基于最大曲率点空间位置的考虑手部局部运动的印度手语动态手势识别

M. Geetha, P. Aswathi
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引用次数: 13

摘要

手语是聋哑人最自然的表达方式。印度手语(ISL)是一种视觉空间语言,通过手、手臂、面部表情和头部/身体姿势提供语言信息。本文提出了一种基于视觉的印度手语动态符号识别方法。提出了一种新的关键帧提取方法,该方法比现有方法的提取精度更高。将全局轨迹的最大曲率点(Maximum Curvature Points, mcp)对应的帧作为关键帧。该方法适应了当不同的人执行相同的手势时可能发生的时空变化。我们还提出了一种基于边界关键最大曲率点空间位置的关键帧形状特征提取方法。与已有的三种方法进行了比较,结果表明该方法具有更好的性能。该方法考虑了局部和全局轨迹信息进行识别。该特征提取方法具有尺度不变性和平移不变性。
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Dynamic gesture recognition of Indian sign language considering local motion of hand using spatial location of Key Maximum Curvature Points
Sign language is the most natural way of expression for the deaf community. Indian Sign Language (ISL) is a visual-spatial language which provides linguistic information using hands, arms, facial expressions, and head/body postures. In this paper we propose a new method for, vision-based recognition of dynamic signs corresponding to Indian Sign Language words. A new method is proposed for key frame extraction which is more accurate than the existing methods. The frames corresponding to the Maximum Curvature Points (MCPs) of the global trajectory are taken as the keyframes. The method accomodates the spatio temporal variability that may occur when different persons perform the same gesture. We are also proposing a new method based on spatial location of the Key Maximum Curvature Points of the boundary for shape feature extraction of key frames. Our method when compared with three other exisiting methods has given better performance. The method has considered the local as well as global trajectory information for recognition. The feature extraction method has proved to be scale invariant and translation invariant.
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