Focus-and-Detect: A small object detection framework for aerial images

Despite recent advances, object detection in aerial images is still a challenging task. Specific problems in aerial images makes the detection problem harder, such as small objects, densely packed objects, objects in different sizes and with different orientations. To address small object detection...

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Veröffentlicht in:Signal processing. Image communication 2022-05, Vol.104, p.116675, Article 116675
Hauptverfasser: Koyun, Onur Can, Keser, Reyhan Kevser, Akkaya, İbrahim Batuhan, Töreyin, Behçet Uğur
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Sprache:eng
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Zusammenfassung:Despite recent advances, object detection in aerial images is still a challenging task. Specific problems in aerial images makes the detection problem harder, such as small objects, densely packed objects, objects in different sizes and with different orientations. To address small object detection problem, we propose a two-stage object detection framework called “Focus-and-Detect”. The first stage which consists of an object detector network supervised by a Gaussian Mixture Model, generates clusters of objects constituting the focused regions. The second stage, which is also an object detector network, predicts objects within the focal regions. Incomplete Box Suppression (IBS) method is also proposed to overcome the truncation effect of region search approach. Results indicate that the proposed two-stage framework achieves an AP score of 42.06 on VisDrone validation dataset, surpassing all other state-of-the-art small object detection methods reported in the literature, to the best of authors’ knowledge. •An object detection framework is introduced for small objects in aerial images.•IBS approach is proposed to suppress false detections on overlapping regions.•Scale adjustment for bounding boxes is achieved with GMM based clustering technique.•Proposed framework increases small object detection performance in aerial images.
ISSN:0923-5965
1879-2677
DOI:10.1016/j.image.2022.116675