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ResFPN:扩增实际感受野和改进FPN的多尺度目标检测方法 被引量:3
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作者 杨扬 唐晓芬 《计算机工程与应用》 北大核心 2025年第10期247-257,共11页
针对多尺度目标检测中主干网络实际感受野远远小于理论感受野,感受野分布稀疏,以及特征金字塔网络(feature pyramid network,FPN)在横向连接过程中统一通道数会丢失通道信息等影响模型性能的问题,提出一种扩增实际感受野和多特征融合改... 针对多尺度目标检测中主干网络实际感受野远远小于理论感受野,感受野分布稀疏,以及特征金字塔网络(feature pyramid network,FPN)在横向连接过程中统一通道数会丢失通道信息等影响模型性能的问题,提出一种扩增实际感受野和多特征融合改进FPN的多尺度目标检测算法ResFPN。针对主干网络实际感受野远远小于理论感受野的问题,设计了多分支膨胀卷积(multi-branch dilated convolutional,MBD)模块和多分支池化(multi-branch pooling,MBP)模块,通过学习不同尺度空间特征融合,扩增感受野。针对感受野分布稀疏问题,提出轻量级通道交互融合(channel interactive fusion,CIF)模块,通过双分支结构并在每一分支叠加不同数量深度可分离卷积学习像素间的依赖关系增强特征表示。针对FPN通过1×1卷积统一通道数会丢失通道信息的问题,尝试利用SubPixel卷积提取C5层输出特征,保留原始丰富语义信息的同时引出额外双向路径对FPN通道信息进行补充,但这可能会产生冗余信息。因此,在额外双向路径后引入全局上下文(global context,GC)模块,利用GC瓶颈转换模块进一步融合特征信息,减少信息冗余。实验表明,提出的ResFPN有效解决了感受野分布稀疏问题,并将主干网络感受野增大为原来的一倍,同时提出的改进FPN通道丢失问题的方法也在多尺度目标检测中获得了良好的性能。与典型的网络Faster R-CNN相比,大、中、小物体检测平均精度在具有挑战性的MS COCO数据集上分别提高了2.2、1.6、2.0个百分点,与其他检测器相比检测效果也有提升。 展开更多
关键词 目标检测 卷积神经网络 多尺度目标检测 感受野 特征金字塔网络(fpn)
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基于FPN和Faster R-CNN的生命体征参数智能识别
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作者 刘佳颖 刘金城 +4 位作者 綦雅婷 吴思圻 黄标晟 胡志雄 王建林 《计量学报》 北大核心 2025年第7期1075-1082,共8页
传统的多参数监护仪检定方法依赖人工读数和测量,效率低下。亟待研究一种基于人工智能的目标检测算法,实现多参数监护仪中生命体征参数的智能化识别,推动多参数监护仪自动化检定技术的发展。针对上述问题,提出一种基于FPN和Faster R-CN... 传统的多参数监护仪检定方法依赖人工读数和测量,效率低下。亟待研究一种基于人工智能的目标检测算法,实现多参数监护仪中生命体征参数的智能化识别,推动多参数监护仪自动化检定技术的发展。针对上述问题,提出一种基于FPN和Faster R-CNN的神经网络模型自动识别和分类生命体征参数,为后续实现多参数监护仪自动检定提供支持。为克服传统Faster R-CNN在中小目标识别任务上的不足,结合了ResNet50和FPN提取网络,以提升中小目标识别率。在实际临床采集的图像数据集上验证ResNet50+FPN的有效性,并与VGG16、MobileNetV2、EfficientNetB0、ResNet50等网络进行对比。结果表明,ResNet50+FPN识别的均值平均精度达到了83.32%,比VGG16提升了3.88%,在中小目标识别均值平均精度上分别提升了4.05%和9.60%。 展开更多
关键词 医学计量 生命体征参数 多参数监护仪 fpn Faster R-CNN 自动化检定 目标检测
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基于UFPN-Fuse网络的变电站设备故障识别
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作者 邓长征 弓萌庆 +2 位作者 付添 刘明泽 夏鹏雨 《红外技术》 北大核心 2025年第8期1027-1034,共8页
针对现有基于深度学习的变电站设备故障识别方法中所存在的空间定位与信息提取兼容性差的问题,本文提出基于UFPN-Fuse网络的故障识别方法。先将故障设备红外图像用改进U-Net网络进行分割,提取故障点特征,然后用故障特征与原红外图像在改... 针对现有基于深度学习的变电站设备故障识别方法中所存在的空间定位与信息提取兼容性差的问题,本文提出基于UFPN-Fuse网络的故障识别方法。先将故障设备红外图像用改进U-Net网络进行分割,提取故障点特征,然后用故障特征与原红外图像在改进FPN-Fuse网络中进行图像融合,达到强化故障点红外图像轮廓的目的。通过这种方式,既增强图像视觉效果完成故障定位,又极大保留了故障的细节信息。实验结果表明,本文算法相较于对比算法,SF平均提升7.83%,MI平均提升7.48%,AG平均提升10.62%,VIF平均提升8.38%。 展开更多
关键词 变电站设备 故障识别 分割 故障特征 红外图像 图像融合
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基于BiFPN优化的YOLOv8架构在皮革缺陷识别中的应用
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作者 唐灏 陈法明 +1 位作者 冯志鹏 何凌志 《皮革科学与工程》 北大核心 2025年第5期22-30,60,共10页
传统的图像处理方法难以有效应对复杂背景和不同尺度的缺陷,文章提出了一种融合双向特征金字塔网络(BiFPN)的YOLOv8架构优化策略,旨在提升皮革缺陷识别的精度和效率。YOLOv8作为一种高效的目标检测框架,结合BiFPN的多尺度特征融合优势,... 传统的图像处理方法难以有效应对复杂背景和不同尺度的缺陷,文章提出了一种融合双向特征金字塔网络(BiFPN)的YOLOv8架构优化策略,旨在提升皮革缺陷识别的精度和效率。YOLOv8作为一种高效的目标检测框架,结合BiFPN的多尺度特征融合优势,增强了模型在复杂背景下的特征提取能力。通过在YOLOv8中引入BiFPN模块,模型能够更好地捕捉不同尺度的皮革缺陷,并通过优化后的损失函数进一步提高识别的准确性和稳定性。实验结果表明,改进前的YOLOv8权重为6.3 MB,改进后降至4.3 MB,且mAP50提高了0.2%。该优化策略相较于传统方法和未融合BiFPN的YOLOv8,提升了识别精度和识别速度,优化了YOLOv8框架在皮革缺陷检测中的有效性及实际应用潜力。 展开更多
关键词 Bifpn YOLOv8 皮革 缺陷识别 目标检测 多尺度特征融合 深度学习 优化策略
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Few-shot anomaly detection with adaptive feature transformation and descriptor construction 被引量:1
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作者 Zhengnan HU Xiangrui ZENG +4 位作者 Yiqun LI Zhouping YIN Erli MENG Leyan ZHU Xianghao KONG 《Chinese Journal of Aeronautics》 2025年第3期491-504,共14页
Anomaly Detection (AD) has been extensively adopted in industrial settings to facilitate quality control of products. It is critical to industrial production, especially to areas such as aircraft manufacturing, which ... Anomaly Detection (AD) has been extensively adopted in industrial settings to facilitate quality control of products. It is critical to industrial production, especially to areas such as aircraft manufacturing, which require strict part qualification rates. Although being more efficient and practical, few-shot AD has not been well explored. The existing AD methods only extract features in a single frequency while defects exist in multiple frequency domains. Moreover, current methods have not fully leveraged the few-shot support samples to extract input-related normal patterns. To address these issues, we propose an industrial few-shot AD method, Feature Extender for Anomaly Detection (FEAD), which extracts normal patterns in multiple frequency