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Cascade-Dispatched Classifier Ensemble and Regressor for Pedestrian Detection

机译:级联派遣的分类器集合和行人检测的回归

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This paper focuses on ensemble classifiers for pedestrian detection. Ensemble learning is widely used in this field for context disambiguation or via a cascade-of-rejectors. However, applying the typical, parallel, instance of it remains disappointing in most cases. Our work studies the mechanisms that hinder the efficiency of ensemble classifiers for pedestrian detection, and, based on our findings, we introduce a structured classifier ensemble that improves performance without loss of speed. We also harness this principle for context disambiguation via the application of a regressor to pedestrian detection. Experiments on the INRIA and Caltech-USA datasets validate the approach.
机译:本文重点介绍了用于行人检测的集合分类器。集合学习广泛用于此字段中,以获取上下文消歧或通过Quadade-exclys。然而,在大多数情况下,应用典型的并行情况,它仍然令人失望。我们的工作研究了阻碍了行人检测的合奏分类器效率的机制,以及根据我们的研究结果,我们介绍了一个结构化的分类器集合,可以提高性能而不会损失速度。我们还通过应用退币对行人检测来利用这种原则。 inria和Caltech-USA数据集的实验验证了该方法。

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