Litcius/Paper detail

Virtual Category Learning: A Semi-Supervised Learning Method for Dense Prediction With Extremely Limited Labels

Changrui Chen, Jungong Han, Kurt Debattista

2024IEEE Transactions on Pattern Analysis and Machine Intelligence76 citationsDOI

Abstract

Due to the costliness of labelled data in real-world applications, semi-supervised learning, underpinned by pseudo labelling, is an appealing solution. However, handling confusing samples is nontrivial: discarding valuable confusing samples would compromise the model generalisation while using them for training would exacerbate the issue of confirmation bias caused by the resulting inevitable mislabelling. To solve this problem, this paper proposes to use confusing samples proactively without label correction. Specifically, a Virtual Category (VC) is assigned to each confusing sample in such a way that it can safely contribute to the model optimisation even without a concrete label. This provides an upper bound for inter-class information sharing capacity, which eventually leads to a better embedding space. Extensive experiments on two mainstream dense prediction tasks - semantic segmentation and object detection, demonstrate that the proposed VC learning significantly surpasses the state-of-the-art, especially when only very few labels are available. Our intriguing findings highlight the usage of VC learning in dense vision tasks.

Topics & Concepts

Artificial intelligenceComputer scienceSemi-supervised learningMachine learningSupervised learningInstance-based learningPattern recognition (psychology)Artificial neural networkDomain Adaptation and Few-Shot LearningMachine Learning and Data ClassificationText and Document Classification Technologies