,and establishing a communication platform that centers on student participation.By adopting these approaches,the model fosters a student-centered classroom environment,improves comprehensive English application skills,and optimizes overall teaching quality. 展开更多
关键词 multi-dimensional interactive teaching model Student-centered approach Teacher-student interaction
在线阅读 下载PDF
Composite anti-disturbance predictive control of unmanned systems with time-delay using multi-dimensional Taylor network
5
作者 Chenlong LI Wenshuo LI Zejun ZHANG 《Chinese Journal of Aeronautics》 2025年第7期589-600,共12页
A composite anti-disturbance predictive control strategy employing a Multi-dimensional Taylor Network(MTN)is presented for unmanned systems subject to time-delay and multi-source disturbances.First,the multi-source di... A composite anti-disturbance predictive control strategy employing a Multi-dimensional Taylor Network(MTN)is presented for unmanned systems subject to time-delay and multi-source disturbances.First,the multi-source disturbances are addressed according to their specific characteristics as follows:(A)an MTN data-driven model,which is used for uncertainty description,is designed accompanied with the mechanism model to represent the unmanned systems;(B)an adaptive MTN filter is used to remove the influence of the internal disturbance;(C)an MTN disturbance observer is constructed to estimate and compensate for the influence of the external disturbance;(D)the Extended Kalman Filter(EKF)algorithm is utilized as the learning mechanism for MTNs.Second,to address the time-delay effect,a recursiveτstep-ahead MTN predictive model is designed utilizing recursive technology,aiming to mitigate the impact of time-delay,and the EKF algorithm is employed as its learning mechanism.Then,the MTN predictive control law is designed based on the quadratic performance index.By implementing the proposed composite controller to unmanned systems,simultaneous feedforward compensation and feedback suppression to the multi-source disturbances are conducted.Finally,the convergence of the MTN and the stability of the closed-loop system are established utilizing the Lyapunov theorem.Two exemplary applications of unmanned systems involving unmanned vehicle and rigid spacecraft are presented to validate the effectiveness of the proposed approach. 展开更多
关键词 multi-dimensional Taylor network Composite anti-disturbance Predictive control Unmanned systems Multi-source disturbances TIME-DELAY
原文传递
Construction of the Practice System of Landscape Architecture Major Based on“Multi-dimensional Integration”
6
作者 LI Yinan DING Juan +4 位作者 ZHU Yan WU Jing ZHAO Zhiyan LI Jie XIANG Cheng 《Journal of Landscape Research》 2025年第3期89-92,共4页
During the critical transformation period of landscape architecture major after the adjustment of disciplinary structure and the changes in market demand,private colleges and universities,as important places for culti... During the critical transformation period of landscape architecture major after the adjustment of disciplinary structure and the changes in market demand,private colleges and universities,as important places for cultivating local talents,have pain points such as uneven quality of teachers and students and weak innovation and practice.The practice system with“multi-dimensional Integration”integrates four dimensions:interdisciplinary integration,spatial and temporal intersection,historical inheritance,and behavioral activity,deepens the disciplinary connotation,and integrates the three elements of nature,humanity,and technology,aiming to provide a new path for private colleges and universities to cultivate application-oriented and compound talents with innovative capabilities.In terms of optimizing talent cultivation and adapting to industry changes,this system provides thinking and reference for landscape architecture major,helping the major reshape its core competitiveness and promoting educational innovation and industry development. 展开更多
关键词 Landscape architecture Practice system multi-dimensional integration”model Talent cultivation Teaching reform
在线阅读 下载PDF
Reliability of multi-dimensional network systems with nodes having stochastic connection ranges
7
作者 FU Yuqiang MA Xiaoyang ZHAO Fei 《Journal of Systems Engineering and Electronics》 2025年第4期1017-1023,共7页
This paper proposes a reliability evaluation model for a multi-dimensional network system,which has potential to be applied to the internet of things or other practical networks.A multi-dimensional network system with... This paper proposes a reliability evaluation model for a multi-dimensional network system,which has potential to be applied to the internet of things or other practical networks.A multi-dimensional network system with one source element and multiple sink elements is considered first.Each element can con-nect with other elements within a stochastic connection ranges.The system is regarded as successful as long as the source ele-ment remains connected with all sink elements.An importance measure is proposed to evaluate the performance of non-source elements.Furthermore,to calculate the system reliability and the element importance measure,a multi-valued decision diagram based approach is structured and its complexity is analyzed.Finally,a numerical example about the signal transfer station system is illustrated to analyze the system reliability and the ele-ment importance measure. 展开更多
关键词 multi-dimensional network multi-valued decision diagram stochastic connection range reliability analysis impor-tance measure.
