Object Modeling from Underwater Forward-Scan Sonar Imagery with Sea-Surface Multipath
Yuhan Liu, Shahriar Negaharipour

TL;DR
This paper introduces an optimization method for 3-D underwater object modeling from 2-D sonar images, effectively addressing multipath artifacts caused by the sea surface to improve shape accuracy.
Contribution
It presents a novel approach to model, localize, and discard multipath artifacts in sonar imagery, enhancing 3-D reconstruction accuracy near the sea surface.
Findings
Refined 3-D models achieved in about six iterations.
Effective removal of multipath artifacts improves shape accuracy.
Method tested on real, synthetic, and computer-generated data.
Abstract
We propose an optimization technique for 3-D underwater object modeling from 2-D forward-scan sonar images at known poses. A key contribution, for objects imaged in the proximity of the sea surface, is to resolve the multipath artifacts due to the air-water interface. Here, the object image formed by the direct target backscatter is almost always corrupted by the ghost and sometimes by the mirror components (generated by the multipath propagation). Assuming a planar air-water interface, we model, localize, and discard the corrupted object region within each view, thus avoiding the distortion of recovered 3-D shape. Additionally, complementary visual cues from the boundary of the mirror component, distinct at suitable sonar poses, are employed to enhance the 3-D modeling accuracy. The optimization is implemented as iterative shape adjustment by displacing the vertices of triangular…
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Taxonomy
TopicsUnderwater Acoustics Research · Medical Image Segmentation Techniques
MethodsALIGN
