Evolutionary Optimization ofWavelet Feature Sets for Real-Time Pedestrian Classification

J. Salmen, T. Suttorp, Johann Edelbrunner, C. Igel
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引用次数: 4

Abstract

Computer vision for object detection often relies on complex classifiers and large feature sets to achieve high detection rates. But when real-time constraints have to be met, for example in driver assistance systems, fast classifiers are required. Here we consider the design of a computationally efficient system for pedestrian detection. We propose an evolutionary algorithm for the optimization of a small set of wavelet features, which can be computed very efficiently. These features serve as input to a linear classifier. The classification performance of the optimized system is on par with recently published results obtained with support vector machines on large feature sets, while the computational time is lower by orders of magnitude.
实时行人分类的小波特征集进化优化
计算机视觉的目标检测往往依赖于复杂的分类器和大的特征集来实现高的检测率。但是当必须满足实时限制时,例如在驾驶员辅助系统中,需要快速分类器。在这里,我们考虑设计一个计算效率高的行人检测系统。我们提出了一种进化算法来优化小波特征集,该算法可以非常有效地计算。这些特征作为线性分类器的输入。优化后的系统的分类性能与最近发表的支持向量机在大型特征集上获得的结果相当,而计算时间则降低了几个数量级。
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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