EFFICIENT AERIAL IMAGE OBJECT DETECTION WITH IMAGING CONDITION DECOMPOSITION
Ren Jin, Zikai Jia, Zhaochen Chu
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SPS
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Object detection in aerial images faces domain adaptive challenges, such as changes in shooting height, viewing angle, and weather. These changes constitute a large number of fine-grained domains that place greater demands on network's generalizability. To tackle these challenges, we propose a submodule named Fine-grained Feature Disentanglement which decomposes image features into domain-invariant and domain-specific using practical imaging condition parameters. The composite feature can improve the domain generalization and single domain accuracy compared to the conventional fine-grained domain detection method. The proposed algorithm is compared with state-of-the-art fine-grained domain detectors on the UAVDT and VisDrone datasets. The results show that it achieves an average detection precision improvement of 5.7 and 2.4, respectively.