在线阅读 下载PDF
Multi-dimensional hydrogen bonds regulated emissions of single-molecule system enabling surficial hydrophobicity/hydrophilicity mapping
8
作者 Hao Gu Rui Li +6 位作者 Qiuying Li Sheng Lu Yahui Chen Xiaoning Yang Huili Ma Zhijun Xu Xiaoqiang Chen 《Chinese Chemical Letters》 2025年第5期515-520,共6页
Constructing multi-dimensional hydrogen bond(H-bond)regulated single-molecule systems with multiemission remains a challenge.Herein,we report the design of a new excited-state intramolecular proton transfer(ESIPT)feat... Constructing multi-dimensional hydrogen bond(H-bond)regulated single-molecule systems with multiemission remains a challenge.Herein,we report the design of a new excited-state intramolecular proton transfer(ESIPT)featured chromophore(HBT-DPI)that shows flexible emission tunability via the multidimensional regulation of intra-and intermolecular H-bonds.The feature of switchable intramolecular Hbonds is induced via incorporating several hydrogen bond acceptors and donors into one single HBT-DPI molecule,allowing the“turn on/off”of ESIPT process by forming isomers with distinct intramolecular Hbonds configurations.In response to different external H-bonding environments,the obtained four types of crystal/cocrystals vary in the contents of isomers and the molecular packing modes,which are mainly guided by the intermolecular H-bonds,exhibiting non-emissive features or emissions ranging from green to orange.Utilizing the feature of intermolecular H-bond guided molecular packing,we demonstrate the utility of this fluorescent material for visualizing hydrophobic/hydrophilic areas on large-scale heterogeneous surfaces of modified poly(1,1-difluoroethylene)(PVDF)membranes and quantitatively estimating the surface hydrophobicity,providing a new approach for hydrophobicity/hydrophilicity monitoring and measurement.Overall,this study represents a new design strategy for constructing multi-dimensional hydrogen bond regulated ESIPT-based fluorescent materials that enable multiple emissions and unique applications. 展开更多
关键词 multi-dimensional hydrogen bonds Emission regulation Hydrophobicity/hydrophilicity Surficial mapping Excited-state intramolecular proton transfer
原文传递
基于改进Vision Transformer的水稻叶片病害图像识别
9
作者 朱周华 周怡纳 +1 位作者 侯智杰 田成源 《电子测量技术》 北大核心 2025年第10期153-160,共8页
水稻叶片病害智能识别在现代农业生产中具有重要意义。针对传统Vision Transformer网络缺乏归纳偏置,难以有效捕捉图像局部细节特征的问题,提出了一种改进的Vision Transformer模型。该模型通过引入内在归纳偏置,增强了对多尺度上下文... 水稻叶片病害智能识别在现代农业生产中具有重要意义。针对传统Vision Transformer网络缺乏归纳偏置,难以有效捕捉图像局部细节特征的问题,提出了一种改进的Vision Transformer模型。该模型通过引入内在归纳偏置,增强了对多尺度上下文以及局部与全局依赖关系的建模能力,同时降低了对大规模数据集的需求。此外,Vision Transformer中的多层感知器模块被Kolmogorov-Arnold网络结构取代,从而提升了模型对复杂特征的提取能力和可解释性。实验结果表明,所提模型在水稻叶片病害识别任务中取得了优异的性能,识别准确率达到了98.62%,较原始ViT模型提升了6.2%,显著提高了对水稻叶片病害的识别性能。 展开更多
关键词 水稻叶片病害 图像识别 vision Transformer网络 归纳偏置 局部特征
