Application of the Reeb Graph Technique to Vehicle Occupant's Head Detection in Low-resolution Range Images

P. Devarakota, M. Castillo-Franco, R. Ginhoux, B. Mirbach, B. Ottersten
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引用次数: 4

Abstract

In [3], a low-resolution range sensor was investigated for an occupant classification system that distinguish person from child seats or an empty seat. The optimal deployment of vehicle airbags for maximum protection moreover requires information about the occupant's size and position. The detection of occupant's position involves the detection and localization of occupant's head. This is a challenging problem as the approaches based on local shape analysis (in 2D or 3D) alone are not robust enough as other parts of the person's body like shoulders, knee may have similar shapes as the head. This paper discusses and investigate the potential of a Reeb graph approach to describe the topology of vehicle occupants in terms of a skeleton. The essence of the proposed approach is that an occupant sitting in a vehicle has a typical topology which leads to different branches of a Reeb Graph and the possible location of the occupant's head are thus the end points of the Reeb graph. The proposed method is applied on real 3D range images and is compared to Ground truth information. Results show the feasibility of using topological information to identify the position of occupant's head.
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Reeb图技术在低分辨率距离图像中汽车乘员头部检测中的应用
在[3]中,研究了一种低分辨率距离传感器,用于区分儿童座椅或空座的乘员分类系统。此外,为了最大限度地提供保护,车辆安全气囊的最佳部署还需要有关乘员体型和位置的信息。乘员位置检测涉及到对乘员头部的检测和定位。这是一个具有挑战性的问题,因为仅基于局部形状分析(2D或3D)的方法不够健壮,因为人体的其他部位(如肩膀、膝盖)可能与头部形状相似。本文讨论并研究了Reeb图方法在描述车辆乘员的拓扑结构方面的潜力。所提出的方法的本质是,坐在车辆中的乘员具有典型的拓扑结构,该拓扑结构导致Reeb图的不同分支,因此乘员头部的可能位置是Reeb图的端点。将该方法应用于真实的三维距离图像,并与Ground truth信息进行了比较。结果表明,利用拓扑信息识别乘员头部位置是可行的。
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