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一种基于帧序列特征的三流网络人体行为识别方法
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作者 黄瑞丰 陈冲 +2 位作者 程睿 王旭 张龙凤 《池州学院学报》 2024年第3期21-27,共7页
随着计算机科学和深度学习技术的发展,人体行为识别研究逐渐成为计算机视觉的一个重要课题。目前主流的双流网络模型无法做到在提取图像和运动特征的同时提取视频的帧间序列特征,当局部序列特征与长短时运动特征发生时空交互时,双流网... 随着计算机科学和深度学习技术的发展,人体行为识别研究逐渐成为计算机视觉的一个重要课题。目前主流的双流网络模型无法做到在提取图像和运动特征的同时提取视频的帧间序列特征,当局部序列特征与长短时运动特征发生时空交互时,双流网络模型鲁棒性严重降低。针对于此,提出了一种基于视频序列特征的三流网络人体行为识别方法。通过预处理将视频的稠密光流帧输入时间网络,RGB帧输入空间网络和帧序列特征提取网络,同时对三个网络进行预训练。网络输出其对应的特征后使用权重相加的融合方法进行特征融合,最后采用多层感知机得到行为分类结果。将该方法分别在UCF11、UCF50和HMDB51数据集进行实验,得到行为分类准确率分别为99.17%、97.40%和96.88%。与传统的双流网络方法相比,该方法有效综合了行为的空间信息,时间信息和帧序列信息,识别准确率得到较大提升,具有更强的泛化能力。 展开更多
关键词 人体行为识别 三流网络 帧序列特征 ucf11 UCF50 HMDB51
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Human Action Recognition Using Difference of Gaussian and Difference of Wavelet 被引量:1
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作者 Gopampallikar Vinoda Reddy Kongara Deepika +4 位作者 Lakshmanan Malliga Duraivelu Hemanand Chinnadurai Senthilkumar Subburayalu Gopalakrishnan Yousef Farhaoui 《Big Data Mining and Analytics》 EI CSCD 2023年第3期336-346,共11页
Human Action Recognition(HAR)attempts to recognize the human action from images and videos.The major challenge in HAR is the design of an action descriptor that makes the HAR system robust for different environments.A... Human Action Recognition(HAR)attempts to recognize the human action from images and videos.The major challenge in HAR is the design of an action descriptor that makes the HAR system robust for different environments.A novel action descriptor is proposed in this study,based on two independent spatial and spectral filters.The proposed descriptor uses a Difference of Gaussian(DoG)filter to extract scale-invariant features and a Difference of Wavelet(DoW)filter to extract spectral information.To create a composite feature vector for a particular test action picture,the Discriminant of Guassian(DoG)and Difference of Wavelet(DoW)features are combined.Linear Discriminant Analysis(LDA),a widely used dimensionality reduction technique,is also used to eliminate duplicate data.Finally,a closest neighbor method is used to classify the dataset.Weizmann and UCF 11 datasets were used to run extensive simulations of the suggested strategy,and the accuracy assessed after the simulations were run on Weizmann datasets for five-fold cross validation is shown to perform well.The average accuracy of DoG+DoW is observed as 83.6635%while the average accuracy of Discrinanat of Guassian(DoG)and Difference of Wavelet(DoW)is observed as 80.2312%and 77.4215%,respectively.The average accuracy measured after the simulation of proposed methods over UCF 11 action dataset for five-fold cross validation DoG+DoW is observed as 62.5231%while the average accuracy of Difference of Guassian(DoG)and Difference of Wavelet(DoW)is observed as 60.3214%and 58.1247%,respectively.From the above accuracy observations,the accuracy of Weizmann is high compared to the accuracy of UCF 11,hence verifying the effectiveness in the improvisation of recognition accuracy. 展开更多
关键词 human action recognition difference of Gaussian difference of wavelet linear discriminant analysis Weizmann UCF 11 ACCURACY
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