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Main Authors: S, Kamal Basha, B, Anukul Kiran, Nambiar, Athira, Rajendran, Suresh
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.01445
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author S, Kamal Basha
B, Anukul Kiran
Nambiar, Athira
Rajendran, Suresh
author_facet S, Kamal Basha
B, Anukul Kiran
Nambiar, Athira
Rajendran, Suresh
contents Sonar imaging is fundamental to underwater exploration, with critical applications in defense, navigation, and marine research. Shadow regions, in particular, provide essential cues for object detection and classification, yet existing studies primarily focus on highlight-based analysis, leaving shadow-based classification underexplored. To bridge this gap, we propose a Context-adaptive sonar image classification framework that leverages advanced image processing techniques to extract and integrate discriminative shadow and highlight features. Our framework introduces a novel shadow-specific classifier and adaptive shadow segmentation, enabling effective classification based on the dominant region. This approach ensures optimal feature representation, improving robustness against noise and occlusions. In addition, we introduce a Region-aware denoising model that enhances sonar image quality by preserving critical structural details while suppressing noise. This model incorporates an explainability-driven optimization strategy, ensuring that denoising is guided by feature importance, thereby improving interpretability and classification reliability. Furthermore, we present S3Simulator+, an extended dataset incorporating naval mine scenarios with physics-informed noise specifically tailored for the underwater sonar domain, fostering the development of robust AI models. By combining novel classification strategies with an enhanced dataset, our work addresses key challenges in sonar image analysis, contributing to the advancement of autonomous underwater perception.
format Preprint
id arxiv_https___arxiv_org_abs_2506_01445
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Novel Context-Adaptive Fusion of Shadow and Highlight Regions for Efficient Sonar Image Classification
S, Kamal Basha
B, Anukul Kiran
Nambiar, Athira
Rajendran, Suresh
Computer Vision and Pattern Recognition
Sonar imaging is fundamental to underwater exploration, with critical applications in defense, navigation, and marine research. Shadow regions, in particular, provide essential cues for object detection and classification, yet existing studies primarily focus on highlight-based analysis, leaving shadow-based classification underexplored. To bridge this gap, we propose a Context-adaptive sonar image classification framework that leverages advanced image processing techniques to extract and integrate discriminative shadow and highlight features. Our framework introduces a novel shadow-specific classifier and adaptive shadow segmentation, enabling effective classification based on the dominant region. This approach ensures optimal feature representation, improving robustness against noise and occlusions. In addition, we introduce a Region-aware denoising model that enhances sonar image quality by preserving critical structural details while suppressing noise. This model incorporates an explainability-driven optimization strategy, ensuring that denoising is guided by feature importance, thereby improving interpretability and classification reliability. Furthermore, we present S3Simulator+, an extended dataset incorporating naval mine scenarios with physics-informed noise specifically tailored for the underwater sonar domain, fostering the development of robust AI models. By combining novel classification strategies with an enhanced dataset, our work addresses key challenges in sonar image analysis, contributing to the advancement of autonomous underwater perception.
title A Novel Context-Adaptive Fusion of Shadow and Highlight Regions for Efficient Sonar Image Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.01445