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Asymmetric Totally-Corrective Boosting for Real-Time Object Detection

机译:用于实时目标检测的非对称全校正增强

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Real-time object detection is one of the core problems in computer vision. The cascade boosting framework proposed by Viola and Jones has become the standard for this problem. In this framework, the learning goal for each node is asymmetric, which is required to achieve a high detection rate and a moderate false positive rate. We develop new boosting algorithms to address this asymmetric learning problem. We show that our methods explicitly optimize asymmetric loss objectives in a totally corrective fashion. The methods are totally corrective in the sense that the coefficients of all selected weak classifiers are updated at each iteration. In contract, conventional boosting like AdaBoost is stage-wise in that only the current weak classifier's coefficient is updated. At the heart of the totally corrective boosting is the column generation technique. Experiments on face detection show that our methods outperform the state-of-the-art asymmetric boosting methods.
机译:实时目标检测是计算机视觉中的核心问题之一。 Viola和Jones提出的级联增强框架已成为解决此问题的标准。在此框架中,每个节点的学习目标是不对称的,这是实现高检测率和中等误报率所必需的。我们开发了新的提升算法来解决此不对称学习问题。我们表明,我们的方法以完全纠正的方式显式优化了非对称损耗目标。在每次迭代中更新所有选定弱分类器的系数的意义上,这些方法是完全正确的。合同中,像AdaBoost这样的常规增强是阶段性的,因为仅更新当前弱分类器的系数。完全纠正性提高的核心是色谱柱生成技术。面部检测实验表明,我们的方法优于最新的非对称增强方法。

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