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Towards Robust Adaptive Object Detection under Noisy Annotations

Computer Vision and Pattern Recognition 2022-04-07 v1

Abstract

Domain Adaptive Object Detection (DAOD) models a joint distribution of images and labels from an annotated source domain and learns a domain-invariant transformation to estimate the target labels with the given target domain images. Existing methods assume that the source domain labels are completely clean, yet large-scale datasets often contain error-prone annotations due to instance ambiguity, which may lead to a biased source distribution and severely degrade the performance of the domain adaptive detector de facto. In this paper, we represent the first effort to formulate noisy DAOD and propose a Noise Latent Transferability Exploration (NLTE) framework to address this issue. It is featured with 1) Potential Instance Mining (PIM), which leverages eligible proposals to recapture the miss-annotated instances from the background; 2) Morphable Graph Relation Module (MGRM), which models the adaptation feasibility and transition probability of noisy samples with relation matrices; 3) Entropy-Aware Gradient Reconcilement (EAGR), which incorporates the semantic information into the discrimination process and enforces the gradients provided by noisy and clean samples to be consistent towards learning domain-invariant representations. A thorough evaluation on benchmark DAOD datasets with noisy source annotations validates the effectiveness of NLTE. In particular, NLTE improves the mAP by 8.4\% under 60\% corrupted annotations and even approaches the ideal upper bound of training on a clean source dataset.

Keywords

Cite

@article{arxiv.2204.02620,
  title  = {Towards Robust Adaptive Object Detection under Noisy Annotations},
  author = {Xinyu Liu and Wuyang Li and Qiushi Yang and Baopu Li and Yixuan Yuan},
  journal= {arXiv preprint arXiv:2204.02620},
  year   = {2022}
}

Comments

CVPR-2022 Version

R2 v1 2026-06-24T10:39:25.859Z