4.5 Article

Player detection method based on scale attention and scale equalization algorithm

期刊

FRONTIERS IN NEUROROBOTICS
卷 17, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fnbot.2023.1289203

关键词

multi-scale target detection; scale attention; SIoU; scale equalization; implicit feature fusion

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This study proposes a method to address the challenges in object detection for team ball games players. It introduces a multi-scale attention mechanism and a scale equalization algorithm to improve detection accuracy.
IntroductionObject detection methods for team ball games players often struggle due to their reliance on dataset scale statistics, resulting in missed detections for players with smaller bounding boxes and reduced accuracy for larger bounding boxes.MethodsThis study introduces a two-fold approach to address these challenges. Firstly, a novel multi-scale attention mechanism is proposed, aiming to reduce reliance on scale statistics by utilizing a specially created SIoU (Similar to Intersection over Union) label that explicitly represents multi-scale features. This label guides the training of multi-scale attention network modules at two granularity levels. Secondly, an integrated scale equalization algorithm within SIoU labels enhances the detection ability of multi-scale targets in imbalanced samples.Results and discussionComparative experiments conducted on basketball, volleyball, and ice hockey datasets validate the proposed method. The relative optimal approach demonstrated improvements in the detection accuracy of players with smaller and larger scale bounding boxes by 11%, 7%, 15%, 8%, 9%, and 4%, respectively.

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