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A framework for recognizing and segmenting sign language gestures from continuous video sequence using boosted learning algorithm

机译:使用升级学习算法从连续视频序列识别和分割手语手势的框架

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The problem of vision-based sign language recognition, which is used to translate signs to English sentence, is addressed in this paper. A fully automatic system to recognize signs that starts with breaking up signs into manageable subunits is proposed. A framework for segmenting and tracking skin objects from signing videos is described. A boosting algorithm to learn a subset of weak classifiers for extracted features to combine them into a strong classifier for each sign is then applied. A joint learning strategy to share subunits across sign classes is adopted, which leads to a more efficient classification of sign gestures. Experimental results shown by the system demonstrate that the proposed approach is promising to build an effective and scalable system on real-world hand gesture recognition from continuous video sequences.
机译:本文解决了基于视觉的标志语言识别的问题,用于将迹象翻译为英语句子。提出了一个完全自动系统,识别以分解符号的迹象,以管理亚基。描述了用于从签名视频进行分割和跟踪皮肤对象的框架。然后,促进算法,用于学习提取的特征的弱分类器子集,然后应用将它们组合成每个符号的强分类器。采用跨签署课程分享亚基的联合学习策略,从而导致签署手势的更有效分类。该系统所示的实验结果表明,该方法在具有从连续视频序列的实际手势识别上建立有效和可扩展的系统。

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