硬件实现高斯混合模型前景目标分割算法在超高分辨率视频流中的实时工作

P. Janus, T. Kryjak
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引用次数: 2

摘要

本文提出了一种用于背景建模和前景目标分割的高斯混合模型算法的硬件实现。所提出的视觉系统能够处理分辨率高达4K(3840美元× 2160美元像素)和每秒60帧的视频流。此外,还讨论了由内存带宽限制引起的约束,并考虑了解决这一问题的几种不同解决方案。设计的模块已在ZCU 102开发板上使用Xilinx Zynq UltraScale+ MPSoC器件进行了验证。此外,还对计算性能和功耗进行了估计。
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Hardware implementation of the Gaussian Mixture Model foreground object segmentation algorithm working with ultra-high resolution video stream in real-time
In this paper a hardware implementation of the Gaussian Mixture Model algorithm for background modelling and foreground object segmentation is presented. The proposed vision system is able to handle video stream with resolution up to 4K ($3840 \times 2160$ pixels) and 60 frames per second. Moreover, the constraints caused by memory bandwidth limit are also discussed and a few different solutions to tackle this issue have been considered. The designed modules have been verified on the ZCU 102 development board with Xilinx Zynq UltraScale+ MPSoC device. Additionally, the computing performance and power consumption have been estimated.
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