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Enhanced Action Recognition Using Multiple Stream Deep Learning with Optical Flow and Weighted Sum

机译:使用多流深度学习的增强动作识别与光流和加权和加权

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摘要

Various action recognition approaches have recently been proposed with the aid of three-dimensional (3D) convolution and a multiple stream structure. However, existing methods are sensitive to background and optical flow noise, which prevents from learning the main object in a video frame. Furthermore, they cannot reflect the accuracy of each stream in the process of combining multiple streams. In this paper, we present a novel action recognition method that improves the existing method using optical flow and a multi-stream structure. The proposed method consists of two parts: (i) optical flow enhancement process using image segmentation and (ii) score fusion process by applying weighted sum of the accuracy. The enhancement process can help the network to efficiently analyze the flow information of the main object in the optical flow frame, thereby improving accuracy. A different accuracy of each stream can be reflected to the fused score while using the proposed score fusion method. We achieved an accuracy of 98.2% on UCF-101 and 82.4% on HMDB-51. The proposed method outperformed many state-of-the-art methods without changing the network structure and it is expected to be easily applied to other networks.
机译:最近借助三维(3D)卷积和多个流结构提出了各种动作识别方法。然而,现有方法对背景和光学流噪声敏感,这可以防止在视频帧中学习主要对象。此外,它们不能反映在组合多个流的过程中的每个流的准确性。在本文中,我们提出了一种新的动作识别方法,其使用光流和多流结构来改善现有方法。所提出的方法包括两个部分:(i)光学流量增强过程,使用图像分割和(ii)通过应用加权总和来进行融合过程。增强过程可以帮助网络有效地分析光学流量框架中主要物体的流量信息,从而提高精度。在使用所提出的评分融合方法的同时,每个流的不同精度可以反映在融合分数。我们在HMDB-51上实现了UCF-101和82.4%的98.2%的准确性。该方法的表现优于许多最先进的方法而不改变网络结构,并且期望容易地应用于其他网络。

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