Edge-aware segmentation in satellite imagery: A case study of shoreline detection

U. R. Aktas, G. Can, F. Vural
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引用次数: 11

Abstract

Shoreline extraction algorithms from multispectral imagery depend on threshold selection over spectral values and segmentation in general. Although this method gives high performance values for water delineation, error is accumulated on pixels near shoreline and complicates detection of nearby ships, docks etc. Water-shadow spectral mixing and spectral difference in water regions are two of the reasons for such untrustworthy shoreline results. With only four bands available, improvement in water detection depending only on pixel values is not very promising. Therefore, segmentation gains importance. By an edge-aware segmentation method, we aim to improve overall water and shoreline detection performances. In this study, a robust three-stage shoreline extraction algorithm is proposed. In the first stage, segmentation is applied over spectral values and then, some segments are combined according to edge information. In the second stage of the algorithm, pixel-based water information is combined with segmentation. The last step consists of enhancement of water regions based on local optimization by merging regions near shore boundary. Additionally, two new boundary-sensitive performance metrics are introduced for measuring the accuracy of the detected boundaries.
卫星图像中的边缘感知分割:海岸线检测的案例研究
多光谱图像的海岸线提取算法通常依赖于光谱值的阈值选择和分割。尽管该方法在水体描绘方面给出了高性能值,但误差累积在海岸线附近的像素上,并且使附近船舶、码头等的检测变得复杂。水影光谱混合和水区光谱差异是造成岸线结果不可信的两个原因。由于只有四个波段可用,仅依赖像素值的水检测的改进并不是很有希望。因此,细分变得很重要。通过边缘感知分割方法,我们的目标是提高整体的水和海岸线检测性能。本文提出了一种鲁棒的三阶段海岸线提取算法。首先对光谱值进行分割,然后根据边缘信息进行分割。在算法的第二阶段,将基于像素的水信息与分割相结合。最后一步是在局部优化的基础上,通过合并海岸边界附近的区域来增强水域。此外,引入了两个新的边界敏感性能指标来测量检测到的边界的准确性。
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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