基于稀疏FIND特征的HDTV分辨率视频目标识别处理器的FPGA实现

Yuri Nishizumi, Go Matsukawa, K. Kajihara, T. Kodama, S. Izumi, H. Kawaguchi, C. Nakanishi, Toshio Goto, Takeo Kato, M. Yoshimoto
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引用次数: 5

摘要

本文介绍了利用稀疏查找特性实现HDTV分辨率为30fps视频的目标识别处理器的FPGA实现。提出了基于HOG和Sparse FIND的两阶段特征提取处理、支持向量机(SVM)的高度并行分类和减少RAM访问周期的块并行处理来实现具有巨大计算复杂度的实时目标识别。通过在FPGA中实现所提出的架构,可以确认使用Sparse FIND特征对HDTV图像进行检测,平均帧率为47.63 fps,频率为90 MHz。在软件上实现的基于Sparse find的原始目标检测算法的识别精度下降了0.5%,表明FPGA系统具有足够的实际应用精度。
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FPGA implementation of object recognition processor for HDTV resolution video using sparse FIND feature
This paper describes FPGA implementation of object recognition processor for HDTV resolution 30 fps video using the Sparse FIND feature. Two-stage feature extraction processing by HOG and Sparse FIND, a highly parallel classification in the support vector machine (SVM), and a block-parallel processing for RAM access cycle reduction are proposed to perform a real time object recognition with enormous computational complexity. From implementation of the proposed architecture in the FPGA, it was confirmed that detection using the Sparse FIND feature was performed for HDTV images at 47.63 fps, on average, at 90 MHz. The recognition accuracy degradation from the original Sparse FIND-base object detection algorithm implemented on software was 0.5%, which shows that the FPGA system provides sufficient accuracy for practical use.
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