Cascaded temporal spatial features for video action recognition

Tingzhao Yu, Huxiang Gu, Lingfeng Wang, Shiming Xiang, Chunhong Pan
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引用次数: 9

Abstract

Extracting spatial-temporal descriptors is a challenging task for video-based human action recognition. We decouple the 3D volume of video frames directly into a cascaded temporal spatial domain via a new convolutional architecture. The motivation behind this design is to achieve deep nonlinear feature representations with reduced network parameters. First, a 1D temporal network with shared parameters is first constructed to map the video sequences along the time axis into feature maps in temporal domain. These feature maps are then organized into channels like those of RGB image (named as Motion Image here for abbreviation), which is desired to preserve both temporal and spatial information. Second, the Motion Image is regarded as the input of the latter cascaded 2D spatial network. With the combination of the 1D temporal network and the 2D spatial network together, the size of whole network parameters is largely reduced. Benefiting from the Motion Image, our network is an end-to-end system for the task of action recognition, which can be trained with the classical algorithm of back propagation. Quantities of comparative experiments on two benchmark datasets demonstrate the effectiveness of our new architecture.
视频动作识别的级联时空特征
在基于视频的人体动作识别中,提取时空描述符是一项具有挑战性的任务。我们通过一种新的卷积架构将视频帧的3D体积直接解耦到级联的时间空间域中。这种设计背后的动机是通过减少网络参数来实现深度非线性特征表示。首先,构建具有共享参数的一维时间网络,将视频序列沿时间轴映射为时域特征映射;然后将这些特征映射组织到像RGB图像(此处简称为Motion image)那样的通道中,这样可以同时保存时间和空间信息。其次,将运动图像作为后级联二维空间网络的输入。将一维时间网络与二维空间网络相结合,大大减小了整个网络参数的大小。得益于运动图像,我们的网络是一个端到端的动作识别系统,可以用经典的反向传播算法进行训练。在两个基准数据集上的大量对比实验证明了我们的新架构的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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