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Strategies of Dictionary Usages for Sparse Representations for Pedestrian Classification

机译:行人分类的稀疏表示的字典用法策略

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Sparse representations and methodologies are currently receiving much interest due to their benefits in image processing and classification tasks. Despite the progress achieved over the last years, there are still many open issues, in particular for applications such as object detection which have been much less addressed from the sparse-representation point of view. This work explores several strategies for dictionary usages and study their relative computational and discriminative values in the binary problem of pedestrian classification. Specifically, we explore whether both class-specific dictionaries are really required, or just any of them can be successfully used and, in case that both dictionaries are required, which is the better way to compute the sparse representation from them. Results reveal that different strategies offer different computational-classification trade-offs, and while dual-dictionary strategies may offer slightly better performance than single-dictionary strategies, one of the most interesting findings is that just one class (even the negative, non-pedestrian class) suffices to train a dictionary to be able to discriminate pedestrian from background images.
机译:稀疏表示和方法由于其在图像处理和分类任务中的优势而受到了广泛的关注。尽管在过去的几年中取得了进步,但仍然存在许多未解决的问题,特别是对于对象检测等应用程序,从稀疏表示的角度来看,这些问题很少得到解决。这项工作探索了几种字典用法的策略,并研究了行人分类二元问题中它们的相对计算值和判别值。具体来说,我们探讨了是否确实需要两个特定于类的字典,或者仅两个类都可以成功使用,并且在需要两个字典的情况下,这是从它们中计算稀疏表示的更好方法。结果表明,不同的策略提供了不同的计算分类权衡,而双字典策略可能比单字典策略提供更好的性能,但最有趣的发现之一是只有一类(甚至是消极的,非行人的)班级)就足以训练字典,以便能够将行人与背景图片区分开来。

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