Litcius/Paper detail

Contrastive Mean Teacher for Domain Adaptive Object Detectors

Shengcao Cao, Dhiraj Joshi, Liang-Yan Gui, Yu-Xiong Wang

2023109 citationsDOI

Abstract

Object detectors often suffer from the domain gap between training (source domain) and real-world applications (target domain). Mean-teacher self-training is a powerful paradigm in unsupervised domain adaptation for object detection, but it struggles with low-quality pseudo-labels. In this work, we identify the intriguing alignment and synergy between mean-teacher self-training and contrastive learning. Motivated by this, we propose Contrastive Mean Teacher (CMT) - a unified, general-purpose framework with the two paradigms naturally integrated to maximize beneficial learning signals. Instead of using pseudo-labels solely for final predictions, our strategy extracts object-level features using pseudo-labels and optimizes them via contrastive learning, without requiring labels in the target domain. When combined with recent mean-teacher self-training methods, CMT leads to new state-of-the-art target-domain performance: 51.9% mAP on Foggy Cityscapes, outperforming the previously best by 2.1% mAP. Notably, CMT can stabilize performance and provide more significant gains as pseudo-label noise increases.

Topics & Concepts

Computer scienceDomain (mathematical analysis)Object (grammar)Artificial intelligenceDomain adaptationNoise (video)Object detectionDetectorQuality (philosophy)Pattern recognition (psychology)Learning objectAdaptation (eye)Computer visionMachine learningImage (mathematics)MathematicsPsychologyMathematical analysisNeuroscienceClassifier (UML)EpistemologyPhilosophyTelecommunicationsDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsVideo Surveillance and Tracking Methods
Contrastive Mean Teacher for Domain Adaptive Object Detectors | Litcius