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An effective learning strategy for cascaded object detection

机译:级联目标检测的有效学习策略

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摘要

To distinguish objects from non-objects in images under computational constraints, a suitable solution is to employ a cascade detector that consists of a sequence of node classifiers with increasing discriminative power. However, among the millions of image patches generated from an input image, only very few contain the searched object. When trained on these highly unbalanced data sets, the node classifiers tend to have poor performance on the minority class. Thus, we propose a learning strategy aimed at maximizing the node classifiers ranking capability rather than their accuracy. We also provide an efficient implementation yielding the same time complexity of the original Viola-Jones cascade training. Experimental results on highly unbalanced real problems show that our approach is both efficient and effective when compared to other node training strategies for skewed classes. (C) 2016 Elsevier Inc. All rights reserved.
机译:为了在计算约束下将图像中的对象与非对象区分开来,合适的解决方案是采用级联检测器,该级联检测器由具有增加判别能力的一系列节点分类器组成。但是,在从输入图像生成的数百万个图像块中,只有极少数包含搜索到的对象。在这些高度不平衡的数据集上进行训练时,节点分类器在少数类上的性能往往较差。因此,我们提出了一种旨在最大化节点分类器排名能力而不是其准确性的学习策略。我们还提供了一种有效的实现方式,产生了与原始Viola-Jones级联训练相同的时间复杂性。针对高度不平衡的实际问题的实验结果表明,与偏节点的其他节点训练策略相比,我们的方法既有效又有效。 (C)2016 Elsevier Inc.保留所有权利。

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