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食品研究与开发:2021,42(14):138-144
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基于深度卷积神经网络的樱桃分级检测
(1.大连大学辽宁省北斗高精度位置服务技术工程实验室,辽宁 大连 116622;2.大连大学大连市环境感知与智能控制重点实验室,辽宁 大连 116622)
Cherry Grading Using A Deep Convolutional Neural Network
(1.Beidou High Precision Positioning Service Technology Engineering Laboratory of Liaoning Province,Dalian University,Dalian 116622,Liaoning,China;2.Environment Sensing and Intelligent Control Key Laboratory of Dalian,Dalian University,Dalian 116622,Liaoning,China)
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投稿时间:2021-03-30    
中文摘要: 为使樱桃达到标准化和商品化,加大樱桃产值,樱桃分级成为不可或缺的环节。该文提出一种基于深度学习关键点检测方法对樱桃的大小分级和有无果梗进行判别。通过卷积神经网络自动提取樱桃的关键点特征,构建回归网络模型得到樱桃果梗首末两端和果萼两侧的关键点坐标,从而达到樱桃分级的目的。试验结果表明樱桃大小检测准确率为93.14%,有无果梗判定准确率为90.57%,基于深度学习的关键点回归检测方法能够有效检测樱桃尺寸和有无果梗,具有较高的准确率,检测速度为33 fps,能够满足实时性需求。
Abstract:To standardize cherry quality assessments for improved commercialization and increased market value,cherry grading has become an indispensable tool.This paper proposes a key point detection method based on deep learning to classify cherries by size and stalk characteristics.A convolutional neural network was used to automatically extract key characteristics of each cherry.A regression network model was then built to coordinate key points at both ends of the fruit stem and both sides of the fruit calyx,to achieve the goal of cherry grading.The accuracy of cherry size detection was 93.14%,and the accuracy of cherry stalk determination was 90.57%.The key point regression detection method based on deep learning effectively detected cherry size and stalk characteristics with high accuracy,and a detection speed of 33 fps,which could meet real-time requirements.
文章编号:202114022     中图分类号:    文献标志码:
基金项目:国家自然科学基金(61601076)
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