SVM-based pedestrian recognition on near-infrared images

L. Andreone, F. Bellotti, A. De Gloria, R. Lauletta
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引用次数: 24

Abstract

This paper describes the algorithms we developed for a new automotive night vision system for pedestrian detection based on near infrared (NIR) illuminators and sensors. The system applies in the night domain the SVM technique, which has already been successfully implemented in day-light applications, in this project we have developed optimizations in order to meet accuracy and time performance requirement for in-vehicle deployments. In particular, we present a novel pre-SVM processing technique, which performs pixel-level and multi-resolution analysis in order to discard portions of the frame that are not likely to contain pedestrians. This procedure allows exploiting the SVM as a very accurate classifier focused on the most critical cases.
基于svm的近红外图像行人识别
本文介绍了基于近红外光源和传感器的新型汽车夜视行人检测系统的算法。该系统将支持向量机技术应用于夜间领域,该技术已在白天应用中成功实现,在本项目中,我们对其进行了优化,以满足车载部署的精度和时间性能要求。特别是,我们提出了一种新的预支持向量机处理技术,它执行像素级和多分辨率分析,以丢弃不太可能包含行人的帧部分。这个过程允许利用SVM作为一个非常准确的分类器,专注于最关键的情况。
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