原文传递
Vision Transformer模型在中医舌诊图像分类中的应用研究
10
作者 周坚和 王彩雄 +3 位作者 李炜 周晓玲 张丹璇 吴玉峰 《广西科技大学学报》 2025年第5期89-98,共10页
舌诊作为中医望诊中的一项重要且常规的检查手段,在中医临床诊断中发挥着不可或缺的作用。为突破传统舌诊依赖主观经验及卷积神经网络(convolutional neural network,CNN)模型分类性能不足的局限,本文基于高质量舌象分类数据集,提出基于... 舌诊作为中医望诊中的一项重要且常规的检查手段,在中医临床诊断中发挥着不可或缺的作用。为突破传统舌诊依赖主观经验及卷积神经网络(convolutional neural network,CNN)模型分类性能不足的局限,本文基于高质量舌象分类数据集,提出基于Vision Transformer(ViT)深度学习模型,通过预训练与微调策略优化特征提取能力,并结合数据增强技术解决类别分布不平衡问题。实验结果表明,该模型在6项关键舌象特征分类任务中,5项指标的准确率(苔色85.6%、瘀斑98.0%、质地99.6%、舌色96.6%、裂纹87.8%)显著优于现有CNN方法(如ResNet50对应准确率分别为78.0%、91.0%、92.0%、68.0%、80.1%),验证了该模型在突破传统性能瓶颈、提升中医临床智能诊断可靠性方面的有效性和应用潜力。 展开更多
关键词 舌诊 vision Transformer(ViT) 深度学习 医学图像分类
在线阅读 下载PDF
Vision Transformer深度学习模型在前列腺癌识别中的价值
11
作者 李梦娟 金龙 +2 位作者 尹胜男 计一丁 丁宁 《中国医学计算机成像杂志》 北大核心 2025年第3期396-401,共6页
目的:旨在探讨Vision Transformer(ViT)深度学习模型在前列腺癌(PCa)识别中的应用价值.方法:回顾性分析了480例接受磁共振成像(MRI)检查的患者影像资料.采用TotalSegmentator模型自动分割前列腺区域,通过ViT深度学习方法分别构建基于T2... 目的:旨在探讨Vision Transformer(ViT)深度学习模型在前列腺癌(PCa)识别中的应用价值.方法:回顾性分析了480例接受磁共振成像(MRI)检查的患者影像资料.采用TotalSegmentator模型自动分割前列腺区域,通过ViT深度学习方法分别构建基于T2加权像(T2WI)、基于表观弥散系数(ADC)图和基于两者结合的三个ViT模型.结果:在PCa的识别能力上,结合模型在训练组和测试组上的受试者工作特征(ROC)曲线下面积(AUC)分别为0.961和0.980,优于仅基于单一成像序列构建的ViT模型.在基于单一序列构建的ViT模型中,基于ADC图的模型相较于基于T2WI的模型表现更佳.此外,决策曲线分析显示结合模型提供了更大的临床效益.结论:ViT深度学习模型在前列腺癌识别中具有较高的诊断准确性和潜在价值. 展开更多
关键词 vision Transformer 深度学习 前列腺癌 自动分割 磁共振成像
暂未订购
A Hybrid Approach for Pavement Crack Detection Using Mask R-CNN and Vision Transformer Model 被引量:2
12
作者 Shorouq Alshawabkeh Li Wu +2 位作者 Daojun Dong Yao Cheng Liping Li 《Computers, Materials & Continua》 SCIE EI 2025年第1期561-577,共17页
Detecting pavement cracks is critical for road safety and infrastructure management.Traditional methods,relying on manual inspection and basic image processing,are time-consuming and prone to errors.Recent deep-learni... Detecting pavement cracks is critical for road safety and infrastructure management.Traditional methods,relying on manual inspection and basic image processing,are time-consuming and prone to errors.Recent deep-learning(DL)methods automate crack detection,but many still struggle with variable crack patterns and environmental conditions.This study aims to address these limitations by introducing the Masker Transformer,a novel hybrid deep learning model that integrates the precise localization capabilities of Mask Region-based Convolutional Neural Network(Mask R-CNN)with the global contextual awareness of Vision Transformer(ViT).The research focuses on leveraging the strengths of both architectures to enhance segmentation accuracy and adaptability across different pavement conditions.We evaluated the performance of theMaskerTransformer against other state-of-theartmodels such asU-Net,TransformerU-Net(TransUNet),U-NetTransformer(UNETr),SwinU-NetTransformer(Swin-UNETr),You