Authors
Wenping Ma, Na Li, Hao Zhu, Licheng Jiao, Xu Tang, Yuwei Guo, Biao Hou
Publication date
2022/1/6
Journal
IEEE Transactions on Geoscience and Remote Sensing
Volume
60
Pages
1-17
Publisher
IEEE
Description
Recently, multicategory object detection in high-resolution remote sensing images is still a challenge. First, objects with significant scale differences exist in one scene simultaneously, so it is generally difficult for the detectors to balance the detection performance of large and small objects. Second, because of the complex background and the objects’ densely distributed characteristics in the remote sensing images, the extracted features usually have noise and blurred boundaries, which interfere with the detection performance of the object detectors. With this observation, we propose an end-to-end scale-aware network called feature split–merge–enhancement network (SME-Net) for remote sensing object detection, composed of the feature split-and-merge (FSM) module, the offset-error rectification (OER) module, and the object saliency enhancement (OSE) strategy. FSM eliminates salient information of large …
Total citations
202220232024154117
Scholar articles
W Ma, N Li, H Zhu, L Jiao, X Tang, Y Guo, B Hou - IEEE Transactions on Geoscience and Remote …, 2022