domains from few-shot samples under the guidance of the input sample. Firstly, to achieve better coverage of normal patterns in the input sample, we introduce a Sample-Conditioned Transformation Module (SCTM), which transforms support features under the guidance of the input sample to obtain extra normal patterns. Secondly, to effectively distinguish and localize anomaly patterns in multiple frequency domains, we devise an Adaptive Descriptor Construction Module (ADCM) to build and select pattern descriptors in a series of frequencies adaptively. Finally, an auxiliary task for SCTM is designed to ensure the diversity of transformations and include more normal patterns into support features. Extensive experiments on two widely used industrial AD datasets (MVTec-AD and VisA) demonstrate the effectiveness of the proposed FEAD. 展开更多
关键词 Industrial applications Anomaly detection Learning algorithms feature extraction feature selection
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Multi-scale feature fusion optical remote sensing target detection method 被引量:1
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作者 BAI Liang DING Xuewen +1 位作者 LIU Ying CHANG Limei 《Optoelectronics Letters》 2025年第4期226-233,共8页
An improved model based on you only look once version 8(YOLOv8)is proposed to solve the problem of low detection accuracy due to the diversity of object sizes in optical remote sensing images.Firstly,the feature pyram... An improved model based on you only look once version 8(YOLOv8)is proposed to solve the problem of low detection accuracy due to the diversity of object sizes in optical remote sensing images.Firstly,the feature pyramid network(FPN)structure of the original YOLOv8 mode is replaced by the generalized-FPN(GFPN)structure in GiraffeDet to realize the"cross-layer"and"cross-scale"adaptive feature fusion,to enrich the semantic information and spatial information on the feature map to improve the target detection ability of the model.Secondly,a pyramid-pool module of multi atrous spatial pyramid pooling(MASPP)is designed by using the idea of atrous convolution and feature pyramid structure to extract multi-scale features,so as to improve the processing ability of the model for multi-scale objects.The experimental results show that the detection accuracy of the improved YOLOv8 model on DIOR dataset is 92%and mean average precision(mAP)is 87.9%,respectively 3.5%and 1.7%higher than those of the original model.It is proved the detection and classification ability of the proposed model on multi-dimensional optical remote sensing target has been improved. 展开更多
关键词 multi scale feature fusion optical remote sensing feature map improve target detection ability optical remote sensing imagesfirstlythe target detection feature fusionto enrich semantic information spatial information
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Correction:A Lightweight Approach for Skin Lesion Detection through Optimal Features Fusion
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作者 Khadija Manzoor Fiaz Majeed +5 位作者 Ansar Siddique Talha Meraj Hafiz Tayyab Rauf Mohammed A.El-Meligy Mohamed Sharaf Abd Elatty E.Abd Elgawad 《Computers, Materials & Continua》 SCIE EI 2025年第1期1459-1459,共1页
In the article“A Lightweight Approach for Skin Lesion Detection through Optimal Features Fusion”by Khadija Manzoor,Fiaz Majeed,Ansar Siddique,Talha Meraj,Hafiz Tayyab Rauf,Mohammed A.El-Meligy,Mohamed Sharaf,Abd Ela... In the article“A Lightweight Approach for Skin Lesion Detection through Optimal Features Fusion”by Khadija Manzoor,Fiaz Majeed,Ansar Siddique,Talha Meraj,Hafiz Tayyab Rauf,Mohammed A.El-Meligy,Mohamed Sharaf,Abd Elatty E.Abd Elgawad Computers,Materials&Continua,2022,Vol.70,No.1,pp.1617–1630.DOI:10.32604/cmc.2022.018621,URL:https://www.techscience.com/cmc/v70n1/44361,there was an error regarding the affiliation for the author Hafiz Tayyab Rauf.Instead of“Centre for Smart Systems,AI and Cybersecurity,Staffordshire University,Stoke-on-Trent,UK”,the affiliation should be“Independent Researcher,Bradford,BD80HS,UK”. 展开更多
关键词 FUSION SKIN feature
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基于FPN-LSTM的电力建设项目HSE绩效评价
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作者 李龙云 王鹏 +3 位作者 周晓峰 张健 刘懿萱 王倩琳 《北京化工大学学报(自然科学版)》 北大核心 2025年第4期126-137,共12页
