基于局部特征学习和显著区域检测的空地车辆检测

Qinghan Xu, Lizuo Jin, F. Jie, S. Fei
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引用次数: 2

摘要

移动车辆检测对于城市交通监控和战场态势感知具有重要意义。Adaboost等具有级联结构的算法在近十年蓬勃发展,并在实时应用中取得了成功。然而,它们大多在多尺度图像上使用滑动窗口协议,这涉及到大量的计算。因此,它们只适用于简单的功能。本文提出了一种生物学启发的方法。我们通过无监督学习学习基于补丁的特征来进行车辆检测,然后在特征提取后使用视觉显著性步骤。候选区域不是滑动窗口,而是只有当其特征在整个图像上“显著”时才发送给分类器。随着候选区域数量的急剧减少,我们可以利用复杂的特征来提高描述能力。实验结果表明,该方法计算量小,性能好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Air-ground vehicle detection using local feature learning and saliency region detection
Moving vehicle detection is very important for urban traffic surveillance and situational awareness on the battlefield. Algorithms with cascade structure like Adaboost are booming in the recent decade, and successful in realtime application. However, most of them use a sliding window protocol on multi-scale images which involves heavy computing. Therefore, they are only suitable for simple feature. In this paper, a biologically inspired method is proposed. We learn patch-based features for vehicle detection by unsupervised learning, and then employ a visual saliency step after feature extraction. Instead of sliding window, a candidate region is sent to classifier only if its features are “salient” on whole image. As the number of candidate regions decreases dramatically, it allow us to utilize complex feature to increase description ability. Experimental result indicates less computational expense and good performance.
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