Objective evaluation of four SAR image segmentation algorithms

Jason B. Gregga, S. Gustafson, G. Power
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引用次数: 3

Abstract

Because of the large number of SAR images the Air Force generates and the dwindling number of available human analysts, automated methods must be developed. A key step towards automated SAR image analysis is image segmentation. There are many segmentation algorithms, but they have not been tested on a common set of images, and there are no standard test methods. This paper evaluates four SAR image segmentation algorithms by running them on a common set of data and objectively comparing them to each other and to human segmentations. This objective comparison uses a multi-measure approach with a set of master segmentations as ground truth. The measure results are compared to a Human Threshold, which defines the performance of human segmentors compared to the master segmentations. Also, methods that use the multi-measures to determine the best algorithm are developed. These methods show that of the four algorithms, Statistical Curve Evolution produces the best segmentations; however, none of the algorithms are superior to human segmentations. Thus, with the Human Threshold and Statistical Curve Evolution as benchmarks, this paper establishes a new and practical framework for testing SAR image segmentation algorithms.
客观评价了四种SAR图像分割算法
由于空军生成的大量SAR图像和可用的人工分析人员数量减少,必须开发自动化方法。实现自动SAR图像分析的关键步骤是图像分割。分割算法有很多,但都没有在一组通用的图像上进行过测试,也没有标准的测试方法。本文通过在一组公共数据上运行四种SAR图像分割算法,并客观地将它们相互比较并与人类分割进行比较,从而评估了四种SAR图像分割算法。这种客观的比较使用了一种多度量方法,以一组主分割作为基础真值。测量结果与人类阈值进行比较,该阈值定义了人类分割器与主分割器相比的性能。此外,本文还提出了利用多度量来确定最佳算法的方法。结果表明,统计曲线进化算法的分割效果最好;然而,没有一种算法优于人工分割。因此,本文以人类阈值和统计曲线演化为基准,建立了一个新的实用的测试SAR图像分割算法的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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