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引用次数: 56
摘要
人脸检测是视频监控、机器人视觉和生物识别认证等广泛应用的基石。在基于人脸检测的应用中,最大的挑战之一是准确检测人脸的速度。在本文中,我们提出了一种新的SoC (System on Chip)架构,用于视频或其他图像丰富内容的超快速人脸检测。我们的实现基于一种高效且鲁棒的算法,该算法在AdaBoost训练的Haar特征上使用级联的人工神经网络(ANN)分类器。人脸检测器架构通过有效地叠加不同计算阶段提取粗粒度并行性,同时利用模块级的细粒度并行性。我们提供了通过我们的架构实现的并行提取的细节,并展示了描述我们的人脸检测实现效率的实验结果。为了实现和评估我们的架构,我们在ML510开发板上使用了Xilinx FX130T Virtex5 FPGA器件。我们的性能评估表明,在2.4GHz Core-2 Quad CPU上运行的sse优化软件实现可以实现大约100倍的加速。检测速度达到625帧/秒。
A novel SoC architecture on FPGA for ultra fast face detection
Face detection is the cornerstone of a wide range of applications such as video surveillance, robotic vision and biometric authentication. One of the biggest challenges in face detection based applications is the speed at which faces can be accurately detected. In this paper, we present a novel SoC (System on Chip) architecture for ultra fast face detection in video or other image rich content. Our implementation is based on an efficient and robust algorithm that uses a cascade of Artificial Neural Network (ANN) classifiers on AdaBoost trained Haar features. The face detector architecture extracts the coarse grained parallelism by efficiently overlapping different computation phases while taking advantage of the finegrained parallelism at the module level. We provide details on the parallelism extraction achieved by our architecture and show experimental results that portray the efficiency of our face detection implementation. For the implementation and evaluation of our architecture we used the Xilinx FX130T Virtex5 FPGA device on the ML510 development board. Our performance evaluations indicate that a speedup of around 100X can be achieved over a SSE-optimized software implementation running on a 2.4GHz Core-2 Quad CPU. The detection speed reaches 625 frames per sec (fps).