Affiliation:
1. School of Remote Sensing and Information Engineering Wuhan University Wuhan China
2. Department of Mathematics and Theories Peng Cheng Laboratory Shenzhen China
Abstract
AbstractAlbeit general object detection has made impressive progress in the last decade, as a significant subfield, small object detection still performs far from satisfactorily, which is impeded by several challenges, such as small size, severe occlusion and variant scales. To tackle these challenges, we propose a coarse‐to‐fine small object detection method leveraging density‐aware scale adaptation. Firstly, we employ global sketchy prediction via a coarse network in large scenes and generate adaptively scaled block regions with potential targets. Subsequently, we perform local accurate detection by a fine network for instances in densely packed areas with approximately unified scales. In particular, a density map with object distribution information is utilised to provide a scene classification auxiliary to instruct scale transformation. Extensive experiments on the popular remote sensing benchmark AI‐TOD and representative small object datasets VisDrone and UAVDT demonstrate the superiority of our method for small object detection, achieving an improvement of 2.9% mAP‐vt and 2.1% mAP on AI‐TOD, and outperforming the state‐of‐the‐art methods on VisDrone and UAVDT with an enhancement of 1.7% mAP and 2.0% mAP50, respectively.
Subject
Earth and Planetary Sciences (miscellaneous),Computers in Earth Sciences,Computer Science Applications,Engineering (miscellaneous)
Cited by
8 articles.
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