Extracting visual navigation line between pineapple field rows based on an enhanced YOLOv5
文献类型: 外文期刊
作者: Liu, Tian -Hu 1 ; Zheng, Yan 1 ; Lai, Jia-Shang 1 ; Cheng, Yi-Feng 1 ; Chen, Si-Yuan 1 ; Mai, Bao-Feng 1 ; Liu, Ying 1 ; Li, Jia-Yi 1 ; Xue, Zhong 2 ;
作者机构: 1.South China Agr Univ, Coll Engn, 483 Wushan Rd, Guangzhou 510642, Guangdong, Peoples R China
2.Chinese Acad Trop Agr Sci, South Subtrop Crops Res Inst, Zhanjiang, Guangdong, Peoples R China
关键词: Agricultural robot; Fruit; Unmanned pineapple harvester; Navigation line; Enhanced YOLOv5
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:8.3; 五年影响因子:8.3 )
ISSN: 0168-1699
年卷期: 2024 年 217 卷
页码:
收录情况: SCI
摘要: The unmanned pineapple harvester is required to operate efficiently along crop rows. This study presents a novel approach for extracting visual navigation line in pineapple fields using an enhanced YOLOv5 algorithm. The objective is to overcome challenges related to positioning accuracy rate and stability encountered by unmanned pineapple harvesters. The improvements made to the YOLOv5 algorithm include the addition of a small object detection layer in the neck layer. Furthermore, modifications were made to the original loss function to enhance training stability and increase training speed. Experimental results demonstrate that the enhanced YOLOv5 model achieved a 3.62 % increase in training precision rate and a 2.15 % increase in recall rate compared to the original model. With an image resolution of 960 x 1080 pixels, the average detection speed reached 17.35 frames per second (fps). The enhanced YOLOv5 algorithm was utilized to recognize and extract feature points representing pineapple rows. A clustering algorithm was employed to classify these feature points by row, while a modified shortest distance algorithm was applied to fit the pineapple crop row centerline and calculate the optimal navigation line. Field experiments revealed an average extraction accuracy rate of 89.13 % and 85.32 % for sunny and cloudy weather in high-density crops, respectively, with an average accuracy rate of 85.74 %, row recognition accuracy rate of 89.29 % and angle error of 3.54 degrees in different density crops, respectively. This algorithm offers a method for obtaining navigation paths for unmanned pineapple harvesters.
- 相关文献
作者其他论文 更多>>
-
Mechanisms underlying the effects of cyanogenesis on development and reproduction of Tetranychus urticae: Insights from enzyme activity and gene expression aspects
作者:Wu, Mufeng;Zhao, Zihua;Li, Zhihong;Wu, Mufeng;Liang, Xiao;Liu, Ying;Wu, Chunling;An, Xingkui;Hao, Guifeng;Gregory, Ijiti Oluwole;Chen, Qing;Wu, Mufeng;Zhao, Zihua;Li, Zhihong;Wu, Mufeng;Liang, Xiao;Liu, Ying;Wu, Chunling;An, Xingkui;Hao, Guifeng;Gregory, Ijiti Oluwole;Chen, Qing
关键词:Cyanogenesis; Tetranychus urticae; Development and reproduction; Enzyme activity; Gene expression
-
Optimization of spray operation parameters of unmanned aerial vehicle confers adequate levels of control of fall armyworm (Spodoptera frugiperda)
作者:Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wu, Mufeng;Chen, Qing;Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wu, Mufeng;Chen, Qing;Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wu, Mufeng;Chen, Qing;Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wu, Mufeng;Chen, Qing;Zhao, Zihua;Li, Zhihong
关键词:unmanned aerial vehicle; fall armyworm; spray operation parameter; droplet deposition; control effect
-
DPD-YOLO: dense pineapple fruit target detection algorithm in complex environments based on YOLOv8 combined with attention mechanism
作者:Lin, Cong;Jiang, Wencheng;Zhao, Weiye;Zou, Lilan;Xue, Zhong
关键词:pineapple detection; UAV; BiFPN; YOLOv8; coordinate attention
-
Parameter design and experiment of rotary plate pineapple fruit picker
作者:Qiu, Jiangyi;Duan, Jieli;Qiu, Jiangyi;Xue, Zhong;Zhang, Zhaoxin
关键词:harvest; design; emulation; pineapple; fruit-picker
-
Potential influence of supplemental nutrients intake by adults on the development, fecundity, and population growth of Megalurothrips usitatus (Thysanoptera: Thripidae) offspring
作者:Li, Tiantian;Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wang, Ying;Hao, Guifeng;Chen, Yiting;Chen, Qing;Liu, Ying;Liang, Xiao;Wu, Chunling;An, Xingkui;Wang, Ying;Hao, Guifeng;Chen, Yiting;Chen, Qing;Liu, Ying;Chen, Qing
关键词:population dynamics; nutritional ecology; leguminous crops; rearing method
-
Characterization of a uridine diphosphate (UDP)-glycosyltransferase gene associated with abamectin resistance in two-spotted spider mite, Tetranychus urticae
作者:Hao, Guifeng;Chen, Qing;Liu, Ying;Wu, Chunling;An, Xingkui;Gregory, Ijiti Oluwole;Liang, Xiao;Hao, Guifeng;Chen, Qing;Liu, Ying;Wu, Chunling;An, Xingkui;Gregory, Ijiti Oluwole;Liang, Xiao;Hao, Guifeng
关键词:
Tetranychus urticae ; UDP-glycosyltransferases; Expression pattern; RNA interference; Abamectin resistance -
Identification of Mango Cultivars' Resistance Against Red Spider Mite: Impact of Climate Elements on Resistance Performance
作者:Liang, Xiao;Xu, Xuelian;Liu, Ying;Wu, Chunling;Wu, Mufeng;Chen, Qing;Liang, Xiao;Xu, Xuelian;Liu, Ying;Wu, Chunling;Wu, Mufeng;Chen, Qing
关键词:mango; mango red spider mite; resistance identification; climate impact



