基于指尖检测的手势识别

G. Meng, Mei Wang
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引用次数: 7

摘要

为了提高基于胡氏矩特征的手势识别精度,提出了一种基于指尖结构检测的手势识别算法。首先,设计几何特征,即皮肤区域面积和图像面积,在色调、饱和度和亮度空间上将皮肤区域从背景中分割出来;其次,进行凸轮点检测,对轮廓逼近后的指尖进行检测;然后,构建7维特征向量。最后,利用距离推进准则对手势进行识别。与胡氏矩特征识别相比,该识别算法的识别准确率提高了2.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand Gesture Recognition Based on Fingertip Detection
To improve the hand gesture recognition accuracy based on Hu moment features, a new recognition algorithm was developed based on the fingertip structure detection. Firstly, the geometric features, the areas of skin region and the image, were designed to segment the skin region from the background in space of hue, saturation and value of brightness. Secondly, the cam point inspections were carried out and the fingertip was detected after the contour approximation. After that, the 7-dimensional feature vector was built. Finally, the distance marching criterion was utilized to recognize the hand gesture. Compared with the Hu moment feature recognition, the developed recognition algorithm improved the recognition accuracy by 2.7%.
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