基于稀疏表示的人类活动检测

D. Killedar, S. Sasi
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引用次数: 2

摘要

从视频中进行人体活动检测是一项非常具有挑战性的工作,在体育评估、视频监控、老人/儿童护理等领域得到了广泛的应用。本文提出了一种基于稀疏表示的视频人体活动检测模型。这是使用字典中的原子和稀疏系数矩阵的线性组合来完成的。字典是使用时空兴趣点(STIP)算法创建的。提取训练视频数据和测试视频数据的时空特征。使用k -奇异值分解(KSVD)算法学习训练视频数据集的字典。最后,使用测试视频数据集中相应动作类的最小阈值残差对人类动作进行分类。在包含多个动作的KTH数据集上进行了实验。目前的方法在分类活动方面表现良好,成功率为90%。
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Human activity detection using sparse representation
Human activity detection from videos is very challenging, and has got numerous applications in sports evalution, video surveillance, elder/child care, etc. In this research, a model using sparse representation is presented for the human activity detection from the video data. This is done using a linear combination of atoms from a dictionary and a sparse coefficient matrix. The dictionary is created using a Spatio Temporal Interest Points (STIP) algorithm. The Spatio temporal features are extracted for the training video data as well as the testing video data. The K-Singular Value Decomposition (KSVD) algorithm is used for learning dictionaries for the training video dataset. Finally, human action is classified using a minimum threshold residual value of the corresponding action class in the testing video dataset. Experiments are conducted on the KTH dataset which contains a number of actions. The current approach performed well in classifying activities with a success rate of 90%.
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