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Design of a Real-Time Face Detection Parallel Architecture Using High-Level Synthesis

机译:基于高级综合的实时人脸检测并行架构设计

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We describe a High-Level Synthesis implementation of a parallel architecture for face detection. The chosen face detection method is the well-known Convolutional Face Finder (CFF) algorithm, which consists of a pipeline of convolution operations. We rely on dataflow modelling of the algorithm and we use a high-level synthesis tool in order to specify the local dataflows of our Processing Element (PE), by describing in C language inter-PE communication, fine scheduling of the successive convolutions, and memory distribution and bandwidth. Using this approach, we explore several implementation alternatives in order to find a compromise between processing speed and area of the PE. We then build a parallel architecture composed of a PE ring and a FIFO memory, which constitutes a generic architecture capable of processing images of different sizes. A ring of 25 PEs running at 80?MHz is able to process 127 QVGA images per second or 35 VGA images per second.
机译:我们描述了用于面部检测的并行体系结构的高级综合实现。选择的面部检测方法是众所周知的卷积面部查找器(CFF)算法,该算法由一系列卷积运算组成。我们依靠算法的数据流建模,并且使用高级综合工具来指定处理元素(PE)的本地数据流,方法是使用C语言描述PE间的通信,连续卷积的精细调度以及内存分配和带宽。使用这种方法,我们探索了几种实现方案,以便在处理速度和PE面积之间找到折衷方案。然后,我们建立一个由PE环和FIFO存储器组成的并行体系结构,它构成了一种能够处理不同大小图像的通用体系结构。 25个以80?MHz运行的PE环可以每秒处理127个QVGA图像或每秒处理35个VGA图像。

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