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Robust pedestrian detection under deformation using simple boosted features

机译:使用简单的增强功能在变形下进行可靠的行人检测

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摘要

Many existing methods for pedestrian detection have the limited detection performance in case of deformation such as large appearance variations. To overcome this limitation, we propose a novel pedestrian detection method that uses two low-level boosted features to detect pedestrians despite the presence of deformations. One is a boosted max feature (BMF) that uses a max operation to aggregate a selected pair of features to make them invariant to deformation. Another is a boosted difference feature (BDF) that uses a difference operation between a selected pair of features to improve localization accuracy of pedestrian detection. We incorporate a spatial pyramid pool method that uses multiple sized blocks to increase the richness of boosted features in a local region and use a RealBoost method to train a tree-structured classifier for the proposed pedestrian detection method. We also apply a region-of-interest method to the detected results to remove false positives effectively. Our proposed detector achieved log-average miss rates of 19.95%, 10.39%, 36.12%, and 39.57% on the Caltech-USA, INRIA, ETH, and TUD-Brussels dataset, respectively, which are the lowest among those of all state-of-the-art pedestrian detectors. (C) 2017 Elsevier B.V. All rights reserved.
机译:许多现有的行人检测方法在诸如大的外观变化之类的变形的情况下具有有限的检测性能。为克服此限制,我们提出了一种新颖的行人检测方法,该方法使用两个低级增强功能来检测行人,尽管存在变形。一种是增强型最大特征(BMF),它使用最大运算来聚合选定的一对特征,使它们对变形不变。另一个是增强差异特征(BDF),它使用选定的一对特征之间的差异运算来提高行人检测的定位精度。我们并入了一个空间金字塔池方法,该方法使用多个大小的块来增加局部区域中增强特征的丰富度,并使用RealBoost方法来训练树结构分类器以用于拟议的行人检测方法。我们还将感兴趣区域方法应用于检测到的结果,以有效消除误报。我们提议的检测器在美国加州理工学院,INRIA,ETH和TUD-布鲁塞尔数据集上分别实现了19.95%,10.39%,36.12%和39.57%的对数平均未命中率,在所有州中最低,最先进的行人探测器。 (C)2017 Elsevier B.V.保留所有权利。

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