健康-安全-环境(health-safety-environment,HSE)绩效评价作为一种提升电力企业综合管理水平的关键手段,能够有效降低工程事故的发生概率且有力保障电力建设的顺利实施。然而,现有方法忽略各要素的可信度,导致HSE绩效评价结果的分辨率... 健康-安全-环境(health-safety-environment,HSE)绩效评价作为一种提升电力企业综合管理水平的关键手段,能够有效降低工程事故的发生概率且有力保障电力建设的顺利实施。然而,现有方法忽略各要素的可信度,导致HSE绩效评价结果的分辨率较低。为此,提出一种基于模糊Petri网-长短期记忆网络(fuzzy Petri net-long short-term memory,FPN-LSTM)的电力建设项目HSE绩效评价方法。首先,根据现场HSE数据统计表引入模糊Petri网(fuzzy Petri net,FPN),构建直观化、定量化的电力建设项目HSE绩效评价模型;然后,计算库所节点数据的差异分数,同时采用线性插值的方式确定FPN模型中初始库所、中间库所和终止库所的置信度取值,开展电力建设项目HSE绩效评价;最后,借助长短期记忆网络(long short-term memory,LSTM)对FPN模型的置信度进行训练和更新,最大程度优化HSE绩效评价结果。以鲁西分公司的HSE绩效评价为例,开展FPN-LSTM模型验证,并将其与传统FPN模型、FPN-反向传播(back propagation,BP)神经网络进行对比分析,结果表明,该FPN-LSTM模型不仅能够准确、系统地反映整个电力建设项目的HSE绩效水平,还可精细、有效地厘清各级评价要素的执行情况和分布特性,从而为HSE管理人员提供科学化、体系化和精准化的决策依据。 展开更多
关键词 电力建设项目 绩效评价 健康-安全-环境(HSE) 模糊Petri网(fpn) 长短期记忆网络(LSTM)
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Effects of feature selection and normalization on network intrusion detection 被引量:1
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作者 Mubarak Albarka Umar Zhanfang Chen +1 位作者 Khaled Shuaib Yan Liu 《Data Science and Management》 2025年第1期23-39,共17页
The rapid rise of cyberattacks and the gradual failure of traditional defense systems and approaches led to using artificial intelligence(AI)techniques(such as machine learning(ML)and deep learning(DL))to build more e... The rapid rise of cyberattacks and the gradual failure of traditional defense systems and approaches led to using artificial intelligence(AI)techniques(such as machine learning(ML)and deep learning(DL))to build more efficient and reliable intrusion detection systems(IDSs).However,the advent of larger IDS datasets has negatively impacted the performance and computational complexity of AI-based IDSs.Many researchers used data preprocessing techniques such as feature selection and normalization to overcome such issues.While most of these researchers reported the success of these preprocessing techniques on a shallow level,very few studies have been performed on their effects on a wider scale.Furthermore,the performance of an IDS model is subject to not only the utilized preprocessing techniques but also the dataset and the ML/DL algorithm used,which most of the existing studies give little emphasis on.Thus,this study provides an in-depth analysis of feature selection and normalization effects on IDS models built using three IDS datasets:NSL-KDD,UNSW-NB15,and CSE–CIC–IDS2018,and various AI algorithms.A wrapper-based approach,which tends to give superior performance,and min-max normalization methods were used for feature selection and normalization,respectively.Numerous IDS models were implemented using the full and feature-selected copies of the datasets with and without normalization.The models were evaluated using popular evaluation metrics in IDS modeling,intra-and inter-model comparisons were performed between models and with state-of-the-art works.Random forest(RF)models performed better on NSL-KDD and UNSW-NB15 datasets with accuracies of 99.86%and 96.01%,respectively,whereas artificial neural network(ANN)achieved the best accuracy of 95.43%on the CSE–CIC–IDS2018 dataset.The RF models also achieved an excellent performance compared to recent works.The results show that normalization and feature selection positively affect IDS modeling.Furthermore,while feature selection benefits simpler algorithms(such as RF),normalization is more useful for complex algorithms like ANNs and deep neural networks(DNNs),and algorithms such as Naive Bayes are unsuitable for IDS modeling.The study also found that the UNSW-NB15 and CSE–CIC–IDS2018 datasets are more complex and more suitable for building and evaluating modern-day IDS than the NSL-KDD dataset.Our findings suggest that prioritizing robust algorithms like RF,alongside complex models such as ANN and DNN,can significantly enhance IDS performance.These insights provide valuable guidance for managers to develop more effective security measures by focusing on high detection rates and low false alert rates. 展开更多
关键词 CYBERSECURITY Intrusion detection system Machine learning Deep learning feature selection NORMALIZATION
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基于FPN算法的工业机器人抓取过程自动控制方法
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作者 杨艳 《自动化应用》 2025年第6期61-63,共3页
为辅助工业机器人快速、准确地识别并抓取目标物体,设计了基于FPN算法的抓取过程自动控制方法。首先,利用FPN算法采集目标物体图像,并对目标物体作出检测与识别;然后,确定目标物体抓取点,规划工业机器人的抓取姿态;最后,执行抓取动作并... 为辅助工业机器人快速、准确地识别并抓取目标物体,设计了基于FPN算法的抓取过程自动控制方法。首先,利用FPN算法采集目标物体图像,并对目标物体作出检测与识别;然后,确定目标物体抓取点,规划工业机器人的抓取姿态;最后,执行抓取动作并对其抓取过程进行出力控制,实现最佳的抓取效果。结果表明,该方法应用后,工业机器人抓取成功率显著提升,平均可达98%以上,能够更准确地指挥机器人完成抓取任务。 展开更多
关键词 fpn算法 工业机器人 抓取控制
