Guardado en:
Detalles Bibliográficos
Autores principales: Li, Chengzhou, Guo, Ping, Meng, Guanchen, Jia, Qi, Liu, Jinyuan, Liu, Zhu, Liu, Xiaokang, Liu, Yu, Luo, Zhongxuan, Fan, Xin
Formato: Preprint
Publicado: 2026
Materias:
Acceso en línea:https://arxiv.org/abs/2601.12715
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866912831977291776
author Li, Chengzhou
Guo, Ping
Meng, Guanchen
Jia, Qi
Liu, Jinyuan
Liu, Zhu
Liu, Xiaokang
Liu, Yu
Luo, Zhongxuan
Fan, Xin
author_facet Li, Chengzhou
Guo, Ping
Meng, Guanchen
Jia, Qi
Liu, Jinyuan
Liu, Zhu
Liu, Xiaokang
Liu, Yu
Luo, Zhongxuan
Fan, Xin
contents Object detection in sonar images is a key technology in underwater detection systems. Compared to natural images, sonar images contain fewer texture details and are more susceptible to noise, making it difficult for non-experts to distinguish subtle differences between classes. This leads to their inability to provide precise annotation data for sonar images. Therefore, designing effective object detection methods for sonar images with extremely limited labels is particularly important. To address this, we propose a teacher-student framework called RSOD, which aims to fully learn the characteristics of sonar images and develop a pseudo-label strategy suitable for these images to mitigate the impact of limited labels. First, RSOD calculates a reliability score by assessing the consistency of the teacher's predictions across different views. To leverage this score, we introduce an object mixed pseudo-label method to tackle the shortage of labeled data in sonar images. Finally, we optimize the performance of the student by implementing a reliability-guided adaptive constraint. By taking full advantage of unlabeled data, the student can perform well even in situations with extremely limited labels. Notably, on the UATD dataset, our method, using only 5% of labeled data, achieves results that can compete against those of our baseline algorithm trained on 100% labeled data. We also collected a new dataset to provide more valuable data for research in the field of sonar.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12715
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RSOD: Reliability-Guided Sonar Image Object Detection with Extremely Limited Labels
Li, Chengzhou
Guo, Ping
Meng, Guanchen
Jia, Qi
Liu, Jinyuan
Liu, Zhu
Liu, Xiaokang
Liu, Yu
Luo, Zhongxuan
Fan, Xin
Computer Vision and Pattern Recognition
Artificial Intelligence
Object detection in sonar images is a key technology in underwater detection systems. Compared to natural images, sonar images contain fewer texture details and are more susceptible to noise, making it difficult for non-experts to distinguish subtle differences between classes. This leads to their inability to provide precise annotation data for sonar images. Therefore, designing effective object detection methods for sonar images with extremely limited labels is particularly important. To address this, we propose a teacher-student framework called RSOD, which aims to fully learn the characteristics of sonar images and develop a pseudo-label strategy suitable for these images to mitigate the impact of limited labels. First, RSOD calculates a reliability score by assessing the consistency of the teacher's predictions across different views. To leverage this score, we introduce an object mixed pseudo-label method to tackle the shortage of labeled data in sonar images. Finally, we optimize the performance of the student by implementing a reliability-guided adaptive constraint. By taking full advantage of unlabeled data, the student can perform well even in situations with extremely limited labels. Notably, on the UATD dataset, our method, using only 5% of labeled data, achieves results that can compete against those of our baseline algorithm trained on 100% labeled data. We also collected a new dataset to provide more valuable data for research in the field of sonar.
title RSOD: Reliability-Guided Sonar Image Object Detection with Extremely Limited Labels
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2601.12715