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Multiple human detection in depth images

机译:深度图像中的多人检测

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摘要

Most human detection algorithms in depth images perform well in detecting and tracking the movements of a single human object. However, their performance is rather poor when the person is occluded by other objects or when there are multiple humans present in the scene. In this paper, we propose a novel human detection technique which analyzes the edges in depth image to detect multiple people. The proposed technique detects a human head through a fast template matching algorithm and verifies it through a 3D model fitting technique. The entire human body is extracted from the image by using a simple segmentation scheme comprising a few morphological operators. Our experimental results on three large human detection datasets and the comparison with the state-of-the-art method showed an excellent performance achieving a detection rate of 94.53% with a small false alarm of 0.82%.
机译:深度图像中的大多数人类检测算法在检测和跟踪单个人类对象的运动方面表现良好。但是,当人被其他物体遮挡或场景中存在多个人时,它们的性能会很差。在本文中,我们提出了一种新颖的人体检测技术,该技术可以分析深度图像的边缘以检测多个人。所提出的技术通过快速模板匹配算法检测人的头部,并通过3D模型拟合技术对其进行验证。通过使用包括一些形态学算子的简单分割方案,从图像中提取出整个人体。我们在三个大型人体检测数据集上的实验结果以及与最新方法的比较表明,该系统具有出色的性能,可实现94.53%的检测率,误报率仅为0.82%。

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