Joint Multi-Scale Residual and Motion Feature Learning for Action Recognition

Linfeng Yang, Zhixiang Zhu, Chenwu Wang, Pei Wang, Shaobo Hei
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Abstract

For action recognition, two-stream networks consisting of RGB and optical flow has been widely used, showing high recognition accuracy. However, optical flow computation is time-consuming and requires a large amount of storage space, and the recognition efficiency is very low. To alleviate this problem, we propose an Adaptive Multi-Scale Residual (AMSR) module and a Long Short Term Motion Squeeze (LSMS) module, which are inserted into the 2D convolutional neural network to improve the accuracy of action recognition and achieve a balance of accuracy and speed. The AMSR module adaptively fuses multi-scale feature maps to fully utilize the semantic information provided by deep feature maps and the detailed information provided by shallow feature maps. The LSMS module is a learnable lightweight motion feature extractor for learning long-term motion features of adjacent and non-adjacent frames, thus replacing the traditional optical flow and improving the accuracy of action recognition. Experimental results on UCF-101 and HMDB-51 datasets demonstrate that the method proposed in this paper achieves competitive performance compared to state-of-the-art methods with only a small increase in parameters and computational cost.
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联合多尺度残差和运动特征学习用于动作识别
在动作识别方面,由RGB和光流组成的两流网络得到了广泛的应用,具有较高的识别精度。但是,光流计算耗时长,需要大量的存储空间,识别效率很低。为了解决这一问题,我们提出了一个自适应多尺度残差(AMSR)模块和一个长短期运动挤压(LSMS)模块,将其插入到二维卷积神经网络中,以提高动作识别的精度,实现精度和速度的平衡。AMSR模块自适应融合多尺度特征图,充分利用深层特征图提供的语义信息和浅层特征图提供的详细信息。LSMS模块是一种可学习的轻量级运动特征提取器,用于学习相邻帧和非相邻帧的长期运动特征,从而取代传统的光流,提高动作识别的准确性。在UCF-101和HMDB-51数据集上的实验结果表明,本文提出的方法与现有方法相比具有竞争力,且参数和计算成本仅略有增加。
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