3D pooling on local space-time features for human action recognition

Najme Hadibarhaghtalab, Z. Azimifar
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Abstract

Successful approaches use local space-time features for human action recognition task including hand designed features or learned features. However these methods need a wise technique to encode local features to make a global representation for video. For this, some methods use K-means vector quantization to histogram each video as a bag of word. Pooling is a way used for global representation of an image. This method pools the local image feature over some image neighborhood. In this paper we extend pooling method called 3D pooling for global representation of video. 3D pooling represents each video by concatenating pooled feature vectors achieved from 8 equal regions of video. We also applied stacked convolutional ISA as local feature extractor. We evaluated our method on KTH data set and got our best result using max pooling. It improves the performance of highly demanded earlier methods.
基于局部时空特征的三维池化人体动作识别
成功的方法利用局部时空特征来完成人类动作识别任务,包括手工设计特征或学习特征。然而,这些方法需要一种明智的技术来对局部特征进行编码,以便对视频进行全局表示。为此,一些方法使用k均值矢量量化来将每个视频作为一个词包进行直方图。池化是一种用于图像全局表示的方法。该方法将局部图像特征集中在一些图像邻域上。本文将池化方法扩展为3D池化,用于视频的全局表示。3D池化通过连接从8个相等的视频区域获得的池化特征向量来表示每个视频。我们还应用了堆叠卷积ISA作为局部特征提取器。我们在KTH数据集上评估了我们的方法,并使用max pooling获得了最好的结果。它提高了高要求的早期方法的性能。
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