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首页> 外文期刊>IEEE transactions on industrial informatics >High Performance and Efficient Real-Time Face Detector on Central Processing Unit Based on Convolutional Neural Network
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High Performance and Efficient Real-Time Face Detector on Central Processing Unit Based on Convolutional Neural Network

机译:基于卷积神经网络的中央处理单元高性能和高效的实时探测器

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摘要

Face detection is crucial in the development of face recognition, expression, tracking, and classification. Conventional methods have accuracy constraints on several challenging conditions, including nonfrontal faces, occlusions, and complex backgrounds. However, the convolutional neural network (CNN) methods produce high performances despite a large amount of computation. Therefore, CNN requires expensive hardware and is not suitable for low-cost central processing units (CPUs). This article develops a light architecture for a CNN-based real-time face detector. The proposed architecture consists of two main modules, the backbone to extract distinctive facial features and multilevel detection to perform prediction at multiple scales. Furthermore, it utilizes several approaches to enhance the training result, including balancing loss and tweaks on the training configuration. The proposed detector has one stage and is trained using the input of images from WIDER FACE with challenges, which contains more challenging images than other datasets. As a result, the detector achieves state-of-the-art performance on several benchmark datasets compared with the other CPU-based models. Then, its efficiency is superior to that of competitors, as it runs at 53 frames per second on a CPU for video graphics array resolution images.
机译:面部检测对于人脸识别,表达,跟踪和分类的发展至关重要。常规方法对几个具有挑战性的条件具有准确限制,包括非围栏,闭塞和复杂背景。然而,尽管大量计算,卷积神经网络(CNN)方法产生高性能。因此,CNN需要昂贵的硬件,并且不适用于低成本的中央处理单元(CPU)。本文开发了基于CNN的实时探测器的灯架架构。所提出的架构由两个主模块组成,骨干内提取独特面部特征和多级检测,以在多个尺度上执行预测。此外,它利用了几种方法来增强训练结果,包括平衡损耗和训练配置的调整。所提出的探测器具有一个阶段,并且使用与更广泛的图像的图像与挑战的图像进行训练,该挑战包含比其他数据集更具有挑战性的图像。结果,与其他基于CPU的模型相比,检测器在多个基准数据集上实现最先进的性能。然后,其效率优于竞争对手的效率,因为它在每秒在CPU上运行53帧,用于视频图形阵列分辨率图像。

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