基于自阴影和结构边缘特征的视觉前车检测

Aditya R. Kanitkar, B. Bharti, U. N. Hivarkar
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引用次数: 7

摘要

提出了一种新颖的道路实时前车检测系统。车辆检测首先使用基于知识的候选生成,然后使用基于外观的验证。呈现在车辆底盘下方的主要阴影(即自阴影)用于在图像中生成候选区域。与其他方法中使用的投射阴影相比,仅使用自阴影提供了更好的结果和鲁棒性。由于车辆类具有较大的类内方差,因此需要具有归一化样本的大型训练数据集来进行准确的分类器设计。提出了无论外形如何,车辆轮廓的确定性结构保持不变。因此,使用基于边缘特征的结构分析可以用于分类。提出一个较小的训练数据集,不一定是规范化的,就足以使用这种分析获得良好的分类结果。这降低了系统设计的复杂性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision based preceding vehicle detection using self shadows and structural edge features
An innovative approach for on-road real-time preceding vehicle detection system is presented in this paper. Vehicle detection is performed by using knowledge based candidate generation followed by appearance based verification. The primary shadow present underneath the vehicle chassis i.e. self shadow is used to generate candidate regions in the image. The use of only self shadow provides improved results and robustness as compared to cast shadows utilized in other approaches. The vehicle class has large intra-class variance due to which a large training dataset with normalized samples is needed for accurate classifier design. It is proposed that the deterministic structure of the contour of vehicles remains same irrespective of its appearance. Hence, structural analysis using the edge based features can be used for classification. It is proposed that a smaller training data-set which is not necessarily normalized is sufficient for good classification results using this analysis. This leads to reduced complexity in system design
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