Large scale sign detection using HOG feature variants

G. Overett, L. Petersson
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引用次数: 80

Abstract

In this paper we present two variant formulations of the well-known Histogram of Oriented Gradients (HOG) features and provide a comparison of these features on a large scale sign detection problem. The aim of this research is to find features capable of driving further improvements atop a preexisting detection framework used commercially to detect traffic signs on the scale of entire national road networks (1000's of kilometres of video). We assume the computationally efficient framework of a cascade of boosted weak classifiers. Rather than comparing features on the general problem of detection we compare their merits in the final stages of a cascaded detection problem where a feature's ability to reduce error is valued more highly than computational efficiency. Results show the benefit of the two new features on a New Zealand speed sign detection problem. We also note the importance of using non-sign training and validation instances taken from the same video data that contains the training and validation positives. This is attributed to the potential for the more powerful HOG features to overfit on specific local patterns which may be present in alternative video data.
基于HOG特征变体的大规模标志检测
在本文中,我们提出了众所周知的直方图定向梯度(HOG)特征的两种变体公式,并在大规模符号检测问题上对这些特征进行了比较。这项研究的目的是在现有的商业检测框架的基础上找到能够推动进一步改进的特征,该框架用于在整个国家道路网络(数千公里的视频)的规模上检测交通标志。我们假设一个由增强弱分类器组成的级联的计算效率框架。我们不是比较一般检测问题上的特征,而是在级联检测问题的最后阶段比较它们的优点,在这个阶段,特征减少错误的能力比计算效率更有价值。结果表明,这两个新功能在新西兰速度标志检测问题上的好处。我们还注意到使用从包含训练和验证阳性的相同视频数据中获取的无符号训练和验证实例的重要性。这是由于更强大的HOG特征可能会过度拟合在替代视频数据中可能存在的特定局部模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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