2024
DOI: 10.3390/app14072844
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Diverse Feature-Level Guidance Adjustments for Unsupervised Domain Adaptative Object Detection

Yuhe Zhu,
Chang Liu,
Yunfei Bai
et al.

Abstract: Unsupervised Domain Adaptative Object Detection (UDAOD) aims to alleviate the gap between the source domain and the target domain. Previous methods sought to plainly align global and local features across domains but adapted numerous pooled features and overlooked contextual information, which caused incorrect perceptions of foreground information. To tackle these problems, we propose Diverse Feature-level Guidance Adjustments (DFGAs) for two-stage object detection frameworks, including Pixel-wise Multi-scale … Show more

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