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A method for automatic segmentation and splitting of hyperspectral images of raspberry plants collected in field conditions

机译:一种田间采集的树莓植物高光谱图像自动分割与分割方法

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摘要

Hyperspectral imaging is a technology that can be used to monitor plant responses to stress. Hyperspectral images have a full spectrum for each pixel in the image, 400–2500 nm in this case, giving detailed information about the spectral reflectance of the plant. Although this technology has been used in laboratory-based controlled lighting conditions for early detection of plant disease, the transfer of such technology to imaging plants in field conditions presents a number of challenges. These include problems caused by varying light levels and difficulties of separating the target plant from its background. Here we present an automated method that has been developed to segment raspberry plants from the background using a selected spectral ratio combined with edge detection. Graph theory was used to minimise a cost function to detect the continuous boundary between uninteresting plants and the area of interest. The method includes automatic detection of a known reflectance tile which was kept constantly within the field of view for all image scans. A method to split images containing rows of multiple raspberry plants into individual plants was also developed. Validation was carried out by comparison of plant height and density measure-ments with manually scored values. A reasonable correlation was found between these manual scores and measurements taken from the images (r2 = 0.75 for plant height). These preliminary steps are an essential requirement before detailed spectral analysis of the plants can be achieved.
机译:高光谱成像是一种可用于监视植物对胁迫反应的技术。高光谱图像具有图像中每个像素的全光谱,在这种情况下为400–2500 nm,提供有关植物光谱反射率的详细信息。尽管此技术已在基于实验室的受控照明条件下用于植物病害的早期检测,但在野外条件下将这种技术转移到成像植物上仍存在许多挑战。这些问题包括由变化的光照水平引起的问题以及将目标植物与其背景分离的困难。在这里,我们介绍了一种自动方法,该方法已经开发出来,可以使用选定的光谱比率与边缘检测相结合,从背景中分割覆盆子植物。使用图论来最小化成本函数,以检测无趣植物与关注区域之间的连续边界。该方法包括自动检测已知反射率瓦片,该反射率瓦片对于所有图像扫描始终保持在视场内。还开发了一种将包含多棵覆盆子植物的行的图像分割成单个植物的方法。通过将植物高度和密度测量值与人工评分值进行比较来进行验证。在这些手动评分与从图像中获取的测量值之间找到了合理的相关性(植物高度r2 = 0.75)。这些初步步骤是实现植物详细光谱分析之前的基本要求。

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