基于时空融合的卷积序列学习唇读算法

Xingxuan Zhang, Feng Cheng, Shilin Wang
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引用次数: 56

摘要

目前最先进的唇读方法是基于为自然机器翻译和音频语音识别而设计的序列到序列架构。因此,这些方法不能充分利用唇的动力学特性,造成两个主要的缺点。首先,对于唇形图像到视觉的映射至关重要的短时时间依赖性没有得到额外的关注。其次,由于使用全局平均池化(GAP),现有序列模型中局部空间信息被丢弃。为了很好地解决这些问题,我们提出了一个时间焦点块来充分描述短程依赖关系,一个时空融合模块(STFM)来保持局部空间信息并降低特征维数。实验结果表明,我们的方法使用更少的训练数据和更轻的卷积特征提取器,达到了与最先进的方法相当的性能。由于卷积结构和局部自注意机制,训练时间减少了12天。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Fusion Based Convolutional Sequence Learning for Lip Reading
Current state-of-the-art approaches for lip reading are based on sequence-to-sequence architectures that are designed for natural machine translation and audio speech recognition. Hence, these methods do not fully exploit the characteristics of the lip dynamics, causing two main drawbacks. First, the short-range temporal dependencies, which are critical to the mapping from lip images to visemes, receives no extra attention. Second, local spatial information is discarded in the existing sequence models due to the use of global average pooling (GAP). To well solve these drawbacks, we propose a Temporal Focal block to sufficiently describe short-range dependencies and a Spatio-Temporal Fusion Module (STFM) to maintain the local spatial information and to reduce the feature dimensions as well. From the experiment results, it is demonstrated that our method achieves comparable performance with the state-of-the-art approach using much less training data and much lighter Convolutional Feature Extractor. The training time is reduced by 12 days due to the convolutional structure and the local self-attention mechanism.
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