Unanticipated domain shifts can severely degrade model performance, prompting the need for model adaptation techniques (i.e., Source-free Domain Adaptation (SFDA)) to adapt a model to new domains without accessing source data. However, existing SFDA methods often sacrifice source domain performance to improve adaptation on the target, limiting overall model capability. In this paper, we focus on a more challenging paradigm in semantic segmentation, Generalized SFDA (G-SFDA), aiming to achieve robust performance on both source and target domains. To achieve this, we propose a novel G-SFDA framework, Reliable Knowledge Propagation (RKP), for semantic segmentation tasks, which leverages the text-to-image diffusion model to propagate reliable semantic knowledge from the segmentation model. The key of RKP lies in aggregating the predicted reliable but scattered segments into a complete semantic layout and using them to activate the diffusion model for conditional generation. Subsequently, diverse images with multiple domain factors can be synthesized to retrain the segmentation model. This enables the segmentation model to learn domain-invariant knowledge across multiple domains, improving its adaptability to target domain, maintaining discriminability to source domain, and even handling unseen domains. Our model-agnostic RKP framework establishes new state-of-the-art across current SFDA segmentation benchmarks, significantly advancing various SFDA methods. The code will be open source.
Generalized Source-Free Domain-adaptive Segmentation via Reliable Knowledge Propagation / Zang, Q.; Wang, S.; Zhao, D.; Hu, Y.; Quan, D.; Li, J.; Sebe, N.; Zhong, Z.. - (2024), pp. 5967-5976. (Intervento presentato al convegno 32nd ACM International Conference on Multimedia, MM 2024 tenutosi a aus nel 2024) [10.1145/3664647.3680567].
Generalized Source-Free Domain-adaptive Segmentation via Reliable Knowledge Propagation
Li J.;Sebe N.;Zhong Z.
2024-01-01
Abstract
Unanticipated domain shifts can severely degrade model performance, prompting the need for model adaptation techniques (i.e., Source-free Domain Adaptation (SFDA)) to adapt a model to new domains without accessing source data. However, existing SFDA methods often sacrifice source domain performance to improve adaptation on the target, limiting overall model capability. In this paper, we focus on a more challenging paradigm in semantic segmentation, Generalized SFDA (G-SFDA), aiming to achieve robust performance on both source and target domains. To achieve this, we propose a novel G-SFDA framework, Reliable Knowledge Propagation (RKP), for semantic segmentation tasks, which leverages the text-to-image diffusion model to propagate reliable semantic knowledge from the segmentation model. The key of RKP lies in aggregating the predicted reliable but scattered segments into a complete semantic layout and using them to activate the diffusion model for conditional generation. Subsequently, diverse images with multiple domain factors can be synthesized to retrain the segmentation model. This enables the segmentation model to learn domain-invariant knowledge across multiple domains, improving its adaptability to target domain, maintaining discriminability to source domain, and even handling unseen domains. Our model-agnostic RKP framework establishes new state-of-the-art across current SFDA segmentation benchmarks, significantly advancing various SFDA methods. The code will be open source.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione