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首页> 外文期刊>Journal of Real-Time Image Processing >FPGA-based architecture for real time segmentation and denoising of HD video
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FPGA-based architecture for real time segmentation and denoising of HD video

机译:基于FPGA的架构用于高清视频的实时分割和去噪

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The identification of moving objects is a basic step in computer vision. The identification begins with the segmentation and is followed by a denoising phase. This paper proposes the FPGA hardware implementation of segmentation and denoising unit. The segmentation is conducted using the Gaussian mixture model (GMM), a probabilistic method for the segmentation of the background. The denoising is conducted implementing the morphological operators of erosion, dilation, opening and closing. The proposed circuit is optimized to perform real time processing of HD video sequences (1,920 x 1,080 @ 20 fps) when implemented on FPGA devices. The circuit uses an optimized fixed width representation of the data and implements high performance arithmetic circuits. The circuit is implemented on Xilinx and Altera FPGA. Implemented on xc5vlx50 Virtex5 FPGA, it can process 24 fps of an HD video using 1,179 Slice LUTs and 291 Slice Registers; the dynamic power dissipation is 0.46 mW/MHz. Implemented on EP2S15F484C3 StratixII, it provides a maximum working frequency of 44.03 MHz employing 5038 Logic Elements and 7,957 flip flop with a dynamic power dissipation of 4.03 mW/MHz.
机译:运动物体的识别是计算机视觉的基本步骤。识别从分割开始,然后是去噪阶段。本文提出了分段降噪单元的FPGA硬件实现。使用高斯混合模型(GMM)(一种用于背景分割的概率方法)进行分割。进行去噪的方法是使用侵蚀,膨胀,打开和关闭的形态运算符。当在FPGA器件上实现时,所建议的电路经过优化,可以执行高清视频序列的实时处理(1,920 x 1,080 @ 20 fps)。该电路使用数据的最佳固定宽度表示形式,并实现了高性能算术电路。该电路在Xilinx和Altera FPGA上实现。它在xc5vlx50 Virtex5 FPGA上实现,可以使用1,179个Slice LUT和291个Slice寄存器处理24 fps的高清视频。动态功耗为0.46 mW / MHz。它在EP2S15F484C3 StratixII上实现,采用5038逻辑元件和7,957触发器,可提供44.03 MHz的最大工作频率,动态功耗为4.03 mW / MHz。

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