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Evaluation of Local Spatio-temporal Salient Feature Detectors for Human Action Recognition

机译:评估人类动作识别的本地时空显着特征检测器

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Local spatio-temporal salient features are used for a sparse and compact representation of video contents in many computer vision tasks such as human action recognition. To localize these features (i.e., key point detection), existing methods perform either symmetric or asymmetric multi-resolution temporal filtering and use a structural or a motion saliency criteria. In a common discriminative framework for action classification, different saliency criteria of the structured-based detectors and different temporal filters of the motion-based detectors are compared. We have two main observations. (1) The motion-based detectors localize features which are more effective than those of structured-based detectors. (2) The salient motion features detected using an asymmetric temporal filtering performbetter than all other sparse salient detectors and dense sampling. Based on these two observations, we recommend the use of asymmetric motion features for effective sparse video content representation and action recognition
机译:局部时空显着特征用于在许多计算机视觉任务(如人类动作识别)中稀疏紧凑地表示视频内容。为了定位这些特征(即关键点检测),现有方法执行对称或非对称多分辨率时间滤波,并使用结构或运动显着性标准。在用于动作分类的通用判别框架中,比较了基于结构的检测器的不同显着性标准和基于运动的检测器的不同时间滤波器。我们有两个主要观察结果。 (1)基于运动的检测器可以定位比基于结构的检测器更有效的特征。 (2)使用非对称时间滤波检测到的显着运动特征比所有其他稀疏显着检测器和密集采样要好。基于这两个观察,我们建议使用非对称运动特征来有效地稀疏表示视频内容并进行动作识别

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