一种用于实时卫星图像分割的改进遗传聚类结构

Rahul Ratnakumar, S. Nanda
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引用次数: 1

摘要

在过去的十年中,研究人员一直致力于为包括图像分割在内的几种现实应用开发硬件架构。对高分辨率卫星图像进行精确的分割分析,有助于识别洪水、火灾、云、雪等自然现象。本文通过引入交叉和突变模块的创新结构,提出了一种改进的遗传聚类结构。在这个建筑中,由于使用曼哈顿距离而不是传统的欧几里得距离,复杂性很低。在2015年缅甸和2015年印度金奈的两张卫星捕获的洪水图像上对所提出的架构进行了测试。两幅卫星图像都被成功分割,获得了满意的PSNR和SSIM值,功耗提高到31 mW,时钟频率为191 MHz。与目前最先进的架构相比,所提出的工作在降低功耗、时钟周期、设计复杂性和资源利用率方面取得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved genetic clustering architecture for real-time satellite image segmentation
In the last decade, researchers have focused on the development of hardware architectures for several real-life applications including image segmentation. Accurate analysis of segmented high-resolution satellite image help in identifying flood, fire, cloud, snow, and other natural phenomenon. In this paper, an improved genetic clustering architecture is proposed by introducing innovative architectures for crossover and mutation modules. In this architecture, complexity is low due to the use of Manhattan distance instead of traditional Euclidean distance. Testing of the proposed architecture has been carried out on two satellite captured flood images of Myanmar, Burma 2015, and Chennai, India 2015. Both the satellite images have been successfully segmented and obtained satisfactory PSNR and SSIM values, with an improved power consumption of 31 mW and 191 MHz clock frequency. In comparison with state-of-art architectures, the proposed work delivers satisfactory results in terms of power reduction, clock period, design complexity and resource utilization.
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