结合上下文信息的行人识别

Magdalena Szczot, O. Lohlein, Matthias Serfling, G. Palm
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引用次数: 4

摘要

局部分类器常用于汽车行人检测系统。这种系统的缺点是它们只考虑局部图像切割来区分行人类别和背景。在那些假警报与真阳性非常相似的情况下,很难以这种方式解决分类任务。作为一种可能的解决方案,本文提出了一个通用的数学模型,该模型将行人上下文信息纳入分类任务中。我们的方法允许使用任何相关的上下文信息来改进检测结果。这篇文章展示了如何定义可能的上下文提示以及如何将它们组合到上下文分类器中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating contextual information in pedestrian recognition
Local classifiers are often used in automotive pedestrian detection systems. The disadvantage of such systems is that they only regard local image cutouts to discriminate pedestrian class from its background. In those cases where false alarms bear a great resemblance to true positives it is difficult to solve the classification task in that way. As a possible solution this paper presents a general and mathematically founded model which incorporates the pedestrian contextual information in the classification task. Our approach allows the use of any relevant contextual information to improve the detection results. This contribution shows how to define possible contextual hints and how to combine them into a contextual classifier.
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