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Robust face detection using local CNN and SVM based on kernel combination

机译:使用基于内核组合的本地CNN和SVM进行稳健的人脸检测

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One key challenge of face detection is the large appearance variations due to some real-world factors, such as viewpoint, extreme illuminations and expression changes, which lead to the large intra-class variations and making the detection algorithm is not robust enough. In this paper, we propose a locality sensitive support vector machine using kernel combination (LS-KC-SVM) algorithm to solve the above two problems. First, we employ the locality-sensitive SVM (LSSVM) to construct a local model on each local region, which can handle the classification task easier due to smaller within-class variation. Second, motivated by the idea that local features are more robust compared with global features, we use multiple local CNNs to jointly learn local facial features because of the powerful strength of CNN learning characteristic. In order to use this property of local features effectively, we apply the global and local kernels to the features and introduce the combination kernel to the LSSVM. Extensive experiments demonstrate the robustness and efficiency of our algorithm by comparing it with several popular face detection algorithms on the widely used CMU+MIT dataset and FDDB dataset. (C) 2016 Elsevier B.V. All rights reserved.
机译:面部检测的一个关键挑战是由于某些现实世界的因素(例如视点,极端光照和表情变化)导致的外观变化较大,这会导致类内变化较大,并使检测算法不够鲁棒。在本文中,我们提出了一种使用核组合(LS-KC-SVM)算法的局部敏感支持向量机,以解决上述两个问题。首先,我们使用局部敏感的SVM(LSSVM)在每个局部区域上构建局部模型,由于类内变化较小,该模型可以更轻松地处理分类任务。其次,受局部特征比全局特征更健壮的想法的启发,由于CNN学习特征的强大功能,我们使用多个局部CNN来共同学习局部面部特征。为了有效地使用局部要素的此属性,我们将全局和局部内核应用于要素,并将组合内核引入LSSVM。通过与广泛使用的CMU + MIT数据集和FDDB数据集上的几种流行的面部检测算法进行比较,大量实验证明了我们算法的鲁棒性和效率。 (C)2016 Elsevier B.V.保留所有权利。

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