Back to Search Start Over

Towards End-to-End Unsupervised Saliency Detection with Self-Supervised Top-Down Context

Authors :
Song, Yicheng
Gao, Shuyong
Xing, Haozhe
Cheng, Yiting
Wang, Yan
Zhang, Wenqiang
Publication Year :
2023

Abstract

Unsupervised salient object detection aims to detect salient objects without using supervision signals eliminating the tedious task of manually labeling salient objects. To improve training efficiency, end-to-end methods for USOD have been proposed as a promising alternative. However, current solutions rely heavily on noisy handcraft labels and fail to mine rich semantic information from deep features. In this paper, we propose a self-supervised end-to-end salient object detection framework via top-down context. Specifically, motivated by contrastive learning, we exploit the self-localization from the deepest feature to construct the location maps which are then leveraged to learn the most instructive segmentation guidance. Further considering the lack of detailed information in deepest features, we exploit the detail-boosting refiner module to enrich the location labels with details. Moreover, we observe that due to lack of supervision, current unsupervised saliency models tend to detect non-salient objects that are salient in some other samples of corresponding scenarios. To address this widespread issue, we design a novel Unsupervised Non-Salient Suppression (UNSS) method developing the ability to ignore non-salient objects. Extensive experiments on benchmark datasets demonstrate that our method achieves leading performance among the recent end-to-end methods and most of the multi-stage solutions. The code is available.<br />Comment: accepted by ACM MM 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.09533
Document Type :
Working Paper