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Indian sign language recognition using graph matching on 3D motion captured signs

机译:在3D运动中使用图匹配的印度手语识别功能捕获手势

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摘要

A machine cannot easily understand and interpret three-dimensional (3D) data. In this study, we propose the use of graph matching (GM) to enable 3D motion capture for Indian sign language recognition. The sign classification and recognition problem for interpreting 3D motion signs is considered an adaptive GM (AGM) problem. However, the current models for solving an AGM problem have two major drawbacks. First, spatial matching can be performed on a fixed set of frames with a fixed number of nodes. Second, temporal matching divides the entire 3D dataset into a fixed number of pyramids. The proposed approach solves these problems by employing interframe GM for performing spatial matching and employing multiple intraframe GM for performing temporal matching. To test the proposed model, a 3D sign language dataset is created that involves 200 continuous sentences in the sign language through a motion capture setup with eight cameras.The method is also validated on 3D motion capture benchmark action dataset HDM05 and CMU. We demonstrated that our approach increases the accuracy of recognizing signs in continuous sentences.
机译:机器无法轻松理解和解释三维(3D)数据。在这项研究中,我们建议使用图匹配(GM)来启用3D运动捕获以进行印度手语识别。用于解释3D运动标志的标志分类和识别问题被认为是自适应GM(AGM)问题。然而,当前用于解决AGM问题的模型具有两个主要缺点。首先,可以在具有固定数量节点的固定帧集合上执行空间匹配。其次,时间匹配将整个3D数据集划分为固定数量的金字塔。所提出的方法通过采用帧间GM来执行空间匹配并采用多个帧内GM来执行时间匹配来解决这些问题。为了测试提出的模型,通过3个运动捕捉基准动作数据集HDM05和CMU,通过3D运动捕捉基准测试动作数据集验证了3D手语数据集,该数据集包含200个连续的手语句子。我们证明了我们的方法提高了连续句子中识别符号的准确性。

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