Automatic Seabed Target Segmentation of AUV via Multilevel Adversarial Network and Marginal Distribution Adaptation
Qi Wang, Yixiao Zhang, Bo He
Abstract
The real-time segmentation results of side-scan sonar (SSS) images can realize the intelligent perception of autonomous underwater vehicles (AUVs). However, there remains a compelling challenge that the models trained with training data may not generalize well in practical applications due to the various marine conditions/working devices. This article proposes a real-time cross-domain segmentation adaptation scheme for SSS images based on adversarial training via min–max training to distribute SSS images in the output space and marginal distribution adaption to improve the segmentation performance by minimizing the measured distribution distance. To further enhance the adapted model, the multilayer feature discriminators are established to realize the fine-grained alignment. Experiments on the real-world SSS datasets demonstrate that our proposed model outperforms state-of-the-art methods and achieves the actual industrial application for AUV.