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A Residual Attention-based EfficientNet Homography Estimation Model for Sports Field Registration

Yin May Oo, Ankhzaya Jamsrandorj, Vanyi Chao, Kyung-Ryoul Mun, Jinwook Kim

202310 citationsDOI

Abstract

Accurate sports field registration plays a crucial role in computer vision for effective team sports analysis, as it provides the ability to track and recognize the positions, movements, and interactions of players from image space to real-world field space. In this paper, we propose a two-stage deep learning framework for sports field registration. In the first-stage network, we utilize a Residual EfficientNet-Attention U-Net architecture to estimate the initial homography matrix using predefined keypoints to register sports fields. Subsequently, our second-stage network refines the initial homography for improved accuracy. We evaluate our proposed method on the public sports datasets to show its outperform results against the state-of-the-art methods in some evaluation metrics.

Topics & Concepts

HomographyComputer scienceResidualField (mathematics)Artificial intelligenceComputer visionMachine learningAlgorithmMathematicsStatisticsProjective testPure mathematicsProjective spaceVideo Analysis and SummarizationHuman Pose and Action RecognitionAdvanced Neural Network Applications
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