CVOct 11, 2024

DA-Ada: Learning Domain-Aware Adapter for Domain Adaptive Object Detection

arXiv:2410.09004v112 citationsh-index: 9Has CodeNIPS
Originality Incremental advance
AI Analysis

This work addresses domain shift in object detection for computer vision applications, representing an incremental improvement over existing adapter-based methods.

The paper tackles domain adaptive object detection by proposing a Domain-Aware Adapter (DA-Ada) that combines domain-invariant and domain-specific knowledge, improving performance across multiple tasks.

Domain adaptive object detection (DAOD) aims to generalize detectors trained on an annotated source domain to an unlabelled target domain. As the visual-language models (VLMs) can provide essential general knowledge on unseen images, freezing the visual encoder and inserting a domain-agnostic adapter can learn domain-invariant knowledge for DAOD. However, the domain-agnostic adapter is inevitably biased to the source domain. It discards some beneficial knowledge discriminative on the unlabelled domain, i.e., domain-specific knowledge of the target domain. To solve the issue, we propose a novel Domain-Aware Adapter (DA-Ada) tailored for the DAOD task. The key point is exploiting domain-specific knowledge between the essential general knowledge and domain-invariant knowledge. DA-Ada consists of the Domain-Invariant Adapter (DIA) for learning domain-invariant knowledge and the Domain-Specific Adapter (DSA) for injecting the domain-specific knowledge from the information discarded by the visual encoder. Comprehensive experiments over multiple DAOD tasks show that DA-Ada can efficiently infer a domain-aware visual encoder for boosting domain adaptive object detection. Our code is available at https://github.com/Therock90421/DA-Ada.

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