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Guided block-matching for sonar image registration using unsupervised Kohonen neural networks

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TLDR
Experimental results show the effectiveness of the proposed guidance method by reducing registration computation time without any quality loss when compared to the regular block-matching algorithm.
Abstract
This paper proposes an extended block-matching method for registrating side-scan sonar images. Indeed, this work main objective is to exploit block-matching principle and improve its performance by embedding a relevant guidance algorithm. Instead of carrying out the block-matching process on the whole input images, which takes a lot of time, an unsupervised image segmentation step is introduced prior to the matching phase in order to guide it. Thus, the block-matching is only performed on similar regions from the two segmented images, where the potential for finding relevant pairs of blocks is high. This improved version is expected to take less time than the original one. In this work, textural features extracted from both images, feed self-organizing neural networks (Kohonen maps) which implement the unsupervised segmentation step. Experimental results show the effectiveness of the proposed guidance method by reducing registration computation time without any quality loss when compared to the regular block-matching algorithm.

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Citations
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Proceedings ArticleDOI

Improving sonar image patch matching via deep learning

TL;DR: This work proposes the use of Convolutional Neural Networks to learn a matching function that can be trained from labeled sonar data, after pre-processing to generate matching and non-matching pairs.
Proceedings ArticleDOI

Gum-Net: Unsupervised Geometric Matching for Fast and Accurate 3D Subtomogram Image Alignment and Averaging

TL;DR: This work is the first 3D unsupervised geometric matching method for images of strong transformation variation and high noise level and introduces an end-to-end trainable architecture with three novel modules specifically designed for preserving feature spatial information and propagating feature matching information.
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Deep Neural Networks for Marine Debris Detection in Sonar Images.

TL;DR: The results show that for the evaluated tasks, DNNs are a superior technique than the corresponding state of the art, particularly for the matching and detection proposal tasks.
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Improving Sonar Image Patch Matching via Deep Learning

TL;DR: In this paper, the authors used CNN to learn a matching function that can be trained from labeled sonar data, after pre-processing to generate matching and non-matching pairs.
Proceedings ArticleDOI

A hybrid registration approach combining SLAM and elastic matching for automatic side-scan sonar mosaic

TL;DR: iSAM algorithm has been fed with real side-scan images and shows interesting capabilities to produce corrected sensor trajectories allowing relevant coarse image registration, based on landmarks extraction and pairing, and will guide a block-matching procedure that will refine these trajectories by finely matching only sonar images relevant areas.
References
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Book

Self-Organizing Maps

TL;DR: The Self-Organising Map (SOM) algorithm was introduced by the author in 1981 as mentioned in this paper, and many applications form one of the major approaches to the contemporary artificial neural networks field, and new technologies have already been based on it.
Journal ArticleDOI

A Review of Image Denoising Algorithms, with a New One

TL;DR: A general mathematical and experimental methodology to compare and classify classical image denoising algorithms and a nonlocal means (NL-means) algorithm addressing the preservation of structure in a digital image are defined.
Journal ArticleDOI

Intensity-Based Block Matching Algorithm for Mosaicing Sonar Images

TL;DR: The proposed two-step registration algorithm uses MI&CR to match two sonar images: a single rigid translation globally matches the images, then a field of locally applied translations is computed for adjusting the final registration to remaining local distortions.
Proceedings ArticleDOI

Sonar image registration through symbolic matching: a fuzzy local transform approach using genetic algorithms

TL;DR: A two-step registrating system that combines genetic algorithms with variable-length chromosomes coding a field of transformations the size of which is not a priori known is implemented, which allows the registration of different tracks covering a same sea-bed region with multiple distortions.
Proceedings ArticleDOI

Sidescan Sonar Image Matching Using Cross Correlation

TL;DR: The proposed method has fewer variables to tune in order to get satisfactory results, and is compared to an existing method for matching sidescan sonar images based on hypothetical reasoning to find the correct displacement between the two images.