Only Look Once version 8(YoloV8),and Mask R-CNN using two benchmark datasets:Crack500 and DeepCrack.The findings reveal that the MaskerTransformer significantly outperforms the existing models,achieving the highest Dice SimilarityCoefficient(DSC),precision,recall,and F1-Score across both datasets.Specifically,the model attained a DSC of 80.04%on Crack500 and 91.37%on DeepCrack,demonstrating superior segmentation accuracy and reliability.The high precision and recall rates further substantiate its effectiveness in real-world applications,suggesting that the Masker Transformer can serve as a robust tool for automated pavement crack detection,potentially replacing more traditional methods. 展开更多
关键词 Pavement crack segmentation TRANSPORTATION deep learning vision transformer Mask R-CNN image segmentation
在线阅读 下载PDF
基于Vision Transformer的混合型晶圆图缺陷模式识别
13
作者 李攀 娄莉 《现代信息科技》 2025年第19期26-30,共5页
晶圆测试作为芯片生产过程中重要的一环,晶圆图缺陷模式的识别和分类对改进前端制造工艺具有关键作用。在实际生产过程中,各类缺陷可能同时出现,形成混合缺陷类型。传统深度学习方法对混合型晶圆图缺陷信息的识别率较低,为此,文章提出... 晶圆测试作为芯片生产过程中重要的一环,晶圆图缺陷模式的识别和分类对改进前端制造工艺具有关键作用。在实际生产过程中,各类缺陷可能同时出现,形成混合缺陷类型。传统深度学习方法对混合型晶圆图缺陷信息的识别率较低,为此,文章提出一种基于Vision Transformer的缺陷识别方法。该方法采用多头自注意力机制对晶圆图的全局特征进行编码,实现了对混合型晶圆缺陷图的高效识别。在混合型缺陷数据集上的实验结果表明,该方法性能优于现有深度学习模型,平均正确率达96.2%。 展开更多
关键词 计算机视觉 晶圆图 缺陷识别 vision Transformer
在线阅读 下载PDF
基于改进Vision Transformer的遥感图像分类研究
14
作者 李宗轩 冷欣 +1 位作者 章磊 陈佳凯 《林业机械与木工设备》 2025年第6期31-35,共5页
通过遥感图像分类能够快速有效获取森林区域分布,为林业资源管理监测提供支持。Vision Transformer(ViT)凭借优秀的全局信息捕捉能力在遥感图像分类任务中广泛应用。但Vision Transformer在浅层特征提取时会冗余捕捉其他局部特征而无法... 通过遥感图像分类能够快速有效获取森林区域分布,为林业资源管理监测提供支持。Vision Transformer(ViT)凭借优秀的全局信息捕捉能力在遥感图像分类任务中广泛应用。但Vision Transformer在浅层特征提取时会冗余捕捉其他局部特征而无法有效捕获关键特征,并且Vision Transformer在将图像分割为patch过程中可能会导致边缘等细节信息的丢失,从而影响分类准确性。针对上述问题提出一种改进Vision Transformer,引入了STA(Super Token Attention)注意力机制来增强Vision Transformer对关键特征信息的提取并减少计算冗余度,还通过加入哈尔小波下采样(Haar Wavelet Downsampling)在减少细节信息丢失的同时增强对图像不同尺度局部和全局信息的捕获能力。通过实验在AID数据集上达到了92.98%的总体准确率,证明了提出方法的有效性。 展开更多
关键词 遥感图像分类 vision Transformer 哈尔小波下采样 STA注意力机制
在线阅读 下载PDF
卷积增强Vision Mamba模型的构建及其应用
15
作者 俞焕友 范静 黄凡 《计算机技术与发展》 2025年第8期45-52,共8页
针对Vision Mamba(Vim)模型的局限性,该文提出了一种改进的模型——Convolutional Vision Mamba(CvM)。此模型通过摒弃Vim中的图形切割和位置编码机制,转而采用卷积操作进行替代,以实现对全局视觉信息的更高效处理。同时,此模型对Vim模... 针对Vision Mamba(Vim)模型的局限性,该文提出了一种改进的模型——Convolutional Vision Mamba(CvM)。此模型通过摒弃Vim中的图形切割和位置编码机制,转而采用卷积操作进行替代,以实现对全局视觉信息的更高效处理。同时,此模型对Vim模型中的位置嵌入模块进行了优化,以解决其固有的高计算量和内存消耗问题。进而,该文将CvM模型应用于医学图像分类领域,选用了血细胞图像、脑肿瘤图像、胸部CT扫描、病理性近视眼底图像以及肺炎X射线影像等数据集进行实验。实验结果表明,与Vim模型及其他5个神经网络模型相比,CvM模型在准确率上表现更为出色,在内存占用和参数数量方面也展现出明显的优势。消融实验表明,深度可分离卷积比标准卷积使用的参数和显存占用更少,而且在血细胞图像、脑肿瘤图像等医学图像分类上,准确率还有了显著提升。这些结果充分说明了CvM模型的优势和可行性。 展开更多
关键词 深度学习 vision Mamba 卷积神经网络 深度可分离卷积 医学图像分类
在线阅读 下载PDF
Adaptive optoelectronic transistor for intelligent vision system 被引量:1
16
