Litcius/Paper detail

A study on modern deep learning detection algorithms for automatic target recognition in sidescan sonar images

Yannik Steiniger, J. Groen, Jannis Stoppe, Dieter Kraus, Tobias Meisen

2021Proceedings of meetings on acoustics15 citationsDOIOpen Access PDF

Abstract

State-of-the art deep learning models have shown remarkable performance on computer vision tasks like object classification or detection. These networks are typically trained on large-scale datasets of natural RGB images. However, sidescan sonar images are gray-scaled images representing acoustic intensities. The fundamental differences between camera and sonar as well as the images itself makes it necessary to investigate the transfer of results achieved on RGB images to the sonar imagery domain. Therefore, we compare the deep learning detection algorithm YOLOv2 with its updated version YOLOv3, both adopted for object detection in sidescan sonar images. In addition to this, a small convolutional neural network (CNN) is trained from scratch and used for detection. The experiments answer two questions: First, whether, as for general computer vision problems, transfer learning of large deep learning models is preferable over training of custom networks when dealing with limited sonar data. Secondly, whether improvements in the YOLO architecture, developed based on RGB images, lead to significant improvements on sonar data as well. Our results show that YOLOv3 indeed performs better than YOLOv2. Furthermore, YOLOv3 achieves a true positive rate of up to 98.2% and outperforms the small CNN.

Topics & Concepts

SonarArtificial intelligenceComputer scienceConvolutional neural networkObject detectionDeep learningTransfer of learningComputer visionRGB color modelSynthetic aperture sonarCognitive neuroscience of visual object recognitionPattern recognition (psychology)Object (grammar)Underwater Acoustics ResearchUnderwater Vehicles and Communication Systems