基于CML-RTS和马尔可夫随机场的侧扫描声纳拼接图像自动融合

S. Reed, I. Tena Ruiz, C. Capus, Y. Pétillot
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引用次数: 2

摘要

提出了一种舷侧扫描声纳分类数据的配准与融合框架。它建立在导航和配准方面的最新进展的基础上,用于改进拼接,应用新颖的融合算法来整合来自重叠侧扫描测量线的数据,以产生大规模的分类拼接。虽然典型的反地雷(MCM)和快速环境评估(REA)任务提供了海底同一区域的各种重叠视图,但传统上对侧扫描图像分析的研究集中在单个图像的分析上。一般不考虑与海底同一区域有关的其他图像的现有信息。图像配准和拼接过程允许这些互补数据融合,产生改进的最终分类结果。首先通过应用先进的辐射校正算法对侧扫图像进行预处理。在辐射校正之后,利用平均归一化功率谱密度衍生的特征对本文提供的数据进行纹理分割。使用并行映射和定位ruch - tung - striebel (CML-RTS)程序对各个分类地图进行地理参考和共同注册。它使用单个图像中的局部地标和auv导航数据来生成更准确和平滑的导航轨迹。该轨迹用于生成注册分类拼接。然后将共同注册的分类结果融合在一起,为整个调查区域产生改进的类镶嵌。该融合模型采用投票方式初始化海底地图,然后采用马尔可夫随机场(MRF)模型生成最终的融合分类拼接。整个过程(分类、注册和融合)在意大利拉斯佩齐亚Saclant中心拍摄的真实侧面扫描数据上进行了演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The automatic fusion of classified sidescan sonar mosaics using CML-RTS and Markov random fields
This paper presents a framework for registering and fusing classified sidescan sonar data. It builds on recent advances in navigation and registration for improved mosaicing, applying novel fusion algorithms to integrate data from overlapping sidescan survey lines to produce large scale classified mosaics. While typical mine-counter-measures (MCM) and rapid environmental assessment (REA) missions provide various over-lapping views of the same region of seafloor, research on sidescan image analysis has traditionally concentrated on the analysis of individual images. The available information from the other images, relating to the same region of seafloor, is generally not considered. The image registration and mosaicing process allows this complementary data to be fused, producing an improved final classification result. The sidescan imagery is first pre-processed through the application of advanced radiosity correction algorithms. Following radiosity correction, texture segmentation for the data presented in this paper is achieved using features derived from the averaged normalised power spectral density. The individual classification maps are georeferenced and coregistered using a Concurrent Mapping and Localisation Rauch-Tung-Striebel (CML-RTS) procedure. This uses local landmarks within the individual images and the AUVs navigation data to generate a more accurate and smooth navigation trajectory. This trajectory is used to produce the registered classification mosaics. The coregistered classification results are then fused to produce an improved class mosaic for the entire survey region. The fusion model uses a voting scheme to initialize the seafloor map after which a Markov random field (MRF) model is used to produce the final fused classification mosaic. The entire process (classification, registration and fusion) is demonstrated on real sidescan data taken at the Saclant Centre, La Spezia, Italy.
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