Intensity normalization of sidescan sonar imagery

Mohammed Sadeq Al-Rawi, A. Galdran, Xin Yuan, Martina Eckert, José-Fernán Martínez, Fredrik Elmgren, Baran Çürüklü, Jonathan Rodriguez, J. Bastos, M. Pinto
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引用次数: 13

Abstract

Sonar imaging is currently the exemplary choice used in underwater imaging. However, since sound signals are absorbed by water, an image acquired by a sonar will have gradient illumination; thus, underwater maps will be difficult to process. In this work, we investigated this phenomenon with the objective to propose methods to normalize the images with regard to illumination. We propose to use MIxed exponential Regression Analysis (MIRA) estimated from each image that requires normalization. Two sidescan sonars have been used to capture the seabed in Lake Vattern in Sweden in two opposite directions west-east and east-west; hence, the task is extremely difficult due to differences in the acoustic shadows. Using the structural similarity index, we performed similarity analyses between corresponding regions extracted from the sonar images. Results showed that MIRA has superior normalization performance. This work has been carried out as part of the SWARMs project (http://www.swarms.eu/).
侧扫声纳图像的强度归一化
声纳成像是目前用于水下成像的典型选择。然而,由于声音信号被水吸收,声纳获得的图像将具有梯度照明;因此,水下地图将难以处理。在这项工作中,我们研究了这种现象,目的是提出关于照明的图像归一化方法。我们建议使用混合指数回归分析(MIRA)从每个需要归一化的图像估计。在瑞典的Vattern湖,使用了两个侧扫描声纳在东西两个相反的方向上捕获海床;因此,由于声阴影的差异,任务非常困难。利用结构相似指数,对从声纳图像中提取的相应区域进行相似性分析。结果表明,MIRA具有较好的归一化性能。这项工作是作为swarm项目(http://www.swarms.eu/)的一部分进行的。
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