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Predicting Class Distribution Shift for Reliable Domain Adaptive Object Detection

N Chapman, Feras Dayoub, Will N. Browne, Chris Lehnert

2023IEEE Robotics and Automation Letters10 citationsDOI

Abstract

Unsupervised Domain Adaptive Object Detection (UDA-OD) uses unlabelled data to improve the reliability of robotic vision systems in open-world environments. Previous approaches to UDA-OD based on self-training have been effective in overcoming changes in the general appearance of images. However, shifts in a robot's deployment environment can also impact the likelihood that different objects will occur, termed class distribution shift. Motivated by this, we propose a framework for explicitly addressing class distribution shift to improve pseudo-label reliability in self-training. Our approach uses the domain invariance and contextual understanding of a pre-trained joint vision and language model to predict the class distribution of unlabelled data. By aligning the class distribution of pseudo-labels with this prediction, we provide weak supervision of pseudo-label accuracy. To further account for low quality pseudo-labels early in self-training, we propose an approach to dynamically adjust the number of pseudo-labels per image based on model confidence. Our method outperforms state-of-the-art approaches on several benchmarks, including a 4.7 mAP improvement when facing challenging class distribution shift.

Topics & Concepts

Computer scienceArtificial intelligenceClass (philosophy)Reliability (semiconductor)Domain (mathematical analysis)Object (grammar)Machine learningPattern recognition (psychology)Computer visionMathematicsQuantum mechanicsMathematical analysisPhysicsPower (physics)Domain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsCOVID-19 diagnosis using AI
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