Information-Preserved Blending Method for Forward-Looking Sonar Mosaicing in Non-Ideal System Configuration
Jiayi Su, Xingbin Tu, Fengzhong Qu, Yan Wei

TL;DR
This paper introduces a novel blending method for forward-looking sonar mosaicing that preserves critical information even in non-ideal system configurations, enhancing the quality of underwater inspection mosaics.
Contribution
It proposes a new blending technique utilizing a Long-Short Time Sliding Window and Global Variance Map to improve information preservation in FLS mosaics under challenging conditions.
Findings
Enhanced detail preservation in FLS mosaics.
Effective in non-ideal system configurations.
Validated with real environment data.
Abstract
Forward-Looking Sonar (FLS) has started to gain attention in the field of near-bottom close-range underwater inspection because of its high resolution and high framerate features. Although Automatic Target Recognition (ATR) algorithms have been applied tentatively for object-searching tasks, human supervision is still indispensable, especially when involving critical areas. A clear FLS mosaic containing all suspicious information is in demand to help experts deal with tremendous perception data. However, previous work only considered that FLS is working in an ideal system configuration, which assumes an appropriate sonar imaging setup and the availability of accurate positioning data. Without those promises, the intra-frame and inter-frame artifacts will appear and degrade the quality of the final mosaic by making the information of interest invisible. In this paper, we propose a novel…
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Taxonomy
TopicsUnderwater Vehicles and Communication Systems · Robotics and Sensor-Based Localization · Underwater Acoustics Research