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A Lightweight Multiscale Feature Fusion Network for Solar Cell Defect Detection
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作者 Xiaoyun Chen Lanyao Zhang +3 位作者 Xiaoling Chen Yigang Cen Linna Zhang Fugui Zhang 《Computers, Materials & Continua》 SCIE EI 2025年第1期521-542,共22页
Solar cell defect detection is crucial for quality inspection in photovoltaic power generation modules.In the production process,defect samples occur infrequently and exhibit random shapes and sizes,which makes it cha... Solar cell defect detection is crucial for quality inspection in photovoltaic power generation modules.In the production process,defect samples occur infrequently and exhibit random shapes and sizes,which makes it challenging to collect defective samples.Additionally,the complex surface background of polysilicon cell wafers complicates the accurate identification and localization of defective regions.This paper proposes a novel Lightweight Multiscale Feature Fusion network(LMFF)to address these challenges.The network comprises a feature extraction network,a multi-scale feature fusion module(MFF),and a segmentation network.Specifically,a feature extraction network is proposed to obtain multi-scale feature outputs,and a multi-scale feature fusion module(MFF)is used to fuse multi-scale feature information effectively.In order to capture finer-grained multi-scale information from the fusion features,we propose a multi-scale attention module(MSA)in the segmentation network to enhance the network’s ability for small target detection.Moreover,depthwise separable convolutions are introduced to construct depthwise separable residual blocks(DSR)to reduce the model’s parameter number.Finally,to validate the proposed method’s defect segmentation and localization performance,we constructed three solar cell defect detection datasets:SolarCells,SolarCells-S,and PVEL-S.SolarCells and SolarCells-S are monocrystalline silicon datasets,and PVEL-S is a polycrystalline silicon dataset.Experimental results show that the IOU of our method on these three datasets can reach 68.5%,51.0%,and 92.7%,respectively,and the F1-Score can reach 81.3%,67.5%,and 96.2%,respectively,which surpasses other commonly usedmethods and verifies the effectiveness of our LMFF network. 展开更多
关键词 Defect segmentation multi-scale feature fusion multi-scale attention depthwise separable residual block
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Retrospective analysis of pathological types and imaging features in pancreatic cancer: A comprehensive study
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作者 Yang-Gang Luo Mei Wu Hong-Guang Chen 《World Journal of Gastrointestinal Oncology》 SCIE 2025年第1期121-129,共9页
BACKGROUND Pancreatic cancer remains one of the most lethal malignancies worldwide,with a poor prognosis often attributed to late diagnosis.Understanding the correlation between pathological type and imaging features ... BACKGROUND Pancreatic cancer remains one of the most lethal malignancies worldwide,with a poor prognosis often attributed to late diagnosis.Understanding the correlation between pathological type and imaging features is crucial for early detection and appropriate treatment planning.AIM To retrospectively analyze the relationship between different pathological types of pancreatic cancer and their corresponding imaging features.METHODS We retrospectively analyzed the data of 500 patients diagnosed with pancreatic cancer between January 2010 and December 2020 at our institution.Pathological types were determined by histopathological examination of the surgical spe-cimens or biopsy samples.The imaging features were assessed using computed tomography,magnetic resonance imaging,and endoscopic ultrasound.Statistical analyses were performed to identify significant associations between pathological types and specific imaging characteristics.RESULTS There were 320(64%)cases of pancreatic ductal adenocarcinoma,75(15%)of intraductal papillary mucinous neoplasms,50(10%)of neuroendocrine tumors,and 55(11%)of other rare types.Distinct imaging features were identified in each pathological type.Pancreatic ductal adenocarcinoma typically presents as a hypodense mass with poorly defined borders on computed tomography,whereas intraductal papillary mucinous neoplasms present as characteristic cystic lesions with mural nodules.Neuroendocrine tumors often appear as hypervascular lesions in contrast-enhanced imaging.Statistical analysis revealed significant correlations between specific imaging features and pathological types(P<0.001).CONCLUSION This study demonstrated a strong association between the pathological types of pancreatic cancer and imaging features.These findings can enhance the accuracy of noninvasive diagnosis and guide personalized treatment approaches. 展开更多
