Ripeness identification of pitaya fruit based on YOLOv 8 and PSP-Ellipse
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(1. Qinhuangdao Polytechnic Institute , Qinhuangdao , Hebei 066000 , China; 2. North China University of Science and Technology , Tangshan , Hebei 063210 , China; 3. Hebei Agricultural University , Baoding , Hebei 071001 , China)

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    Abstract:

    [[Objective ]] Improve the accuracy and robustness of maturity detection of pitaya fruit.[[Methods ]] Combining the YOLOv 8 object detection model with the PSP -Ellipse segmentation algorithm,an efficient and accurate automatic identification method for pitaya fruit maturity was proposed.First,the real -time target detection function of YOLOv 8 was used to locate and identify the pitaya fruit initially.Then the shape recognition capability of PSP -Ellipse was used to further fine classify the shape and maturity of the pitaya fruit.[[Results]] The accuracy rate of maturity classification of pitaya fruit was 97.6%,and the robustness was strong.[[Conclusion ]] This method can significantly improve the automatic classification efficiency of pitaya fruit under complex backgrounds and various lighting conditions.

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刘昕璞,赵春雷,李志锋,等.基于YOLOv 8和PSP-Ellipse的火龙果成熟度识别[J].食品与机械英文版,2024,40(10):122-128.

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History
  • Received:June 17,2024
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  • Online: February 18,2025
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