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Video spatiotemporal mapping for human action recognition by convolutional neural network

机译:卷积神经网络用于人动作识别的视频时空映射

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In this paper, a 2D representation of a video clip called video spatiotemporal map (VSTM) is presented. VSTM is a compact representation of a video clip which incorporates its spatial and temporal properties. It is created by vertical concatenation of feature vectors generated from subsequent frames. The feature vector corresponding to each frame is generated by applying wavelet transform to that frame (or its subtraction from the subsequent frame) and computing vertical and horizontal projection of quantized coefficients of some specific wavelet subbands. VSTM enables convolutional neural networks (CNNs) to process a video clip for human action recognition (HAR). The proposed approach benefits from power of CNNs to analyze visual patterns and attempts to overcome some CNN challenges such as variable video length problem and lack of training data that leads to over-fitting. VSTM presents a sequence of frames to CNN without imposing any additional computational cost to the CNN learning algorithm. The experimental results of the proposed method on the KTH, Weizmann, and UCF Sports HAR benchmark datasets have shown the supremacy of the proposed method compared with the state-of-the-art methods that used CNN to solve HAR problem.
机译:在本文中,提出了视频剪辑的2D表示,称为视频时空图(VSTM)。 VSTM是视频剪辑的紧凑表示,其中包含了其空间和时间特性。它是通过对后续帧生成的特征向量进行垂直串联而创建的。通过将小波变换应用于该帧(或其从后续帧中减去)并计算某些特定小波子带的量化系数的垂直和水平投影,可以生成与每个帧相对应的特征向量。 VSTM支持卷积神经网络(CNN)处理用于人类动作识别(HAR)的视频剪辑。所提出的方法得益于CNN分析视觉模式的能力,并试图克服CNN的一些挑战,例如可变视频长度问题和缺乏导致过度拟合的训练数据。 VSTM向CNN展示了一系列帧,而不会给CNN学习算法带来任何额外的计算成本。该方法在KTH,Weizmann和UCF Sports HAR基准数据集上的实验结果表明,与使用CNN解决HAR问题的最新方法相比,该方法具有优越性。

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