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Sports Camera Pose Refinement Using an Evolution Strategy

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arxiv 2211.02143 v2 pith:BHTLCMRC submitted 2022-11-03 cs.NE

Sports Camera Pose Refinement Using an Evolution Strategy

classification cs.NE
keywords camerasportsevolutionstrategyextrinsicfieldmethodparameters
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper presents a robust end-to-end method for sports cameras extrinsic parameters optimization using a novel evolution strategy. First, we developed a neural network architecture for an edge or area-based segmentation of a sports field. Secondly, we implemented the evolution strategy, which purpose is to refine extrinsic camera parameters given a single, segmented sports field image. Experimental comparison with state-of-the-art camera pose refinement methods on real-world data demonstrates the superiority of the proposed algorithm. We also perform an ablation study and propose a way to generalize the method to additionally refine the intrinsic camera matrix.

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