CVMay 20, 2024

Versatile Teacher: A Class-aware Teacher-student Framework for Cross-domain Adaptation

arXiv:2405.11754v122 citationsh-index: 11Has CodePattern Recognition
Originality Incremental advance
AI Analysis

This work addresses domain adaptation for object detection, particularly for one-stage detectors, offering incremental improvements in a specific domain.

The paper tackles the problem of domain shift in cross-domain object detection by proposing a teacher-student framework that considers class-specific detection difficulty and uses a pseudo-label selection mechanism to improve accuracy, achieving promising results on three benchmark datasets.

Addressing the challenge of domain shift between datasets is vital in maintaining model performance. In the context of cross-domain object detection, the teacher-student framework, a widely-used semi-supervised model, has shown significant accuracy improvements. However, existing methods often overlook class differences, treating all classes equally, resulting in suboptimal results. Furthermore, the integration of instance-level alignment with a one-stage detector, essential due to the absence of a Region Proposal Network (RPN), remains unexplored in this framework. In response to these shortcomings, we introduce a novel teacher-student model named Versatile Teacher (VT). VT differs from previous works by considering class-specific detection difficulty and employing a two-step pseudo-label selection mechanism, referred to as Class-aware Pseudo-label Adaptive Selection (CAPS), to generate more reliable pseudo labels. These labels are leveraged as saliency matrices to guide the discriminator for targeted instance-level alignment. Our method demonstrates promising results on three benchmark datasets, and extends the alignment methods for widely-used one-stage detectors, presenting significant potential for practical applications. Code is available at https://github.com/RicardooYoung/VersatileTeacher.

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