行人检测代表性模板集生成方法

Pei Wu, Xianbin Cao, Yan Xu, Hong Qiao
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引用次数: 2

摘要

模板匹配是行人检测的有效方法。为了实现实时、准确的检测,由于行人形状种类繁多,如何获得合适的代表性模板集仍然是一个悬而未决的问题。针对基于模板匹配的行人检测系统,提出了一种具有代表性的模板生成方法。该方法基于非线性流形学习和聚类,可以从大量的原始模板中生成合适的代表性模板子集。首先,提出了一种改进的非线性降维方法,将原始模板映射到低维嵌入空间中的特征向量(点);其次,通过聚类在嵌入空间中生成代表性点;最后,将新生成的点从嵌入空间反向映射到视觉输入空间,合成相应的代表性模板集。实验结果表明,模板生成方法在不影响检测性能的前提下加快了检测速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Representative Template Set Generation Method for Pedestrian Detection
Template matching is an effective approach for pedestrian detection. In order to achieve real-time and accurate detection, how to obtain a suitable representative template set is still an open problem due to the large variety of pedestrian shape. This paper introduced a representative template generation method for a template matching based pedestrian detection system (PDS). Based on nonlinear manifold learning and clustering, the new approach can generate a suitable representative template subset from a large amount of original templates. First, an improved nonlinear dimensionality reduction method was proposed to map original templates to feature vectors (points) in the low-dimensional embedding space; second, representative points were generated in the embedding space by clustering; at the end, corresponding representative template set were synthesized by mapping inversely the newly generated points from the embedding space to the visual input space.The experimental results showed that the template generation method speeds up detection procedure without considerable loss of performance.
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