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首页> 外文期刊>Computers and Electronics in Agriculture >Automated computation of leaf area index from fruit trees using improved image processing algorithms applied to canopy cover digital photograpies
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Automated computation of leaf area index from fruit trees using improved image processing algorithms applied to canopy cover digital photograpies

机译:使用改进的图像处理算法自动计算果树的叶面积指数,该算法适用于树冠覆盖数字照相

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Leaf area index (LAI) is a critical parameter in plant physiology for models related to growth, photosynthetic activity and evapotranspiration. It is also important for farm management purposes, since it can be used to assess the vigor of trees within a season with implications in water and fertilizer management. Among the diverse methodologies to estimate LAI, those based on cover photography are of great interest, since they are non-destructive, easy to implement, cost effective and have been demonstrated to be accurate for a range of tree species. However, these methods could have an important source of error in the LAI estimation due to the inclusion within the analysis of non-leaf material, such as trunks, shoots and fruits depending on the complexity of canopy architectures. This paper proposes a modified cover photography method based on specific image segmentation algorithms to exclude contributions from non-leaf materials in the analysis. Results from the implementation of this new image analysis method for cherry tree canopies showed a significant improvement in the estimation of LAI compared to ground truth data using allometric methods and previously available cover photography methods. The proposed methodological improvement is very simple to implement, with numerical relevance in species with complex 3D canopies where the woody elements greatly influence the total leaf area. (C) 2016 Elsevier B.V. All rights reserved.
机译:叶面积指数(LAI)是植物生理学中与生长,光合作用和蒸散有关的模型的关键参数。这对于农场管理目的也很重要,因为它可以用来评估一个季节内树木的活力,从而影响水和肥料的管理。在多种估计LAI的方法中,基于封面摄影的方法具有很高的吸引力,因为它们无损,易于实施,具有成本效益,并且已被证明对于多种树木都非常准确。但是,由于取决于冠层结构的复杂性,这些方法可能包含在非叶材料(例如树干,枝条和果实)的分析中,因此在LAI估算中可能会产生重要的误差来源。本文提出了一种基于特定图像分割算法的改进的封面摄影方法,以排除分析中非叶材料的贡献。对于使用樱桃树冠层的这种新的图像分析方法,实施结果表明,与使用异速测量方法和以前可用的掩盖摄影方法的地面真实数据相比,LAI的估计值有了显着改善。所提出的方法学改进非常容易实施,在具有复杂3D冠层的物种中具有数值相关性,其中木质元素极大地影响了总叶面积。 (C)2016 Elsevier B.V.保留所有权利。

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