A Curvelet-Transform-Based Image Fusion Method Incorporating Side-Scan Sonar Image Features

Author:

Zhao Xinyang1,Jin Shaohua1,Bian Gang1,Cui Yang1,Wang Junsen1,Zhou Bo2

Affiliation:

1. Department of Military Oceanography and Hydrography and Cartography, Dalian Naval Academy, Dalian 116018, China

2. Department of Academics, Dalian Naval Academy, Dalian 116018, China

Abstract

Current methods of fusing side-scan sonar images fail to tackle the issues of shadow removal, preservation of information from adjacent strip images, and maintenance of image clarity and contrast. To address these deficiencies, a novel curvelet-transform-based approach that integrates the complementary attribute of details from side-scan sonar strip images is proposed. By capitalizing on the multiple scales and orientations of the curvelet transform and its intricate hierarchical nature, myriad fusion rules were applied at the corresponding frequency levels, enabling a more-tailored image fusion technique for side-scan sonar imagery. The experimental results validated the effectiveness of this method in preserving valuable information from side-scan sonar images, reducing the presence of shadows and ensuring both clarity and contrast in the fused images. By meeting the aforementioned challenges encountered in existing methodologies, this approach demonstrated great practical significance.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference26 articles.

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2. Wang, X. (2017). Research on Precise Processing of Side-Scan Sonar Images and Object Recognition Methods. [Ph.D. Thesis, Wuhan University].

3. Wu, M. (2018). Research on Mosaic Methods for Side-Scan Sonar Images. [Master’s Thesis, East China University of Science and Technology].

4. Xu, J. (2017). Research on Key Mosaic and Segmentation Techniques for Side-Scan Sonar Images. [Master’s Thesis, East China University of Science and Technology].

5. Deng, Y.Y. (2013). Research on the Mosaic System of Side-Scan Sonar Images. [Master’s Thesis, Harbin Engineering University].

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