Skip to main content Skip to main navigation

Publication

On Object Detection and Explainability with Sonar Imagery

Tarek Elmihoub; Abdulhakim El Gadi Gadi; Lars Nolle; Frederic Theodor Stahl
In: 2024 IEEE 4th International Maghreb Meeting of the Conference on Sciences and Techniques of Automatic Control and Computer Engineering (MI-STA). IEEE International Maghreb Meeting of the Conference on Sciences and Techniques of Automatic Control and Computer Engineering (MI-STA-2024), May 19-21, Tripoli, Libyan Arab Jamahiriya, Pages 1-8, ISBN 979-8-3503-7263-2, IEEE Xplore, New Jersey, 7/2024.

Abstract

The task of detecting objects in sonar imagery is challenging due to low image resolution, significant noise, and the variable nature of the underwater environment. Artificial Intelligence (AI) methods, such as convolutional neural networks and transformers, can be applied to address these challenges. However, the lack of transparent explanations for the results of deep learning models is a major stumbling block to building trust in these models. This paper evaluates You Only Look Once (YOLO-v8) and DEtection TRansformers (DETR) models, as two prominent tools for object detection, using two sonar datasets as a part of the Hybrid Artificial Intelligence eXplainer (HAI-x) project. The selected datasets include a dataset of sonar raw images and another with pre-processed sonar images. Contrary to the claim that sonar raw images do not require preprocessing for efficient object detection using deep learning techniques, the experiments conducted demonstrate that such preparatory steps can indeed improve the performance of object detectors. Furthermore, they can provide an understandable common ground for explaining the detection process to end users.

Projekte

Weitere Links