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Main Authors: Wang, Yicheng, Liu, Feng, Liu, Junmin, Sun, Kai
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.18140
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author Wang, Yicheng
Liu, Feng
Liu, Junmin
Sun, Kai
author_facet Wang, Yicheng
Liu, Feng
Liu, Junmin
Sun, Kai
contents As a promising field in open-world learning, \textit{Novel Class Discovery} (NCD) is usually a task to cluster unseen novel classes in an unlabeled set based on the prior knowledge of labeled data within the same domain. However, the performance of existing NCD methods could be severely compromised when novel classes are sampled from a different distribution with the labeled ones. In this paper, we explore and establish the solvability of NCD with cross domain setting under the necessary condition that the style information needs to be removed. Based on the theoretical analysis, we introduce an exclusive style removal module for extracting style information that is distinctive from the baseline features, thereby facilitating inference. Moreover, this module is easy to integrate with other NCD methods, acting as a plug-in to improve performance on novel classes with different distributions compared to the labeled set. Additionally, recognizing the non-negligible influence of different backbones and pre-training strategies on the performance of the NCD methods, we build a fair benchmark for future NCD research. Extensive experiments on three common datasets demonstrate the effectiveness of our proposed style removal strategy.
format Preprint
id arxiv_https___arxiv_org_abs_2406_18140
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Exclusive Style Removal for Cross Domain Novel Class Discovery
Wang, Yicheng
Liu, Feng
Liu, Junmin
Sun, Kai
Computer Vision and Pattern Recognition
Artificial Intelligence
As a promising field in open-world learning, \textit{Novel Class Discovery} (NCD) is usually a task to cluster unseen novel classes in an unlabeled set based on the prior knowledge of labeled data within the same domain. However, the performance of existing NCD methods could be severely compromised when novel classes are sampled from a different distribution with the labeled ones. In this paper, we explore and establish the solvability of NCD with cross domain setting under the necessary condition that the style information needs to be removed. Based on the theoretical analysis, we introduce an exclusive style removal module for extracting style information that is distinctive from the baseline features, thereby facilitating inference. Moreover, this module is easy to integrate with other NCD methods, acting as a plug-in to improve performance on novel classes with different distributions compared to the labeled set. Additionally, recognizing the non-negligible influence of different backbones and pre-training strategies on the performance of the NCD methods, we build a fair benchmark for future NCD research. Extensive experiments on three common datasets demonstrate the effectiveness of our proposed style removal strategy.
title Exclusive Style Removal for Cross Domain Novel Class Discovery
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2406.18140