连续手语识别的自互蒸馏学习

Aiming Hao, Yuecong Min, Xilin Chen
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引用次数: 45

摘要

近年来,深度学习使基于视频的连续手语识别(CSLR)取得了重大进展。目前,典型的CSLR网络组合包括关注空间和短时信息的视觉模块和关注长时信息的上下文模块,并采用连接时间分类(Connectionist Temporal Classification, CTC)损失对网络进行训练。然而,由于链式规则在反向传播中的局限性,视觉模块难以调整以寻求最优的视觉特征。因此,它强制上下文模块只关注上下文信息优化,而不是平衡有效的视觉和上下文信息。在本文中,我们提出了一种自互知识蒸馏(SMKD)方法,该方法强制可视化和上下文模块关注短期和长期信息,同时增强了两个模块的辨别能力。具体而言,视觉模块和上下文模块共享其相应分类器的权重,并同时使用CTC损失进行训练。此外,脉冲现象广泛存在于CTC损耗中。虽然它可以帮助我们选择光泽的几个关键帧,但它确实会在光泽中丢弃其他帧,并使视觉特征在早期饱和。提出了一种光泽度分割方法,以减轻视觉模块中的尖峰现象和降低饱和度。我们在两个CSLR基准上进行了实验:PHOENIX14和PHOENIX14- t。实验结果证明了SMKD算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Mutual Distillation Learning for Continuous Sign Language Recognition
In recent years, deep learning moves video-based Continuous Sign Language Recognition (CSLR) significantly forward. Currently, a typical network combination for CSLR includes a visual module, which focuses on spatial and short-temporal information, followed by a contextual module, which focuses on long-temporal information, and the Connectionist Temporal Classification (CTC) loss is adopted to train the network. However, due to the limitation of chain rules in back-propagation, the visual module is hard to adjust for seeking optimized visual features. As a result, it enforces that the contextual module focuses on contextual information optimization only rather than balancing efficient visual and contextual information. In this paper, we propose a Self-Mutual Knowledge Distillation (SMKD) method, which enforces the visual and contextual modules to focus on short-term and long-term information and enhances the discriminative power of both modules simultaneously. Specifically, the visual and contextual modules share the weights of their corresponding classifiers, and train with CTC loss simultaneously. Moreover, the spike phenomenon widely exists with CTC loss. Although it can help us choose a few of the key frames of a gloss, it does drop other frames in a gloss and makes the visual feature saturation in the early stage. A gloss segmentation is developed to relieve the spike phenomenon and decrease saturation in the visual module. We conduct experiments on two CSLR bench-marks: PHOENIX14 and PHOENIX14-T. Experimental results demonstrate the effectiveness of the SMKD.
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