作者 Yiru Wang Shanshuo Liu +5 位作者 Hongxin Zhang Yuchen Cao Zitong Mu Mingdong Yi Linghai Xie Haifeng Ling 《Journal of Semiconductors》 2025年第2期53-70,共18页
Recently,for developing neuromorphic visual systems,adaptive optoelectronic devices become one of the main research directions and attract extensive focus to achieve optoelectronic transistors with high performances a... Recently,for developing neuromorphic visual systems,adaptive optoelectronic devices become one of the main research directions and attract extensive focus to achieve optoelectronic transistors with high performances and flexible func-tionalities.In this review,based on a description of the biological adaptive functions that are favorable for dynamically perceiv-ing,filtering,and processing information in the varying environment,we summarize the representative strategies for achiev-ing these adaptabilities in optoelectronic transistors,including the adaptation for detecting information,adaptive synaptic weight change,and history-dependent plasticity.Moreover,the key points of the corresponding strategies are comprehen-sively discussed.And the applications of these adaptive optoelectronic transistors,including the adaptive color detection,sig-nal filtering,extending the response range of light intensity,and improve learning efficiency,are also illustrated separately.Lastly,the challenges faced in developing adaptive optoelectronic transistor for artificial vision system are discussed.The descrip-tion of biological adaptive functions and the corresponding inspired neuromorphic devices are expected to provide insights for the design and application of next-generation artificial visual systems. 展开更多
关键词 adaptive optoelectronic transistor neuromorphic computing artificial vision
在线阅读 下载PDF
Application Research of Multi-Dimensional Customer Behavior Analysis Model in Precision Marketing
17
作者 Shuotong Dong 《Open Journal of Applied Sciences》 2024年第12期3589-3600,共12页
The advent of the digital era has provided unprecedented opportunities for businesses to collect and analyze customer behavior data. Precision marketing, as a key means to improve marketing efficiency, highly depends ... The advent of the digital era has provided unprecedented opportunities for businesses to collect and analyze customer behavior data. Precision marketing, as a key means to improve marketing efficiency, highly depends on a deep understanding of customer behavior. This study proposes a theoretical framework for multi-dimensional customer behavior analysis, aiming to comprehensively capture customer behavioral characteristics in the digital environment. This framework integrates concepts of multi-source data including transaction history, browsing trajectories, social media interactions, and location information, constructing a theoretically