{"title":"使用 YOLOv8s 进行基于无人机的田间西瓜检测和计数,并进行图像全景拼接和重叠分割","authors":"Liguo Jiang , Hanhui Jiang , Xudong Jing , Haojie Dang , Rui Li , Jinyong Chen , Yaqoob Majeed , Ramesh Sahni , Longsheng Fu","doi":"10.1016/j.aiia.2024.09.001","DOIUrl":null,"url":null,"abstract":"<div><p>Accurate watermelon yield estimation is crucial to the agricultural value chain, as it guides the allocation of agricultural resources as well as facilitates inventory and logistics planning. The conventional method of watermelon yield estimation relies heavily on manual labor, which is both time-consuming and labor-intensive. To address this, this work proposes an algorithmic pipeline that utilizes unmanned aerial vehicle (UAV) videos for detection and counting of watermelons. This pipeline uses You Only Look Once version 8 s (YOLOv8s) with panorama stitching and overlap partitioning, which facilitates the overall number estimation of watermelons in field. The watermelon detection model, based on YOLOv8s and obtained using transfer learning, achieved a detection accuracy of 99.20 %, demonstrating its potential for application in yield estimation. The panorama stitching and overlap partitioning based detection and counting method uses panoramic images as input and effectively mitigates the duplications compared with the video tracking based detection and counting method. The counting accuracy reached over 96.61 %, proving a promising application for yield estimation. The high accuracy demonstrates the feasibility of applying this method for overall yield estimation in large watermelon fields.</p></div>","PeriodicalId":52814,"journal":{"name":"Artificial Intelligence in Agriculture","volume":"13 ","pages":"Pages 117-127"},"PeriodicalIF":8.2000,"publicationDate":"2024-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2589721724000308/pdfft?md5=e51fdb350e08ba1871a8fe3fd59e2ca5&pid=1-s2.0-S2589721724000308-main.pdf","citationCount":"0","resultStr":"{\"title\":\"UAV-based field watermelon detection and counting using YOLOv8s with image panorama stitching and overlap partitioning\",\"authors\":\"Liguo Jiang , Hanhui Jiang , Xudong Jing , Haojie Dang , Rui Li , Jinyong Chen , Yaqoob Majeed , Ramesh Sahni , Longsheng Fu\",\"doi\":\"10.1016/j.aiia.2024.09.001\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Accurate watermelon yield estimation is crucial to the agricultural value chain, as it guides the allocation of agricultural resources as well as facilitates inventory and logistics planning. The conventional method of watermelon yield estimation relies heavily on manual labor, which is both time-consuming and labor-intensive. To address this, this work proposes an algorithmic pipeline that utilizes unmanned aerial vehicle (UAV) videos for detection and counting of watermelons. This pipeline uses You Only Look Once version 8 s (YOLOv8s) with panorama stitching and overlap partitioning, which facilitates the overall number estimation of watermelons in field. The watermelon detection model, based on YOLOv8s and obtained using transfer learning, achieved a detection accuracy of 99.20 %, demonstrating its potential for application in yield estimation. The panorama stitching and overlap partitioning based detection and counting method uses panoramic images as input and effectively mitigates the duplications compared with the video tracking based detection and counting method. The counting accuracy reached over 96.61 %, proving a promising application for yield estimation. 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引用次数: 0
摘要
准确的西瓜产量估算对农业价值链至关重要,因为它可以指导农业资源的分配,促进库存和物流规划。传统的西瓜产量估算方法严重依赖人工,既耗时又耗力。针对这一问题,本研究提出了一种利用无人飞行器(UAV)视频进行西瓜检测和计数的算法流水线。该流水线使用全景拼接和重叠分割的 You Only Look Once version 8 s(YOLOv8s),有助于对田间西瓜的总体数量进行估算。基于 YOLOv8s 并利用迁移学习获得的西瓜检测模型的检测准确率达到 99.20%,证明了其在产量估算中的应用潜力。基于全景拼接和重叠分割的检测和计数方法使用全景图像作为输入,与基于视频跟踪的检测和计数方法相比,有效地减少了重复。计数精度达到 96.61 % 以上,证明在产量估算中的应用前景广阔。高精度证明了将该方法应用于大面积西瓜田整体产量估算的可行性。
UAV-based field watermelon detection and counting using YOLOv8s with image panorama stitching and overlap partitioning
Accurate watermelon yield estimation is crucial to the agricultural value chain, as it guides the allocation of agricultural resources as well as facilitates inventory and logistics planning. The conventional method of watermelon yield estimation relies heavily on manual labor, which is both time-consuming and labor-intensive. To address this, this work proposes an algorithmic pipeline that utilizes unmanned aerial vehicle (UAV) videos for detection and counting of watermelons. This pipeline uses You Only Look Once version 8 s (YOLOv8s) with panorama stitching and overlap partitioning, which facilitates the overall number estimation of watermelons in field. The watermelon detection model, based on YOLOv8s and obtained using transfer learning, achieved a detection accuracy of 99.20 %, demonstrating its potential for application in yield estimation. The panorama stitching and overlap partitioning based detection and counting method uses panoramic images as input and effectively mitigates the duplications compared with the video tracking based detection and counting method. The counting accuracy reached over 96.61 %, proving a promising application for yield estimation. The high accuracy demonstrates the feasibility of applying this method for overall yield estimation in large watermelon fields.