Cross Domain Object Detection via Multi-Granularity Confidence Alignment based Mean Teacher
Jiangming Chen, Li Liu, Wanxia Deng, Zhen Liu, Yu Liu, Yingmei Wei,, Yongxiang Liu

TL;DR
This paper introduces a novel framework called MGCAMT that improves cross domain object detection by aligning confidence at multiple levels, reducing noise from pseudo labels and enhancing teacher-student learning.
Contribution
The paper proposes a comprehensive multi-granularity confidence alignment framework that addresses confidence misalignment issues at category, instance, and image levels in cross domain detection.
Findings
Improved detection accuracy on target domain datasets.
Effective reduction of noisy pseudo labels.
Enhanced teacher-student mutual learning performance.
Abstract
Cross domain object detection learns an object detector for an unlabeled target domain by transferring knowledge from an annotated source domain. Promising results have been achieved via Mean Teacher, however, pseudo labeling which is the bottleneck of mutual learning remains to be further explored. In this study, we find that confidence misalignment of the predictions, including category-level overconfidence, instance-level task confidence inconsistency, and image-level confidence misfocusing, leading to the injection of noisy pseudo label in the training process, will bring suboptimal performance on the target domain. To tackle this issue, we present a novel general framework termed Multi-Granularity Confidence Alignment Mean Teacher (MGCAMT) for cross domain object detection, which alleviates confidence misalignment across category-, instance-, and image-levels simultaneously to…
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Taxonomy
TopicsVehicle License Plate Recognition · Advanced Neural Network Applications · Brain Tumor Detection and Classification
MethodsALIGN
