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Video Tiny-Object Detection Guided by the Spatial-Temporal Motion Information

Xin Yang, Gang Wang, Weiming Hu, Jin Gao, Shubo Lin, Liang Li, Kai Gao, Yizheng Wang

202317 citationsDOI

Abstract

Detecting tiny/small objects (e.g., drone targets) in videos is highly desired in many realistic scenarios. Nevertheless, current object detection algorithms can hardly recognize tiny targets against extremely complex backgrounds. To address this problem, we propose a motion-guided video tiny-object detection method (MG-VTOD), in which the spatial-temporal motion strength maps play an important role in object searching and locating. Inspired by the biological retinal structure, we compute the motion strength using a sequential frame cube that has been aligned and registered. Subsequently, the motion strength maps are employed to enhance the potential areas of the moving targets, thereby facilitating the target detection procedure. Experimental results obtained on the Anti-UAV-2021 dataset validate that the proposed MG-VTOD method significantly outperforms the competing object detection methods.

Topics & Concepts

Computer scienceComputer visionArtificial intelligenceObject detectionMotion (physics)Object (grammar)Cube (algebra)DroneFrame (networking)Motion estimationMotion detectionPattern recognition (psychology)MathematicsGeneticsBiologyCombinatoricsTelecommunicationsAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsVisual Attention and Saliency Detection
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