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Training a multi-exit cascade with linear asymmetric classification for efficient object detection

机译:培训具有线性不对称分类的多出口级联,以实现有效的物体检测

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Efficient visual object detection is of central interest in computer vision and pattern recognition due to its wide ranges of applications. Viola and Jones' detector has become a de facto framework [1]. In this work, we propose a new method to design a cascade of boosted classifiers for fast object detection, which combines linear asymmetric classification (LAC) into the recent multi-exit cascade structure. Therefore, the proposed method takes advantages of both LAC and the multi-exit cascade. Namely, (1) the multi-exit cascade structure collects all the scores of prior nodes for decision making at the current node, which reduces the loss of decision information; (2) LAC considers the asymmetric nature of the node training. We also show that the multi-exit cascade better meets the assumption of LAC learning than the standard Viola-Jones' cascade, both theoretically and empirically. Experiments confirm that our method outperforms existing methods such as Viola and Jones [1] and Wu et al. [2] on the MIT+CMU test data set.
机译:由于其广泛的应用范围,有效的视觉对象检测对计算机视觉和模式识别具有核心兴趣。中提琴和琼斯的探测器已成为事实上的框架[1]。在这项工作中,我们提出了一种新方法来设计用于快速对象检测的级联分类器的级联,这将线性不对称分类(LAC)与最近的多出口级联结构相结合。因此,所提出的方法采用LAC和多出口级联的优点。即,(1)多出口级联结构收集在当前节点处的决策中的先前节点的所有分数,从而降低了决策信息的丢失; (2)LAC考虑节点培训的不对称性质。我们还表明,多出口级联更好地满足LAC学习的假设,而不是理论上和经验的标准中提琴的级联。实验证实,我们的方法优于现有的现有方法,如中提琴和琼斯[1]和Wu等人。 [2]在MIT + CMU测试数据集上。

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