关键词 Pancreatic cancer Pathological types Imaging features Retrospective analysis Diagnostic accuracy
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New Features and New Challenges of U.S.-Europe Relations Under Trump 2.0 被引量:1
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作者 Zhao Huaipu 《Contemporary World》 2025年第3期47-52,共6页
During Donald Trump’s first term,the“Trump Shock”brought world politics into an era of uncertainties and pulled the transatlantic alliance down to its lowest point in history.The Trump 2.0 tsunami brewed by the 202... During Donald Trump’s first term,the“Trump Shock”brought world politics into an era of uncertainties and pulled the transatlantic alliance down to its lowest point in history.The Trump 2.0 tsunami brewed by the 2024 presidential election of the United States has plunged the U.S.-Europe relations into more gloomy waters,ushering in a more complex and turbulent period of adjustment. 展开更多
关键词 new features turbulent period Trump U S Europe relations presidential election new challenges UNCERTAINTIES transatlantic alliance
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Congruent Feature Selection Method to Improve the Efficacy of Machine Learning-Based Classification in Medical Image Processing
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作者 Mohd Anjum Naoufel Kraiem +2 位作者 Hong Min Ashit Kumar Dutta Yousef Ibrahim Daradkeh 《Computer Modeling in Engineering & Sciences》 SCIE EI 2025年第1期357-384,共28页
Machine learning(ML)is increasingly applied for medical image processing with appropriate learning paradigms.These applications include analyzing images of various organs,such as the brain,lung,eye,etc.,to identify sp... Machine learning(ML)is increasingly applied for medical image processing with appropriate learning paradigms.These applications include analyzing images of various organs,such as the brain,lung,eye,etc.,to identify specific flaws/diseases for diagnosis.The primary concern of ML applications is the precise selection of flexible image features for pattern detection and region classification.Most of the extracted image features are irrelevant and lead to an increase in computation time.Therefore,this article uses an analytical learning paradigm to design a Congruent Feature Selection Method to select the most relevant image features.This process trains the learning paradigm using similarity and correlation-based features over different textural intensities and pixel distributions.The similarity between the pixels over the various distribution patterns with high indexes is recommended for disease diagnosis.Later,the correlation based on intensity and distribution is analyzed to improve the feature selection congruency.Therefore,the more congruent pixels are sorted in the descending order of the selection,which identifies better regions than the distribution.Now,the learning paradigm is trained using intensity and region-based similarity to maximize the chances of selection.Therefore,the probability of feature selection,regardless of the textures and medical image patterns,is improved.This process enhances the performance of ML applications for different medical image processing.The proposed method improves the accuracy,precision,and training rate by 13.19%,10.69%,and 11.06%,respectively,compared to other models for the selected dataset.The mean error and selection time is also reduced by 12.56%and 13.56%,respectively,compared to the same models and dataset. 展开更多
关键词 Computer vision feature selection machine learning region detection texture analysis image classification medical images
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Joint Feature Encoding and Task Alignment Mechanism for Emotion-Cause Pair Extraction
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作者 Shi Li Didi Sun 《Computers, Materials & Continua》 SCIE EI 2025年第1期1069-1086,共18页
