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Action Recognition in Compressed Domain Using Residual Information

机译:残余信息在压缩域中的动作识别

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Practically, action recognition using deep learning approaches are slow because of high temporal redundancy and large size of the raw video data. One of the solutions for boosting accuracy is calculating optical flows. Generally, extracting motion features are too time-consuming. Therefore, traditional action recognition methods are not suitable for real time applications. On the other hand, compressed videos are available in many situations especially when using mobile devices. We proposed a method that extracts residuals directly from compressed videos by partially decoding the video and feed them to a deep neural network. In general, exploiting the compressed domain features as available information provides a slight reduction in accuracy while the low complexity of this method makes it appropriate for real time applications. The experimental results on multiple first and third person datasets exhibit that while the proposed method provides low computational complexity, the results are highly competitive with traditional approaches in accuracy.
机译:实际上,由于高度的时间冗余性和原始视频数据的大小,使用深度学习方法进行动作识别的速度很慢。提高精度的解决方案之一是计算光流。通常,提取运动特征太耗时。因此,传统的动作识别方法不适合实时应用。另一方面,在许多情况下,尤其是在使用移动设备时,压缩视频是可用的。我们提出了一种通过对视频进行部分解码来直接从压缩视频中提取残差并将其馈入深度神经网络的方法。通常,将压缩域功能用作可用信息会降低准确性,而此方法的低复杂度使其适合于实时应用。在多个第一人称和第三人称数据集上的实验结果表明,尽管所提出的方法计算复杂度较低,但其结果在准确性上与传统方法相比具有很高的竞争力。

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