3D Medial Axis Distance for hand detection

Hong Cheng, Haoyang Zhuang, Yanli Ji, Guo Ye, Yang Zhao
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引用次数: 1

Abstract

In this paper, we proposed a Medial Axis Distance (MAD) measure for body part detection with single depth image only. First of all, we extracted the skeleton line of human body based on the detected human body silhouette. Using the space information of pixels on the skeleton line and the silhouette, we determined a human body center point on the skeleton line. Then we proposed the MAD measure which calculated the 3D distance between each pixel of human silhouette to the body center point. The MAD measured the spatial distances from different body parts to the body center, and is capable of distinguishing the limbs and body part on a human body. By doing so, there are two advantages. The proposed MAD measure is capable of detecting human body parts without using any training sample. Moreover, it can work well even under poor illumination. We evaluated the proposed MAD measure for hand detection on the DHG hand gesture database. The experiment results showed that the detection rate of hands reaches 94.2%.
用于手部检测的3D中轴距离
在本文中,我们提出了一种仅用于单深度图像的身体部位检测的中轴距离(MAD)度量。首先,基于检测到的人体轮廓提取人体骨架线;利用骨架线上像素点和轮廓上的空间信息,确定骨架线上的人体中心点。然后,我们提出了计算人体轮廓各像素点到身体中心点的三维距离的MAD测度。MAD测量不同身体部位到身体中心的空间距离,能够区分人体的四肢和身体部位。这样做有两个好处。所提出的MAD方法能够在不使用任何训练样本的情况下检测人体部位。此外,即使在较差的光照下,它也能很好地工作。我们在DHG手势数据库上评估了所提出的手部检测MAD测度。实验结果表明,手的检出率达到94.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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