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Human Action Recognition Using Temporal Partitioning of activities and Maximum Average Correlation Height Filter

机译:使用活动的时间划分和最大平均相关高度过滤器的人类动作识别

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We proposed a method for Human action Recognition. It is based on the construction of a set of templates for each activity. Each template is constructed based on the Accumulated Motion Image of the Video. Each template contains where motion has occurred in the video. FFT Transform is applied to each template. A 3D Spatiotemporal Volume is generated for each class. A Single action Maximum average Correlation height Filter is generated for each class. The filter is applied to the test video and using the threshold the actions are classified. The experiments are conducted on Weizmann dataset.
机译:我们提出了一种人类动作识别方法。它基于每个活动的一组模板的构建。每个模板都是基于视频的累积运动图像构造的。每个模板都包含视频中发生运动的位置。 FFT转换应用于每个模板。为每个类生成一个3D时空体。将为每个类别生成一个“单动作最大平均相关高度过滤器”。过滤器将应用于测试视频,并使用阈值对动作进行分类。实验在Weizmann数据集上进行。

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