3D vision technology for occupant detection and classification

P. Devarakota, B. Mirbach, M. Castillo-Franco, B. Ottersten
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引用次数: 5

Abstract

This paper describes a 3D vision system based on a new 3D sensor technology for the detection and classification of occupants in a car. New generation of so-called "smart airbags" require the information about the occupancy type and position of the occupant. This information allows a distinct control of the airbag inflation. In order to reduce the risk of injuries due to airbag deployment, the airbag can be suppressed completely in case of a child seat oriented in reward direction. In this paper, we propose a 3D vision system based on a 3D optical time-of-flight (TOF) sensor, for the detection and classification of the occupancy on the passenger seat. Geometrical shape features are extracted from the 3D image sequences. Polynomial classifier is considered for the classification task. A comparison of classifier performance with principle components (eigen-images) is presented. This paper also discusses the robustness of the features with variation of the data. The full scale tests have been conducted on a wide range of realistic situations (adults/children/child seats etc.) which may occur in a vehicle.
用于乘员检测和分类的3D视觉技术
本文介绍了一种基于新型三维传感器技术的汽车乘员三维视觉检测与分类系统。新一代所谓的“智能安全气囊”需要有关乘员的占用类型和位置的信息。这个信息允许一个明显的控制安全气囊膨胀。为了减少由于安全气囊展开造成的伤害风险,在儿童座椅朝向奖励方向的情况下,安全气囊可以被完全抑制。本文提出了一种基于三维光学飞行时间(TOF)传感器的三维视觉系统,用于对乘客座位上的占用情况进行检测和分类。从三维图像序列中提取几何形状特征。在分类任务中考虑多项式分类器。对分类器与主成分(特征图像)的性能进行了比较。本文还讨论了特征随数据变化的鲁棒性。全尺寸测试是在车辆中可能发生的各种现实情况(成人/儿童/儿童座椅等)下进行的。
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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