more comprehensive customer profile. The research discusses the potential applications of this theoretical framework in precision marketing scenarios such as personalized recommendations, cross-selling, and customer churn prevention. Through analysis, the study points out that multi-dimensional analysis may significantly improve the targeting and theoretical conversion rates of marketing activities. However, the research also explores theoretical challenges that may be faced in the application process, such as data privacy and information overload, and proposes corresponding conceptual coping strategies. This study provides a new theoretical perspective on how businesses can optimize marketing decisions using big data thinking while respecting customer privacy, laying a foundation for future empirical research. 展开更多
关键词 Customer Behavior Analysis Precision Marketing multi-dimensional Model Data Theory Personalized Recommendation
在线阅读 下载PDF
基于改进Vision Transformer的森林火灾视频识别研究
18
作者 张敏 辛颖 黄天棋 《南京林业大学学报(自然科学版)》 北大核心 2025年第4期186-194,共9页
【目的】针对现有森林火灾图像识别算法存在的效率不足、时序特征利用率低等问题,构建基于视频数据的森林火灾识别模型,以提升林火监测的实时性与识别准确率。【方法】提出融合三维卷积神经网络(3DCNN)与视觉Vision Transformer(ViT)的C... 【目的】针对现有森林火灾图像识别算法存在的效率不足、时序特征利用率低等问题,构建基于视频数据的森林火灾识别模型,以提升林火监测的实时性与识别准确率。【方法】提出融合三维卷积神经网络(3DCNN)与视觉Vision Transformer(ViT)的C3D-ViT算法。该模型通过3DCNN提取视频序列的时空特征,构建时空特征向量;利用ViT编码器的自注意力机制融合局部与全局特征;最终经MLP Head层输出分类结果。通过消融实验验证C3D-ViT模型的有效性,并与原模型3DCNN和ViT,以及ResNet50、LSTM、YOLOv5等深度学习模型进行对比。【结果】C3D-ViT在自建林火数据集上准确率达到96.10%,较ResNet50(89.07%)、LSTM(93.26%)和YOLOv5(91.46%)具有明显优势。模型改进有效,准确率超越3DCNN(93.91%)与ViT(90.43%)。在遮挡、远距离、低浓度烟雾等复杂场景下保持较高的平均置信度,满足实时监测需求。【结论】C3D-ViT通过时空特征联合建模,显著提升林火识别的鲁棒性与时效性,为森林防火系统提供可靠的技术支持。 展开更多
关键词 森林火灾 深度学习 目标检测 三维卷积神经网络 vision Transformer
原文传递
Steel Surface Defect Detection Using Learnable Memory Vision Transformer
19
作者 Syed Tasnimul Karim Ayon Farhan Md.Siraj Jia Uddin 《Computers, Materials & Continua》 SCIE EI 2025年第1期499-520,共22页
This study investigates the application of Learnable Memory Vision Transformers(LMViT)for detecting metal surface flaws,comparing their performance with traditional CNNs,specifically ResNet18 and ResNet50,as well as o... This study investigates the application of Learnable Memory Vision Transformers(LMViT)for detecting metal surface flaws,comparing their performance with traditional CNNs,specifically ResNet18 and ResNet50,as well as other transformer-based models including Token to Token ViT,ViT withoutmemory,and Parallel ViT.Leveraging awidely-used steel surface defect dataset,the research applies data augmentation and t-distributed stochastic neighbor embedding(t-SNE)to enhance feature extraction and understanding.These techniques mitigated overfitting,stabilized training,and improved generalization capabilities.The LMViT model achieved a test