使用专用几何描述符的手势识别

Jean-François Collumeau, R. Leconge, B. Emile, H. Laurent
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引用次数: 9

摘要

目前,尽管有无菌保存措施,但仍有很大比例的医院获得性疾病是在手术中传播的。这些规定相当严格,禁止外科医生直接接触非无菌设备。目前通过助理或护士实现间接控制。基于手势的人机界面构成了一种很有前途的方法,可以让外科医生直接控制这些设备。本文介绍了一种基于手轮廓凹凸极值提取的测量值的手描述子。使用专门为此目的创建的9750张图片数据库,比较了三种最先进的描述方法,即Hu矩,以及SIFT和HOG特征。大量的手旋转的影响也研究了独立的每个旋转轴。得到的结果表明HOG特征在我们的数据库中识别手的效果最好,紧随其后的是所提出的描述符。当面对旋转的手时的性能比较表明,我们的描述符对旋转的鲁棒性最强,远远超过其他描述符。
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 using a dedicated geometric descriptor
A high proportion of hospital-acquired diseases are transmitted nowadays during surgery despite existing asepsis preservation measures. These are quite drastic, prohibiting surgeons from interacting directly with non-sterile equipment. Indirect control is presently achieved through an assistant or a nurse. Gesture-based Human-Computer Interfaces constitute a promising approach for giving direct control over such equipment to surgeons. This paper introduces a novel hand descriptor based on measurements extracted from hand contour convex and concave extrema. Using a 9750-picture database created especially for this purpose, it is compared with three state-of-the-art description methods, namely Hu moments, and both SIFT and HOG features. Effects of large amounts of hand rotation are also studied on each rotation axis independently. Obtained results give HOG features as best in recognizing hands from our database, closely followed by the proposed descriptor. Performance comparison when facing rotated hands shows our descriptor as the most robust to rotations, outperforming the other descriptors by a wide margin.
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