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Handling Occlusions with Franken-Classifiers

机译:使用弗兰肯分类器处理遮挡

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Detecting partially occluded pedestrians is challenging. A common practice to maximize detection quality is to train a set of occlusion-specific classifiers, each for a certain amount and type of occlusion. Since training classifiers is expensive, only a handful are typically trained. We show that by using many occlusion-specific classifiers, we outperform previous approaches on three pedestrian datasets, INRIA, ETH, and Caltech USA. We present a new approach to train such classifiers. By reusing computations among different training stages, 16 occlusion-specific classifiers can be trained at only one tenth the cost of one full training. We show that also test time cost grows sub-linearly.
机译:检测部分被遮挡的行人具有挑战性。使检测质量最大化的常见做法是训练一组特定于遮挡的分类器,每个分类器用于一定数量和类型的遮挡。由于训练分类器很昂贵,因此通常只训练少数几个。我们表明,通过使用许多特定于遮挡的分类器,我们在INRIA,ETH和Caltech USA这三个行人数据集上的表现优于先前的方法。我们提出了一种训练此类分类器的新方法。通过在不同训练阶段之间重用计算,可以仅花费一次完整训练成本的十分之一来训练16个特定于遮挡的分类器。我们证明测试时间成本也呈亚线性增长。

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