|Table of Contents|

Apple Target Detection Method in Different Scenarios Based on YOLOv3

《北方园艺》[ISSN:1001-0009/CN:23-1247/S]

Issue:
2024年22
Page:
137-146
Research Field:
Publishing date:

Info

Title:
Apple Target Detection Method in Different Scenarios Based on YOLOv3
Author(s):
CHENG Zhenzhen1CHENG Yifan2MIAO Bailing1
(1.College of Horticulture,Xinyang Agriculture and Forestry College,Xinyang,Henan 464399;2.College of Optoelectronic Information Engineering,Huazhong University of Science and Technology,Wuhan,Hubei 430074)
Keywords:
appleYOLOv3target detectiondeep learning
PACS:
S 431.9
DOI:
10.11937/bfyy.20241542
Abstract:
Apple-picking robots relied on precise apple target detection to achieve intelligent picking.However,conditions such as the number of apples,light intensity,and growth stages made apple detection complex.To address this,apples were used as test materials,and the YOLOv3 (You Only Look Once version 3) object detection method was employed to study the effectiveness of apple target detection in different scenarios.The anchor sizes of YOLOv3 were adjusted to optimize the variations in apple size according to the specific characteristics of apple shapes.To verify the effectiveness of the model,experiments were conducted using variables such as the number of apples,different lighting angles,and different growth stages of apples.The proposed algorithm was compared and analyzed with two existing algorithms,YOLOv2 (You Only Look Once version 2) and SSD (Single Shot MultiBox Detector),in terms of target recognition effectiveness.The results indicated that under different conditions,the proposed method achieved F1 scores of over 88% in apple target detection,providing technical support for the development of apple-picking robots.

References:

[1]邱美娟,刘布春,刘园,等.中国北方主产地苹果始花期模拟及晚霜冻风险评估[J].农业工程学报,2020,36(21):154-163.[2]陈青,殷程凯,郭自良,等.苹果采摘机器人关键技术研究现状与发展趋势[J].农业工程学报,2023,39(4):1-15.[3]张彦斐,刘茗洋,宫金良,等.基于两级分割与区域标记梯度Hough圆变换的苹果识别[J].农业工程学报,2022,38(19):110-121.[4]KAPACH K,BARNEA E,MAIRON R,et al.Computer vision for fruit harvesting robots-state of the art and challenges ahead[J].International Journal of Computational Vision and Robotics,2012,3(1/2):4.[5]JI W,ZHAO D,CHENG F,et al.Automatic recognition vision system guided for apple harvesting robot[J].Computers & Electrical Engineering,2012,38(5):1186-1195.[6]RAKUN J,STAJNKO D,ZAZULA D.Detecting fruits in natural scenes by using spatial-frequency based texture analysis and multiview geometry[J].Computers and Electronics in Agriculture,2011,76(1):80-88.[7]田玉宇.复杂环境下苹果采摘机器人的目标识别算法[D].济南:山东师范大学,2020.[8]周桂红,马帅,梁芳芳.基于改进YOLOv4模型的全景图像苹果识别[J].农业工程学报,2022,38(21):159-168.[9]GIRSHICK R,DONAHUE J,DARRELL T,et al.Rich feature hierarchies for accurate object detection and semantic segmentation[C]//Proceedings of the IEEE conference on computer vision and pattern recognition,2014:580-587.[10]GIRSHICK R.Fast R-CNN[C]//International conference on computer vision.IEEE computer society,2015:1440-1448.[11]REN S,HE K,GIRSHICK R,et al.Faster R-CNN: Towards real-time object detection with region proposal networks[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2016,39(6):1137-1149.[12]熊俊涛,刘振,汤林越,等.自然环境下绿色柑橘视觉检测技术研究[J].农业机械学报,2018,49(4):45-52.[13]LIU W,ANGUELOV D,ERHAN D,et al.Ssd:Single shot MultiBox detector[M].Cham:Springer International Publishing,2016.[14]薛月菊,黄宁,涂淑琴,等.未成熟芒果的改进YOLOv2识别方法[J].农业工程学报,2018,34(7):173-179.[15]REDUMON J,FARHADI A.YOLO9000:better,faster,stronger[C]//Proceedings of the IEEE conference on computer vision and pattern recognition,2017:7263-7271.[16]RUSSELL B C,TORRALBA A,MURPHY K P,et al.LabelMe:A database and web-based tool for image annotation[J].International Journal of Computer Vision,2008,77(1):157-173.

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Last Update: 2024-12-03