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Recognizing American Sign Language Nonmanual Signal Grammar Errors in Continuous Videos

机译:在连续视频中识别美国手语非法信号语法错误

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As part of the development of an educational tool that can help students achieve fluency in American Sign Language (ASL) through independent and interactive practice with immediate feedback, this paper introduces a near real-time system to recognize grammatical errors in continuous signing videos without necessarily identifying the entire sequence of signs. Our system automatically recognizes if a performance of ASL sentences contains grammatical errors made by ASL students. We first recognize the ASL grammatical elements including both manual gestures and nonmanual signals independently from multiple modalities (i.e. hand gestures, facial expressions, and head movements) by 3D-ResNet networks. Then the temporal boundaries of grammatical elements from different modalities are examined to detect ASL grammatical mistakes by using a sliding window-based approach. We have collected a dataset of continuous sign language, ASL-HW-RGBD, covering different aspects of ASL grammars for training and testing. Our system is able to recognize grammatical elements on ASL-HW-RGBD from manual gestures, facial expressions, and head movements and successfully detect 8 ASL grammatical mistakes.
机译:作为一个教育工具的开发的一部分,可以通过立即反馈通过独立和交互式实践帮助学生通过独立和交互式实践实现流利,介绍近实时系统,以识别连续签名视频中的语法错误而不一定识别整个标志序列。我们的系统自动识别ASL句子的性能是否包含由ASL学生制作的语法错误。我们首先识别ASL语法元件,包括由3D-Reset网络独立于多种模式(即手势,面部表情和头部运动的非Manual信号。然后,检查来自不同方式的语法元素的时间边界,以通过使用基于滑动窗口的方法来检测ASL语法错误。我们收集了连续手语的数据集,ASL-HW-RGBD,涵盖ASL语法的不同方面进行培训和测试。我们的系统能够从手动手势,面部表情和头部运动中识别ASL-HW-RGBD上的语法元素,并成功地检测到8个ASL语法错误。

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