基于形状和运动的红外图像行人检测:一种多传感器方法

B. Fardi, U. Schuenert, G. Wanielik
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引用次数: 47

摘要

这项工作涉及行人的检测和跟踪。调查的重点是方法,它允许对行人的两个重要特征:形状和运动进行精确和详细的描述。由于这种方法的实际应用需要良好的初始化和跟踪,因此开发了一个由远红外相机、激光扫描装置和自我运动传感器组成的多传感器系统。为了处理不同传感器信息的组合,采用了基于卡尔曼滤波的数据融合方法。采用并行卡尔曼滤波方法,建立了一个多传感器/多目标跟踪系统。系统结构结合了直接和反向循环方法,将快速启动函数与更实惠的验证函数相结合。因此,以前已知的半自动图像处理方法在系统中完全自动工作。利用活动轮廓模型对典型人体运动的估计光流进行了分析,并对形状参数进行了分析。在试验车上安装了多传感器/多目标跟踪系统,取得了实际效果,并进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape and motion-based pedestrian detection in infrared images: a multi sensor approach
This work deals with the detection and tracking of pedestrians. The focus of the investigations was on methods, which allow a precise and detailed description of both significant features of pedestrians: shape and motion. Since the practical employment of such methods requires a good initialization and tracking, a multi sensor system was developed consisting of a far infrared camera, a laser scanning device and ego motion sensors. To handle the combination of the information of the different sensors a Kalman filter based data fusion is used. Arranging a set of Kalman filters in parallel, a multi sensor/multi target tracking system was created. The system structure combines a straightforward with a backward loop methodology to combine fast initiation functions with more affordable verification functions. Therefore formerly known semiautomatic image processing methods work fully automatically in the system. The analysis of the estimated optical flow regarding the typical human motion as well as the analysis of shape parameters using active contour models is performed. The multi sensor/multi target tracking system is installed on a test vehicle to obtain practical results, which are also discussed in this article.
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