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Digital architecture for real-time CNN-based face detection for video processing

机译:用于视频处理的基于CNN的实时人脸检测的数字架构

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In this paper, we propose a hardware computing architecture for face detection that classifies an image as a face or non-face. The computing architecture is first designed, modeled and tested in MATLAB Simulink using Xilinx block set and was later tested using a Virtex-6 FPGA ML605 Evaluation Kit. The system uses learned filters which were previously extracted by training on a set of face and non-face patterns. The system is fully feature based and does not require any assumptions on specific image processing techniques. The proposed approach takes an input image as a whole and passes it through different modules that apply sub-algorithms based on image convolution and sub-sampling followed by a non-linear signal processor containing artificial neurons. The architecture takes the form of a deep convolutional neural network (CNN) which can classify if a search window inside a picture contains a human face or not.
机译:在本文中,我们提出了一种用于面部检测的硬件计算体系结构,该体系结构将图像分类为面部还是非面部。首先使用Xilinx块集在MATLAB Simulink中设计,建模和测试该计算体系结构,然后使用Virtex-6 FPGA ML605评估套件进行了测试。该系统使用学习的过滤器,这些过滤器先前是通过对一组面部和非面部模式进行训练而提取的。该系统完全基于功能,不需要对特定图像处理技术进行任何假设。所提出的方法将输入图像作为一个整体,然后将其通过不同的模块,这些模块基于图像卷积和子采样应用子算法,然后是包含人工神经元的非线性信号处理器。该体系结构采用深度卷积神经网络(CNN)的形式,可以对图片内的搜索窗口是否包含人脸进行分类。

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