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Hybrid Cascade Model for Face Detection in the Wild Based on Normalized Pixel Difference and a Deep Convolutional Neural Network

机译:基于归一化像素差和深度卷积神经网络的野外人脸混合混合模型

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The main precondition for applications such as face recognition and face de-identification for privacy protection is efficient face detection in real scenes. In this paper, we propose a hybrid cascade model for face detection in the wild. The cascaded two-stage model is based on the fast normalized pixel difference (NPD) detector at the first stage, and a deep convolutional neural network (CNN) at the second stage. The outputs of the NPD detector are characterized by a very small number of false negative (FN) and a much higher number of false positive face (FP) detections. The FP detections are typically an order of magnitude higher than the FN ones. This very high number of FPs has a negative impact on recognition and/or de-identification processing time and on the naturalness of the de-identified images. To reduce the large number of FP face detections, a CNN is used at the second stage. The CNN is applied only on vague face region candidates obtained by the NPD detector that have an NPD score in the interval between two experimentally determined thresholds. The experimental results on the Annotated Faces in the Wild (AFW) test set and the Face Detection Dataset and Benchmark (FDDB) show that the hybrid cascade model significantly reduces the number of FP detections while the number of FN detections are only slightly increased.
机译:诸如面部识别和面部去识别等用于隐私保护的应用程序的主要前提条件是在真实场景中进行有效的面部检测。在本文中,我们提出了一种用于野外人脸检测的混合级联模型。级联的两阶段模型基于第一阶段的快速归一化像素差(NPD)检测器和第二阶段的深度卷积神经网络(CNN)。 NPD检测器的输出的特征在于非常少的假阴性(FN)检测和大量的假阳性面部(FP)检测。 FP检测通常比FN检测高一个数量级。如此大量的FP对识别和/或取消识别处理时间以及取消识别的图像的自然性具有负面影响。为了减少大量FP面部检测,在第二阶段使用了CNN。 CNN仅应用于由NPD检测器获得的模糊面部区域候选者,该候选者在两个实验确定的阈值之间的间隔中具有NPD分数。在“带批注的人脸”(AFW)测试集以及“人脸检测数据集和基准”(FDDB)上的实验结果表明,混合级联模型显着减少了FP检测的次数,而FN检测的次数仅略有增加。

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