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Main Authors: Li, Deng, Wu, Aming, Wang, Yaowei, Han, Yahong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.18447
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author Li, Deng
Wu, Aming
Wang, Yaowei
Han, Yahong
author_facet Li, Deng
Wu, Aming
Wang, Yaowei
Han, Yahong
contents Single-domain generalization aims to learn a model from single source domain data to achieve generalized performance on other unseen target domains. Existing works primarily focus on improving the generalization ability of static networks. However, static networks are unable to dynamically adapt to the diverse variations in different image scenes, leading to limited generalization capability. Different scenes exhibit varying levels of complexity, and the complexity of images further varies significantly in cross-domain scenarios. In this paper, we propose a dynamic object-centric perception network based on prompt learning, aiming to adapt to the variations in image complexity. Specifically, we propose an object-centric gating module based on prompt learning to focus attention on the object-centric features guided by the various scene prompts. Then, with the object-centric gating masks, the dynamic selective module dynamically selects highly correlated feature regions in both spatial and channel dimensions enabling the model to adaptively perceive object-centric relevant features, thereby enhancing the generalization capability. Extensive experiments were conducted on single-domain generalization tasks in image classification and object detection. The experimental results demonstrate that our approach outperforms state-of-the-art methods, which validates the effectiveness and generally of our proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2402_18447
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Prompt-Driven Dynamic Object-Centric Learning for Single Domain Generalization
Li, Deng
Wu, Aming
Wang, Yaowei
Han, Yahong
Computer Vision and Pattern Recognition
Single-domain generalization aims to learn a model from single source domain data to achieve generalized performance on other unseen target domains. Existing works primarily focus on improving the generalization ability of static networks. However, static networks are unable to dynamically adapt to the diverse variations in different image scenes, leading to limited generalization capability. Different scenes exhibit varying levels of complexity, and the complexity of images further varies significantly in cross-domain scenarios. In this paper, we propose a dynamic object-centric perception network based on prompt learning, aiming to adapt to the variations in image complexity. Specifically, we propose an object-centric gating module based on prompt learning to focus attention on the object-centric features guided by the various scene prompts. Then, with the object-centric gating masks, the dynamic selective module dynamically selects highly correlated feature regions in both spatial and channel dimensions enabling the model to adaptively perceive object-centric relevant features, thereby enhancing the generalization capability. Extensive experiments were conducted on single-domain generalization tasks in image classification and object detection. The experimental results demonstrate that our approach outperforms state-of-the-art methods, which validates the effectiveness and generally of our proposed method.
title Prompt-Driven Dynamic Object-Centric Learning for Single Domain Generalization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.18447