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Recognition of basketball players’ action detection based on visual image and Harris corner extraction algorithm

Zongshuai Hao, Xin Wang, Shoucun Zheng

2020Journal of Intelligent & Fuzzy Systems22 citationsDOI

Abstract

At present, there are efficiency problems in related algorithms for athlete detection and recognition. Based on this, this study analyzes the characteristics of athletes’ sports process. In this study, the Otsu method was used to perform grayscale feature processing. At the same time, based on the Harris corner extraction algorithm, this study proposes that the multi-target tracking combined with the corner feature of the target can be used to track different parts of the athlete as different target areas. In addition, this study uses a sequential algorithm to perform connected component labeling. Finally, in order to test the performance and recognition efficiency of the proposed algorithm, the performance of the algorithm is explored through experimental analysis. The research shows that the algorithm has good performance and has certain practical effects, and it has certain reference significance for subsequent related research.

Topics & Concepts

Computer scienceGrayscaleCorner detectionArtificial intelligenceBasketballAlgorithmFeature extractionFeature (linguistics)Process (computing)Image (mathematics)Image processingComputer visionPattern recognition (psychology)PhilosophyLinguisticsArchaeologyHistoryOperating systemAI and Big Data ApplicationsAI and Multimedia in EducationAdvanced Computing and Algorithms
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