Recurring the Transformer for Video Action Recognition

Jie Yang, Xingbo Dong, Liujun Liu, Chaofu Zhang, Jiajun Shen, Dahai Yu
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引用次数: 34

Abstract

Existing video understanding approaches, such as 3D convolutional neural networks and Transformer-Based methods, usually process the videos in a clip-wise manner; hence huge GPU memory is needed and fixed-length video clips are usually required. To alleviate those issues, we introduce a novel Recurrent Vision Transformer (RViT) framework based on spatial-temporal representation learning to achieve the video action recognition task. Specifically, the proposed RViT is equipped with an attention gate to build interaction between current frame input and previous hidden state, thus aggregating the global level interframe features through the hidden state temporally. RViT is executed recurrently to process a video by giving the current frame and previous hidden state. The RViT can capture both spatial and temporal features because of the attention gate and recurrent execution. Besides, the proposed RViT can work on variant-length video clips properly without requiring large GPU memory thanks to the frame by frame processing flow. Our experiment results demonstrate that RViT can achieve state-of-the-art performance on various datasets for the video recognition task. Specifically, RViT can achieve a top-1 accuracy of 81.5% on Kinetics-400, 92.31% on Jester, 67.9% on Something-Something-V2, and an mAP accuracy of 66.1% on Charades.
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用于视频动作识别的循环变压器
现有的视频理解方法,如3D卷积神经网络和基于变压器的方法,通常以剪辑方式处理视频;因此需要巨大的GPU内存,通常需要固定长度的视频剪辑。为了解决这些问题,我们引入了一种基于时空表示学习的循环视觉变换(RViT)框架来实现视频动作识别任务。具体而言,该RViT通过注意门来构建当前帧输入与前一个隐藏状态之间的交互,从而通过隐藏状态暂时聚合全局级帧间特征。RViT通过给出当前帧和之前的隐藏状态来循环执行以处理视频。由于注意门和重复执行,RViT可以同时捕捉空间和时间特征。此外,由于采用逐帧处理流程,所提出的RViT可以在不需要大量GPU内存的情况下正确处理变长视频剪辑。我们的实验结果表明,RViT可以在各种数据集上实现最先进的视频识别性能。具体来说,RViT在Kinetics-400上的准确率为81.5%,在Jester上的准确率为92.31%,在Something-Something-V2上的准确率为67.9%,在Charades上的mAP准确率为66.1%。
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