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Modelling and analysis of plant image data for crop growth monitoring in horticulture

机译:园艺作物生长监测中植物图像数据的建模与分析

摘要

Plants can be characterised by a range of attributes, and measuring these attributes accurately and reliably is a major challenge for the horticulture industry. The measurement of those plant characteristics that are most relevant to a grower has previously been tackled almost exclusively by a combination of manual measurement and visual inspection. The purpose of this work is to propose an automated image analysis approach in order to provide an objective measure of plant attributes to remove subjective factors from assessment and to reduce labour requirements in the glasshouse. This thesis describes a stereopsis approach for estimating plant height, since height information cannot be easily determined from a single image. The stereopsis algorithm proposed in this thesis is efficient in terms of the running time, and is more accurate when compared with other algorithms. The estimated geometry, together with colour information from the image, are then used to build a statistical plant surface model, which represents all the information from the visible spectrum. A self-organising map approach can be adopted to model plant surface attributes, but the model can be improved by using a probabilistic model such as a mixture model formulated in a Bayesian framework. Details of both methods are discussed in this thesis. A Kalman filter is developed to track the plant model over time, extending the model to the time dimension, which enables smoothing of the noisy measurements to produce a development trend for a crop. The outcome of this work could lead to a number of potentially important applications in horticulture.
机译:植物可以通过一系列属性来表征,而准确,可靠地测量这些属性是园艺行业的主要挑战。与种植者最相关的那些植物特性的测量以前几乎只能通过手动测量和目测来解决。这项工作的目的是提出一种自动图像分析方法,以提供一种植物属性的客观度量,以消除评估中的主观因素并减少温室中的劳动力需求。由于无法从单个图像轻松确定高度信息,因此本文描述了一种用于估计植物高度的立体视方法。本文提出的立体视觉算法在运行时间方面是有效的,并且与其他算法相比更加准确。然后,将估计的几何形状与来自图像的颜色信息一起用于构建统计植物表面模型,该模型代表可见光谱中的所有信息。可以采用自组织映射方法对植物表面属性进行建模,但是可以通过使用概率模型(例如在贝叶斯框架中制定的混合模型)来改进模型。本文讨论了这两种方法的细节。开发了卡尔曼滤波器来跟踪随时间变化的植物模型,将模型扩展到时间维度,从而可以使嘈杂的测量值变得平滑,从而产生农作物的生长趋势。这项工作的结果可能会导致在园艺中许多潜在的重要应用。

著录项

  • 作者

    Song Yu;

  • 作者单位
  • 年度 2008
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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