文章摘要
章倩丽,李秋生.基于PP-YOLO深度学习模型的赣南脐橙目标检测方法[J].井冈山大学自然版,2022,43(6):64-70
基于PP-YOLO深度学习模型的赣南脐橙目标检测方法
FRUIT RECOGNITION METHOD OF GANNAN NAVEL ORANGE BASED ON PP-YOLO DEEP LEARNING MODEL
投稿时间:2022-02-13  修订日期:2022-03-06
DOI:10.3969/j.issn.1674-8085.2022.06.010
中文关键词: 目标检测  果实识别  机器视觉  PP-YOLO
英文关键词: machine vision  fruit identification  target detection  PP-YOLO
基金项目:国家自然科学基金项目(42061027)
作者单位
章倩丽 赣南师范大学智能控制工程技术研究中心, 江西, 赣州 341000
赣南师范大学物理与电子信息学院, 江西, 赣州 341000 
李秋生 赣南师范大学智能控制工程技术研究中心, 江西, 赣州 341000
赣南师范大学物理与电子信息学院, 江西, 赣州 341000 
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中文摘要:
      果实检测在研究脐橙采摘机械化发展中有着重要作用,然而不良天气条件将对目标果实的检测和识别产生不利影响。针对雾天和雨天情形下脐橙果实图像模糊、噪声复杂,检测速度较慢和准确率较低的问题,通过采用单阶段目标检测网络PP-YOLO来研究不良天气条件下赣南脐橙果实的识别。通过主干网络ResNet提取特征并结合FPN(特征金字塔网络)进行特征融合实现多尺度检测,且基本实现端到端检测。实验结果表明,所提出的PP-YOLO检测模型可实现雾天和雨天情况下赣南脐橙检测任务,mAP分别为89.06%和91.01%,识别效率分别可达到75.30 fps和75.44 fps,可以尝试在脐橙采摘机器人的研制中加以应用。
英文摘要:
      Fruit detection plays an important role in studying the development of navel orange picking mechanization. However, adverse weather conditions will have an adverse impact on the detection and identification of target fruits. Aiming at the problems of blurry images, complex noise, slow detection speed and low accuracy rate of navel orange fruit under foggy and rainy days, this paper uses a single-stage target detection network PP-YOLO to study the identification of Gannan navel orange fruit under bad weather conditions. Feature extraction is achieved by the backbone network ResNet and feature fusion by combining FPN (feature pyramid network), and end-to-end detection is basically realized. The experimental results show that the proposed PP-YOLO detection model can realize the Gannan navel orange detection task under fog and rainy days, the mAP is 89.06% and 91.01%, and the recognition efficiency can reach 75.30 and 75.44fps, respectively, which can be tried to be applied in the development of navel orange picking robot.
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