利用原始边缘检测静止图像中人体的可能区域

Trung Tran Ngoc, Phong Vo Dinh, Bac Le Hoai
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引用次数: 2

摘要

人体检测仍然是计算机视觉的一个挑战,因为高度关节的身体姿势,视点的变化,不同的照明条件和杂乱的背景。由于这些困难,大多数以前的出版物通常只关注静止图像中的低关节姿势,例如行人。本文提出了一种利用原始边缘从静止图像中检测人体区域的新方法。没有详尽地检测图像中出现的所有人;不过;我们的方法可以在许多类型的图像上表现出色,特别是具有各种姿势的运动图像。利用边界和兴趣点的特征,结合图像滤波、图像分割、边缘检测等多种图像处理技术,代替滑动窗口式的检测方法,采用k -均值算法和概率算法选择人体区域。特别是,我们不需要一个训练阶段。尽管在检测领域上与以往的作品目的不同,但在一定程度上,我们也试图与典型作品竞争。两个具有挑战性的数据集涉及到发现有趣的事实需要关注设计提出的方法来检测人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Probable Regions of Humans in Still Images Using Raw Edges
Human detection remains a challenge in computer vision due to highly articulated body postures, viewpoints changes, varying illumination conditions and cluttered background. Because of these difficulties, most of the previous publications often focus only on low-articulated postures, e.g. pedestrians, in still images. In this paper, we propose a new method to detect a human region from still images using raw edges. Not exhaustively detecting all of people occurrences in images; nevertheless; our approach can perform significantly on many types of images, typically, sports images with various poses. Instead of sliding window-style approaches for detecting, we rely on characteristics of boundaries and interest points by combining several image-processing techniques such as image filter, image segmentation, edge detection…Afterward, we use K-mean algorithm and probability for choosing a human region. Especially, we do not need a training phase. Despite not being the same purpose on detecting domain to previous works, in certain degrees, we also try to compete to typical works. Two challenging datasets are involved in discovering interesting facts needed to be concerned when designing proposed method for detecting people.
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