Reed Scott, Petillot Yvan, Bell Judith
Ocean Systems Laboratory, School of Engineering and Physical Sciences, Heriot-Watt University, Riccarton Campus, Edinburgh, EH14-4AS, United Kingdom.
Appl Opt. 2004 Jan 10;43(2):237-46. doi: 10.1364/ao.43.000237.
This paper presents a model-based approach to mine detection and classification by use of sidescan sonar. Advances in autonomous underwater vehicle technology have increased the interest in automatic target recognition systems in an effort to automate a process that is currently carried out by a human operator. Current automated systems generally require training and thus produce poor results when the test data set is different from the training set. This has led to research into unsupervised systems, which are able to cope with the large variability in conditions and terrains seen in sidescan imagery. The system presented in this paper first detects possible minelike objects using a Markov random field model, which operates well on noisy images, such as sidescan, and allows a priori information to be included through the use of priors. The highlight and shadow regions of the object are then extracted with a cooperating statistical snake, which assumes these regions are statistically separate from the background. Finally, a classification decision is made using Dempster-Shafer theory, where the extracted features are compared with synthetic realizations generated with a sidescan sonar simulator model. Results for the entire process are shown on real sidescan sonar data. Similarities between the sidescan sonar and synthetic aperture radar (SAR) imaging processes ensure that the approach outlined here could be made applied to SAR image analysis.
本文提出了一种基于模型的方法,利用侧扫声呐进行地雷探测和分类。自主水下航行器技术的进步激发了人们对自动目标识别系统的兴趣,旨在实现目前由人工操作的流程自动化。当前的自动化系统通常需要进行训练,因此当测试数据集与训练集不同时,其效果不佳。这促使人们对无监督系统展开研究,这类系统能够应对侧扫图像中条件和地形的巨大变化。本文介绍的系统首先使用马尔可夫随机场模型检测可能的类雷物体,该模型在诸如侧扫等噪声图像上运行良好,并允许通过使用先验信息纳入先验知识。然后,利用协同统计蛇形算法提取物体的高光和阴影区域,该算法假定这些区域在统计上与背景分离。最后,使用Dempster-Shafer理论进行分类决策,将提取的特征与利用侧扫声呐模拟器模型生成的合成图像进行比较。整个过程的结果展示在真实的侧扫声呐数据上。侧扫声呐与合成孔径雷达(SAR)成像过程的相似性确保了这里概述的方法可以应用于SAR图像分析。