With the rapid expansion of social media,analyzing emotions and their causes in texts has gained significant importance.Emotion-cause pair extraction enables the identification of causal relationships between emotions... With the rapid expansion of social media,analyzing emotions and their causes in texts has gained significant importance.Emotion-cause pair extraction enables the identification of causal relationships between emotions and their triggers within a text,facilitating a deeper understanding of expressed sentiments and their underlying reasons.This comprehension is crucial for making informed strategic decisions in various business and societal contexts.However,recent research approaches employing multi-task learning frameworks for modeling often face challenges such as the inability to simultaneouslymodel extracted features and their interactions,or inconsistencies in label prediction between emotion-cause pair extraction and independent assistant tasks like emotion and cause extraction.To address these issues,this study proposes an emotion-cause pair extraction methodology that incorporates joint feature encoding and task alignment mechanisms.The model consists of two primary components:First,joint feature encoding simultaneously generates features for emotion-cause pairs and clauses,enhancing feature interactions between emotion clauses,cause clauses,and emotion-cause pairs.Second,the task alignment technique is applied to reduce the labeling distance between emotion-cause pair extraction and the two assistant tasks,capturing deep semantic information interactions among tasks.The proposed method is evaluated on a Chinese benchmark corpus using 10-fold cross-validation,assessing key performance metrics such as precision,recall,and F1 score.Experimental results demonstrate that the model achieves an F1 score of 76.05%,surpassing the state-of-the-art by 1.03%.The proposed model exhibits significant improvements in emotion-cause pair extraction(ECPE)and cause extraction(CE)compared to existing methods,validating its effectiveness.This research introduces a novel approach based on joint feature encoding and task alignment mechanisms,contributing to advancements in emotion-cause pair extraction.However,the study’s limitation lies in the data sources,potentially restricting the generalizability of the findings. 展开更多
关键词 Emotion-cause pair extraction interactive information enhancement joint feature encoding label consistency task alignment mechanisms
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Text-Image Feature Fine-Grained Learning for Joint Multimodal Aspect-Based Sentiment Analysis
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作者 Tianzhi Zhang Gang Zhou +4 位作者 Shuang Zhang Shunhang Li Yepeng Sun Qiankun Pi Shuo Liu 《Computers, Materials & Continua》 SCIE EI 2025年第1期279-305,共27页
Joint Multimodal Aspect-based Sentiment Analysis(JMASA)is a significant task in the research of multimodal fine-grained sentiment analysis,which combines two subtasks:Multimodal Aspect Term Extraction(MATE)and Multimo... Joint Multimodal Aspect-based Sentiment Analysis(JMASA)is a significant task in the research of multimodal fine-grained sentiment analysis,which combines two subtasks:Multimodal Aspect Term Extraction(MATE)and Multimodal Aspect-oriented Sentiment Classification(MASC).Currently,most existing models for JMASA only perform text and image feature encoding from a basic level,but often neglect the in-depth analysis of unimodal intrinsic features,which may lead to the low accuracy of aspect term extraction and the poor ability of sentiment prediction due to the insufficient learning of intra-modal features.Given this problem,we propose a Text-Image Feature Fine-grained Learning(TIFFL)model for JMASA.First,we construct an enhanced adjacency matrix of word dependencies and adopt graph convolutional network to learn the syntactic structure features for text,which addresses the context interference problem of identifying different aspect terms.Then,the adjective-noun pairs extracted from image are introduced to enable the semantic representation of visual features more intuitive,which addresses the ambiguous semantic extraction problem during image feature learning.Thereby,the model performance of aspect term extraction and sentiment polarity prediction can be further optimized and enhanced.Experiments on two Twitter benchmark datasets demonstrate that TIFFL achieves competitive results for JMASA,MATE and MASC,thus validating the effectiveness of our proposed methods. 展开更多
关键词 Multimodal sentiment analysis aspect-based sentiment analysis feature fine-grained learning graph convolutional network adjective-noun pairs
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BDMFuse:Multi-scale network fusion for infrared and visible images based on base and detail features
