Combining Image Inductive Bias and Self-Attention Mechanism for Accurate Isolated Sign Language Recognition

Jieshun You, Zekai He, Shun-Ping Lin, Ling Chen
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Abstract

Isolated sign language recognition has been an important part of breaking down communication bottlenecks for deaf-mute and others. While facing this problem, the purpose of this paper is to classify American isolated sign language video by modeling pose, hands and face keypoints representation. Specifically, this paper introduces a novel framework whose main components are the altered Dense Predictive Coding (DPC) pre-trained model and the Encoder pre-trained model. The DPC model is trained using self-supervised learning to obtain representation of pose and hands keypoints. The Encoder model is trained using supervised learning to obtain representation of face keypoints. Combining the altered DPC model with image inductive biases and the Encoder model with a self-attention mechanism, the final combined model achieves 0.81 on the test set of the ISAL dataset, outperforming the current open-source solution by a significant margin.
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结合图像归纳偏差和自注意机制的孤立手语准确识别
孤立的手语识别一直是打破聋哑人和其他人沟通瓶颈的重要组成部分。面对这一问题,本文的目的是通过建模姿态、手部和面部关键点表示来对美国孤立手语视频进行分类。具体来说,本文介绍了一个新的框架,其主要组成部分是改进的密集预测编码(DPC)预训练模型和编码器预训练模型。使用自监督学习对DPC模型进行训练,以获得姿态和手部关键点的表示。编码器模型使用监督学习进行训练,以获得人脸关键点的表示。结合带有图像归纳偏差的改进DPC模型和带有自注意机制的Encoder模型,最终的组合模型在ISAL数据集的测试集上达到0.81,显著优于目前的开源解决方案。
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