高效汽车检测的顺序结构

Zhenfeng Zhu, Yao Zhao, Hanqing Lu
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引用次数: 24

摘要

本文基于多线索集成和分层支持向量机,提出了一种复杂户外场景下的高效车辆检测序列架构。在低层次上,首先构建了基于边缘和兴趣点线索的两个新的区域模板,可以在一定程度上用于形成视觉感知的身份,从而以丢失少量真实物体为代价快速拒绝大多数负面非汽车物体。此外,在高层次上,利用全局结构和局部纹理线索来精确表征汽车对象。为了提高一般支持向量机的计算效率,提出了一种基于近似解的两级分层支持向量机。实验结果表明,将全局结构和局部纹理属性相结合的方法能够更好地区分汽车和非汽车目标。最终的高检测性能还得益于两种新颖的低层次视觉线索和分层支持向量机的利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential Architecture for Efficient Car Detection
Based on multi-cue integration and hierarchical SVM, we present a sequential architecture for efficient car detection under complex outdoor scene in this paper. On the low level, two novel area templates based on edge and interest-point cues respectively are first constructed, which can be applied to forming the identities of visual perception to some extent and thus utilized to reject rapidly most of the negative non-car objects at the cost of missing few of the true ones. Moreover on the high level, both global structure and local texture cues are exploited to characterize the car objects precisely. To improve the computational efficiency of general SVM, a solution approximating based two-level hierarchical SVM is proposed. The experimental results show that the integration of global structure and local texture properties provides more powerful ability in discrimination of car objects from non-car ones. The final high detection performance also contributes to the utilizing of two novel low level visual cues and the hierarchical SVM.
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