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作者 SI Hai-Ping ZHAO Wen-Rui +4 位作者 LI Ting-Ting LI Fei-Tao Fernando Bacao SUN Chang-Xia LI Yan-Ling 《红外与毫米波学报》 北大核心 2025年第2期289-298,共10页
The fusion of infrared and visible images should emphasize the salient targets in the infrared image while preserving the textural details of the visible images.To meet these requirements,an autoencoder-based method f... The fusion of infrared and visible images should emphasize the salient targets in the infrared image while preserving the textural details of the visible images.To meet these requirements,an autoencoder-based method for infrared and visible image fusion is proposed.The encoder designed according to the optimization objective consists of a base encoder and a detail encoder,which is used to extract low-frequency and high-frequency information from the image.This extraction may lead to some information not being captured,so a compensation encoder is proposed to supplement the missing information.Multi-scale decomposition is also employed to extract image features more comprehensively.The decoder combines low-frequency,high-frequency and supplementary information to obtain multi-scale features.Subsequently,the attention strategy and fusion module are introduced to perform multi-scale fusion for image reconstruction.Experimental results on three datasets show that the fused images generated by this network effectively retain salient targets while being more consistent with human visual perception. 展开更多
关键词 infrared image visible image image fusion encoder-decoder multi-scale features
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DMHFR:Decoder with Multi-Head Feature Receptors for Tract Image Segmentation
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作者 Jianuo Huang Bohan Lai +2 位作者 Weiye Qiu Caixu Xu Jie He 《Computers, Materials & Continua》 2025年第3期4841-4862,共22页
The self-attention mechanism of Transformers,which captures long-range contextual information,has demonstrated significant potential in image segmentation.However,their ability to learn local,contextual relationships ... The self-attention mechanism of Transformers,which captures long-range contextual information,has demonstrated significant potential in image segmentation.However,their ability to learn local,contextual relationships between pixels requires further improvement.Previous methods face challenges in efficiently managing multi-scale fea-tures of different granularities from the encoder backbone,leaving room for improvement in their global representation and feature extraction capabilities.To address these challenges,we propose a novel Decoder with Multi-Head Feature Receptors(DMHFR),which receives multi-scale features from the encoder backbone and organizes them into three feature groups with different granularities:coarse,fine-grained,and full set.These groups are subsequently processed by Multi-Head Feature Receptors(MHFRs)after feature capture and modeling operations.MHFRs include two Three-Head Feature Receptors(THFRs)and one Four-Head Feature Receptor(FHFR).Each group of features is passed through these MHFRs and then fed into axial transformers,which help the model capture long-range dependencies within the features.The three MHFRs produce three distinct feature outputs.The output from the FHFR serves as auxiliary auxiliary features in the prediction head,and the prediction output and their losses will eventually be aggregated.Experimental results show that the Transformer using DMHFR outperforms 15 state of the arts(SOTA)methods on five public datasets.Specifically,it achieved significant improvements in mean DICE scores over the classic Parallel Reverse Attention Network(PraNet)method,with gains of 4.1%,2.2%,1.4%,8.9%,and 16.3%on the CVC-ClinicDB,Kvasir-SEG,CVC-T,CVC-ColonDB,and ETIS-LaribPolypDB datasets,respectively. 展开更多
关键词 Medical image segmentation feature exploration feature aggregation deep learning multi-head feature receptor
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AMSFuse:Adaptive Multi-Scale Feature Fusion Network for Diabetic Retinopathy Classification
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作者 Chengzhang Zhu Ahmed Alasri +5 位作者 Tao Xu Yalong Xiao Abdulrahman Noman Raeed Alsabri Xuanchu Duan Monir Abdullah 《Computers, Materials & Continua》 2025年第3期5153-5167,共15页
