Publication | Closed Access
Tiny Object Detection in Aerial Images
318
Citations
40
References
2021
Year
Unknown Venue
Image ClassificationConvolutional Neural NetworkImage AnalysisFeature DetectionMachine VisionMachine LearningPattern RecognitionObject DetectionObject RecognitionEngineeringObject Detection DatasetsComputer ScienceTiny Object DetectionVision RecognitionComputer Vision
Object detection in Earth Vision has achieved great progress in recent years. However, tiny object detection in aerial images remains a very challenging problem since the tiny objects contain a small number of pixels and are easily confused with the background. To advance tiny object detection research in aerial images, we present a new dataset for Tiny Object Detection in Aerial Images (AI-TOD). Specifically, AI-TOD comes with 700,621 object instances for eight categories across 28,036 aerial images. Compared to existing object detection datasets in aerial images, the mean size of objects in AI-TOD is about 12.8 pixels, which is much smaller than others. To build a benchmark for tiny object detection in aerial images, we evaluate the state-of-the-art object detectors on our AI-TOD dataset. Experimental results show that direct application of these approaches on AI-TOD produces suboptimal object detection results, thus new specialized detectors for tiny object detection need to be designed. Therefore, we propose a multiple center points based learning network (M-CenterNet) to improve the localization performance of tiny object detection, and experimental results show the significant performance gain over the competitors.
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