Semantic Segmentation in Large-Size Orthomosaics to Detect the Vegetation Area in Opuntia spp. Crop.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-08-01 DOI:10.3390/jimaging10080187
Arturo Duarte-Rangel, César Camacho-Bello, Eduardo Cornejo-Velazquez, Mireya Clavel-Maqueda
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Abstract

This study focuses on semantic segmentation in crop Opuntia spp. orthomosaics; this is a significant challenge due to the inherent variability in the captured images. Manual measurement of Opuntia spp. vegetation areas can be slow and inefficient, highlighting the need for more advanced and accurate methods. For this reason, we propose to use deep learning techniques to provide a more precise and efficient measurement of the vegetation area. Our research focuses on the unique difficulties posed by segmenting high-resolution images exceeding 2000 pixels, a common problem in generating orthomosaics for agricultural monitoring. The research was carried out on a Opuntia spp. cultivation located in the agricultural region of Tulancingo, Hidalgo, Mexico. The images used in this study were obtained by drones and processed using advanced semantic segmentation architectures, including DeepLabV3+, UNet, and UNet Style Xception. The results offer a comparative analysis of the performance of these architectures in the semantic segmentation of Opuntia spp., thus contributing to the development and improvement of crop analysis techniques based on deep learning. This work sets a precedent for future research applying deep learning techniques in agriculture.

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在大尺寸正射影像中进行语义分割以检测欧蓬属作物的植被面积
这项研究的重点是农作物欧蓬属植物正射影像中的语义分割;由于所拍摄图像的固有变异性,这是一项重大挑战。对欧蓬属植物植被区域的人工测量既缓慢又低效,因此需要更先进、更精确的方法。为此,我们建议使用深度学习技术来提供更精确、更高效的植被面积测量方法。我们的研究重点是分割超过 2000 像素的高分辨率图像所带来的独特困难,这是生成农业监测正射影像图的常见问题。这项研究是在墨西哥伊达尔戈州图兰辛戈农业区的欧庞蒂亚属植物种植区进行的。本研究中使用的图像由无人机获取,并使用先进的语义分割架构(包括 DeepLabV3+、UNet 和 UNet Style Xception)进行处理。研究结果对这些架构在欧庞蒂亚属植物语义分割方面的性能进行了比较分析,从而有助于开发和改进基于深度学习的作物分析技术。这项工作为未来将深度学习技术应用于农业的研究开创了先河。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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