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基于深度学习的地块尺度蔗田缺苗信息自动获取

林煜 黄启厅 冯跃华 何新洁 马灿达 苏秋群 林垚君

南方农业学报2025,Vol.56Issue(1):41-52,12.
南方农业学报2025,Vol.56Issue(1):41-52,12.DOI:10.3969/j.issn.2095-1191.2025.01.004

基于深度学习的地块尺度蔗田缺苗信息自动获取

Deep learning based automatic acquisition of plot-scale seedling deficiency information in sugarcane fields

林煜 1黄启厅 2冯跃华 3何新洁 3马灿达 3苏秋群 3林垚君3

作者信息

  • 1. 贵州大学农学院,贵州 贵阳 550025
  • 2. 贵州大学农学院,贵州 贵阳 550025||广西农业科学院农业科技信息研究所,广西 南宁 530007
  • 3. 广西农业科学院农业科技信息研究所,广西 南宁 530007
  • 折叠

摘要

Abstract

[Objective]To improve the degree of automatic acquisition and accuracy of sugarcane fields seedling defi-ciency information,which could provide reference for the realization of automated extraction of sugarcane field seedling deficiency location information in plot units.[Method]Images of sugarcane fields in the study area were collected by un-manned aerial vehicle(UAV)and a dataset was created to detect and recognize sugarcane seedlings using the YOLOv8 model.The recognition results were vectorised,rotated and clustered to accurately calculate the number of rows and spa-cing information.Finally,the vector point distribution maps of sugarcane seedlings in the ideal situation of no seedling de-ficiency in the field and the actual distribution maps of seedling deficiency locations were produced to assess the overall seedling deficiency situation in sugarcane field.[Result]The YOLOv8 model identified sugarcane seedlings with an accu-racy of 98.84%,a recall of 90.76%,and an average precision of 97.05% .Even in environments with high weed distribu-tion,where weed occlusion could confuse the visual features of sugarcane seedlings and increase the detection difficulty,the YOLOv8 model was able to identify sugarcane seedlings accurately.The results of sugarcane seedling identification were vectorized,and the post-processing method of spatial analysis was used to automatically rotate the crop rows to the vertical direction,and then the number,direction,row spacing,and start and end points of the crop rows were accurately obtained by means of clustering,intersection calculation and coordinate conversion,which effectively solved the problem of differences in crop row conditions between different plots and within the same plot.In 2 large plots in the study area,8 sample sample plots(A-H)with different morphology,orientation and area were randomly designated,and the seedling deficiency rates of the 8 sample plots were calculated based on the standard distribution template of sugarcane seedlings without seedling deficiency,and the results showed that the errors of the seedling deficiency detection model were 4.35%,2.98%,4.28%,2.91%,1.88%,0.51%,1.10%,1.51% and 1.51% respectively.In addition,based on the results of the seedling deficiency detection model,the coordinates of the location of the seedling deficiency in each sample plot could be obtained.[Suggestion]The automated sugarcane seedling detection and seedling deficiency rate calculation method based on the YOLOv8 model can process a large amount of image data quickly and efficiently,with a high degree of automation and precision,and is suitable for detecting seedling shortage in a wide range of sugarcane fields,and can provide specific seedling deficiency coordinates.The follow-up study suggests to improve the model recall rate by multi-scale detection,to reduce the problem of missed detection by using sliding window cropping image for data annotation,and to expand the dataset to improve the generalization ability and robustness of the model,so as to effectively improve the stability and accuracy of the sugarcane seedling shortage detection results.

关键词

甘蔗/缺苗率/目标检测/作物行识别/YOLOv8模型

Key words

sugarcane/seedling deficiency rate/target detection/crop row recognition/YOLOv8 model

分类

农业科技

引用本文复制引用

林煜,黄启厅,冯跃华,何新洁,马灿达,苏秋群,林垚君..基于深度学习的地块尺度蔗田缺苗信息自动获取[J].南方农业学报,2025,56(1):41-52,12.

基金项目

广西科技重大专项(桂科AA22117004) (桂科AA22117004)

广西农业科学院科技发展基金项目(桂农科2017ZX04,桂农科2021JM16) Guangxi Major Science and Technology Project(Guike AA22117004) (桂农科2017ZX04,桂农科2021JM16)

Science and Technology Development Project of Guangxi Academy of Agricultural Sciences(Guinongke 2017ZX04,Guinongke 2021JM16) (Guinongke 2017ZX04,Guinongke 2021JM16)

南方农业学报

OA北大核心

2095-1191

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