accuracy of 97.22%,significantly outperforming ResNet18(88.89%)and ResNet50(88.90%),aswell as the Token to TokenViT(88.46%),ViT without memory(87.18),and Parallel ViT(91.03%).Furthermore,LMViT exhibited superior training and validation performance,attaining a validation accuracy of 98.2%compared to 91.0%for ResNet 18,96.0%for ResNet50,and 89.12%,87.51%,and 91.21%for Token to Token ViT,ViT without memory,and Parallel ViT,respectively.The findings highlight the LMViT’s ability to capture long-range dependencies in images,an areawhere CNNs struggle due to their reliance on local receptive fields and hierarchical feature extraction.The additional transformer-based models also demonstrate improved performance in capturing complex features over CNNs,with LMViT excelling particularly at detecting subtle and complex defects,which is critical for maintaining product quality and operational efficiency in industrial applications.For instance,the LMViT model successfully identified fine scratches and minor surface irregularities that CNNs often misclassify.This study not only demonstrates LMViT’s potential for real-world defect detection but also underscores the promise of other transformer-based architectures like Token to Token ViT,ViT without memory,and Parallel ViT in industrial scenarios where complex spatial relationships are key.Future research may focus on enhancing LMViT’s computational efficiency for deployment in real-time quality control systems. 展开更多
关键词 Learnable Memory vision Transformer(LMViT) Convolutional Neural Networks(CNN) metal surface defect detection deep learning computer vision image classification learnable memory gradient clipping label smoothing t-SNE visualization
在线阅读 下载PDF
ViT-Count:面向冠层遮挡的Vision Transformer树木计数定位方法
20
作者 张乔一 张瑞 霍光煜 《北京林业大学学报》 北大核心 2025年第10期128-138,共11页
【目的】针对复杂场景中树木检测的挑战,如遮挡、背景干扰及密集分布等,本研究提出一种基于Vision Transformer(ViT)的树木检测方法(ViT-Count),提升模型对复杂场景中树木的检测精度与鲁棒性。【方法】采用ViT作为基础模型,其在捕捉图... 【目的】针对复杂场景中树木检测的挑战,如遮挡、背景干扰及密集分布等,本研究提出一种基于Vision Transformer(ViT)的树木检测方法(ViT-Count),提升模型对复杂场景中树木的检测精度与鲁棒性。【方法】采用ViT作为基础模型,其在捕捉图像中全局上下文信息方面具有天然优势,尤其适用于形态多变的复杂环境。设计针对树木的视觉提示调优VPT机制,其通过在特征中注入可学习提示(prompts),优化模型在林地高密度树冠、光照变化及不同树种结构下的特征提取能力,提高对不同林分类型的适应性。设计卷积模块的注意力机制模块,利用其在局部感知基础上的长距离依赖建模能力,有效强化模型对树木遮挡、重叠及形态相似目标的辨别能力,提高整体检测的鲁棒性与准确性。设计一个树木检测解码器,通过多层卷积、归一化、GELU激活与上采样操作逐步还原空间分辨率,以生成的目标密度图实现树木计数与定位。【结果】该方法在提升森林、城市场景下的树木检测鲁棒性的同时,增强了模型在多尺度树木目标上的泛化能力。在Larch Casebearer数据集和Urban Tree数据集上进行的实验显示,与其他主流模型相比,该方法的MAE和RMSE最多分别降低了2.53、3.99,表明其泛化能力更强,具有最优的树木检测性能。可视化实验结果表明,在密集森林场景和复杂城市场景中,所提模型均具有较高的树木检测准确率。消融实验的结果证明了模型主要模块的有效性。【结论】基于Vision Transformer的面向复杂场景的树木计数与定位方法能够充分发挥ViT的全局建模能力及视觉提示调优机制任务适应性,结合卷积模块的注意力机制,有效提升复杂场景树木计数与定位的精度与鲁棒性。 展开更多
关键词 目标识别 树木计数 树木定位 复杂场景 vision Transformer(ViT) 视觉提示调优(VPT) 注意力机制
在线阅读 下载PDF
上一页 1 2 250 下一页 到第
使用帮助 返回顶部