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Block-Based Major Color Method for Foreground Object Detection on Embedded SoC Platforms

机译:基于块的主要颜色方法在嵌入式SoC平台上进行前景对象检测

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摘要

Background modeling and foreground object detection are crucial techniques for embedded image surveillance systems. The most popular and accurate methods are mostly pixel based, taking up more memory and requiring longer execution times. Thus, these techniques are not suitable for embedded platforms. This paper presents a block-based major color background modeling and a foreground detection algorithm that possesses efficient processing and low memory requirement in a complex scene, making them feasible for embedded platforms. Our proposed approach consumes 37% less memory and increases accuracy by at least 2% compared to existing methods. Last, implementing the object detection algorithm on the VIA VB8001 platform, we can achieve 22 frames per second for the benchmark video with image size 768$,times,$ 576.
机译:背景建模和前景物体检测是嵌入式图像监视系统的关键技术。最流行和最准确的方法主要是基于像素的,占用更多的内存并需要更长的执行时间。因此,这些技术不适用于嵌入式平台。本文提出了一种基于块的主要色彩背景建模和一种前景检测算法,该算法在复杂场景中具有高效的处理能力和较低的内存需求,使其在嵌入式平台上可行。与现有方法相比,我们提出的方法减少了37%的内存消耗,并至少将精度提高了2%。最后,在VIA VB8001平台上实现对象检测算法,对于基准视频,图像大小为768 $,次为576美元,可以达到22帧/秒。

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