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Faceboxes: A CPU real-time and accurate unconstrained face detector

机译:Faceboxes:CPU实时且准确的无约束面部检测器

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Although tremendous strides have been made in face detection, one of the remaining open issues is to achieve CPU real-time speed as well as maintain high performance, since effective models for face detection tend to be computationally prohibitive. To address this issue, we propose a novel face detector, named FaceBoxes, with superior performance on both speed and accuracy. Specifically, the proposed method has a lightweight yet powerful network that consists of the Rapidly Digested Convolution Layers (RDCL) and the Multiple Scale Convolution Layers (MSCL). The former is designed to enable FaceBoxes to achieve CPU real-time speed, while the latter aims to enrich the features and discretize anchors over different layers to handle faces of various scales. Besides, we propose a new anchor densification strategy to make different types of anchors have the same density on the image, which significantly improves the recall rate of small faces. Finally, we present a Divide and Conquer Head (DCH) to boost the prediction ability of the detection layer using above strategy. As a consequence, the proposed detector runs at 28 FPS on the CPU and 254 FPS using a GPU for VGA-resolution images. Moreover, the speed of FaceBoxes is invariant to the number of faces. We evaluate the proposed method on several face detection benchmarks including AFW, PASCAL face, FDDB, WIDER FACE and achieve state-of-the-art performance among CPU real-time methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:尽管人脸检测已经取得了长足的进步,但仍然存在的未解决问题之一是要实现CPU实时速度并保持高性能,因为有效的人脸检测模型往往在计算上令人望而却步。为了解决这个问题,我们提出了一种新颖的面部检测器,名为FaceBoxes,在速度和准确性上均具有卓越的性能。具体而言,所提出的方法具有轻量级但功能强大的网络,该网络由快速摘要卷积层(RDCL)和多尺度卷积层(MSCL)组成。前者旨在使FaceBoxes能够实现CPU实时速度,而后者旨在丰富功能并离散化不同层上的锚以处理各种比例的面孔。此外,我们提出了一种新的锚点增密策略,可以使不同类型的锚点在图像上具有相同的密度,从而显着提高小脸的召回率。最后,我们提出了分而治之头(DCH)以提高使用上述策略的检测层的预测能力。结果,建议的检测器在CPU上以28 FPS运行,在GPU上以VGA分辨率图像运行在254 FPS。而且,FaceBoxes的速度不随人脸数量而变化。我们在包括AFW,PASCAL人脸,FDDB,WIDER FACE在内的多个人脸检测基准上评估了该方法,并获得了CPU实时方法中的最新性能。 (C)2019 Elsevier B.V.保留所有权利。

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