Weakly Supervised Object Segmentation by Background Conditional Divergence
Hassan Baker, Matthew S. Emigh, and Austin J. Brockmeier

TL;DR
This paper introduces a weakly supervised object segmentation method that leverages background clustering and background conditional divergence to perform binary segmentation with minimal supervision, applicable across specialized image domains.
Contribution
The work presents a novel approach combining background clustering and divergence-based contrast to enable object segmentation using only image-level labels, avoiding the need for extensive pixel-wise annotations.
Findings
Outperforms previous unsupervised segmentation baselines on sonar images.
Achieves reasonable performance on natural images without pretrained or generative models.
Demonstrates applicability across specialized and natural image domains.
Abstract
As a computer vision task, automatic object segmentation remains challenging in specialized image domains without massive labeled data, such as synthetic aperture sonar images, remote sensing, biomedical imaging, etc. In any domain, obtaining pixel-wise segmentation masks is expensive. In this work, we propose a method for training a masking network to perform binary object segmentation using weak supervision in the form of image-wise presence or absence of an object of interest, which provides less information but may be obtained more quickly from manual or automatic labeling. A key step in our method is that the segmented objects can be placed into background-only images to create realistic images of the objects with counterfactual backgrounds. To create a contrast between the original and counterfactual background images, we propose to first cluster the background-only images and…
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