Estimating the Leaf Area Index of crops through the evaluation of 3D models

Dimitris Zermas, V. Morellas, D. Mulla, N. Papanikolopoulos
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引用次数: 17

Abstract

Financial and social elements of modern societies are closely connected to the cultivation of corn. Due to the massive production of corn, deficiencies during the cultivation process directly translate to major financial losses. The early detection and treatment of crops deficiencies is thus a task of great significance. Towards an automated health condition assessment, this study introduces a scheme for the computation of plant health indices. Based on the 3D reconstruction of small batches of corn plants, an alternative to existing cumbersome Leaf Area Index (LAI) estimation methodologies is presented. The use of 3D models provides an elevated information content, when compared to planar methods, mainly due to the reduced loss attributed to leaf occlusions. High resolution images of corn stalks are collected and used to obtain 3D models of plants of interest. Based on the extracted 3D point clouds, an accurate calculation of the Leaf Area Index (LAI) of the plants is performed. An experimental validation (using artificially made corn plants used as ground truth of the LAI estimation), emulating real world scenarios, supports the efficacy of the proposed methodology. The conclusions of this work, suggest a fully automated scheme for information gathering in modern farms capable of replacing current labor intensive procedures, thus greatly impacting the timely detection of crop deficiencies.
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利用三维模型评价作物叶面积指数
现代社会的经济和社会因素与玉米种植密切相关。由于玉米的大量生产,种植过程中的缺陷直接转化为重大的经济损失。因此,作物缺陷的早期发现和治疗是一项具有重要意义的任务。为了实现植物健康状况的自动化评估,提出了一种植物健康指数的计算方案。基于小批量玉米植株的三维重建,提出了一种替代现有繁琐的叶面积指数(LAI)估计方法。与平面方法相比,3D模型的使用提供了更高的信息内容,这主要是由于减少了叶片遮挡造成的损失。收集玉米秸秆的高分辨率图像并用于获得感兴趣的植物的三维模型。基于提取的三维点云,精确计算植物叶面积指数(LAI)。模拟真实世界情景的实验验证(使用人工制造的玉米植物作为LAI估计的基础真值)支持了所提出方法的有效性。这项工作的结论,提出了一个完全自动化的方案,用于现代农场的信息收集,能够取代目前的劳动密集型程序,从而极大地影响及时发现作物缺陷。
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