Globally,diabetic retinopathy(DR)is the primary cause of blindness,affecting millions of people worldwide.This widespread impact underscores the critical need for reliable and precise diagnostic techniques to ensure p... Globally,diabetic retinopathy(DR)is the primary cause of blindness,affecting millions of people worldwide.This widespread impact underscores the critical need for reliable and precise diagnostic techniques to ensure prompt diagnosis and effective treatment.Deep learning-based automated diagnosis for diabetic retinopathy can facilitate early detection and treatment.However,traditional deep learning models that focus on local views often learn feature representations that are less discriminative at the semantic level.On the other hand,models that focus on global semantic-level information might overlook critical,subtle local pathological features.To address this issue,we propose an adaptive multi-scale feature fusion network called(AMSFuse),which can adaptively combine multi-scale global and local features without compromising their individual representation.Specifically,our model incorporates global features for extracting high-level contextual information from retinal images.Concurrently,local features capture fine-grained details,such as microaneurysms,hemorrhages,and exudates,which are critical for DR diagnosis.These global and local features are adaptively fused using a fusion block,followed by an Integrated Attention Mechanism(IAM)that refines the fused features by emphasizing relevant regions,thereby enhancing classification accuracy for DR classification.Our model achieves 86.3%accuracy on the APTOS dataset and 96.6%RFMiD,both of which are comparable to state-of-the-art methods. 展开更多
关键词 Diabetic retinopathy multi-scale feature fusion global features local features integrated attention mechanism retinal images
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Block-gram:Mining knowledgeable features for efficiently smart contract vulnerability detection
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作者 Xueshuo Xie Haolong Wang +3 位作者 Zhaolong Jian Yaozheng Fang Zichun Wang Tao Li 《Digital Communications and Networks》 2025年第1期1-12,共12页
Smart contracts are widely used on the blockchain to implement complex transactions,such as decentralized applications on Ethereum.Effective vulnerability detection of large-scale smart contracts is critical,as attack... Smart contracts are widely used on the blockchain to implement complex transactions,such as decentralized applications on Ethereum.Effective vulnerability detection of large-scale smart contracts is critical,as attacks on smart contracts often cause huge economic losses.Since it is difficult to repair and update smart contracts,it is necessary to find the vulnerabilities before they are deployed.However,code analysis,which requires traversal paths,and learning methods,which require many features to be trained,are too time-consuming to detect large-scale on-chain contracts.Learning-based methods will obtain detection models from a feature space compared to code analysis methods such as symbol execution.But the existing features lack the interpretability of the detection results and training model,even worse,the large-scale feature space also affects the efficiency of detection.This paper focuses on improving the detection efficiency by reducing the dimension of the features,combined with expert knowledge.In this paper,a feature extraction model Block-gram is proposed to form low-dimensional knowledge-based features from bytecode.First,the metadata is separated and the runtime code is converted into a sequence of opcodes,which are divided into segments based on some instructions(jumps,etc.).Then,scalable Block-gram features,including 4-dimensional block features and 8-dimensional attribute features,are mined for the learning-based model training.Finally,feature contributions are calculated from SHAP values to measure the relationship between our features and the results of the detection model.In addition,six types of vulnerability labels are made on a dataset containing 33,885 contracts,and these knowledge-based features are evaluated using seven state-of-the-art learning algorithms,which show that the average detection latency speeds up 25×to 650×,compared with the features extracted by N-gram,and also can enhance the interpretability of the detection model. 展开更多
关键词 Smart contract Bytecode&opcode Knowledgeable features Vulnerability detection feature contribution
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