论文标题

使用Hough线和线性迭代聚类的分数植被覆盖估算

Fractional Vegetation Cover Estimation using Hough Lines and Linear Iterative Clustering

论文作者

Margapuri, Venkat, Rife, Trevor, Courtney, Chaney, Schlautman, Brandon, Zhao, Kai, Neilsen, Mitchell

论文摘要

全国各地的植物育种计划的普遍要求是伴侣种植 - 种植不同种类的植物在近距​​离附近,因此它们可以相互受益。但是,确定伴侣植物需要对植物生长进行细致的监测。眼部监测的技术通常很费力且容易发生。图像处理技术的可用性可用于应对植物生长监测的挑战,并提供强大的解决方案,以帮助植物科学家识别伴侣植物。本文提出了一种新的图像处理算法,以确定给定区域中存在的植被覆盖量,称为分数植被盖。该提出的技术从可信赖的多本米尔方法中汲取了灵感,以供植被覆盖估算,并在其上进行扩展。简而言之,这个想法是从包含多行植物物种的图像中估算植被覆盖,这些植物物种在近距离近距离生长,该物种由已知大小的多段PVC框架隔开。所提出的算法应用了hough的变换和简单的线性迭代聚类(SLIC),以估计PVC框架每个段内的植被覆盖量。重复对定期时间间隔捕获的图像进行分析,可以对植物生长进行关键见解。作为比较的一种手段,将提出的算法与样品点和Canopeo进行了比较,这是两个可信赖的应用程序用于植被覆盖估计。该比较显示了与样品点和Canopeo的99%相似性,证明了该算法对分数植被覆盖估计的准确性和可行性。

A common requirement of plant breeding programs across the country is companion planting -- growing different species of plants in close proximity so they can mutually benefit each other. However, the determination of companion plants requires meticulous monitoring of plant growth. The technique of ocular monitoring is often laborious and error prone. The availability of image processing techniques can be used to address the challenge of plant growth monitoring and provide robust solutions that assist plant scientists to identify companion plants. This paper presents a new image processing algorithm to determine the amount of vegetation cover present in a given area, called fractional vegetation cover. The proposed technique draws inspiration from the trusted Daubenmire method for vegetation cover estimation and expands upon it. Briefly, the idea is to estimate vegetation cover from images containing multiple rows of plant species growing in close proximity separated by a multi-segment PVC frame of known size. The proposed algorithm applies a Hough Transform and Simple Linear Iterative Clustering (SLIC) to estimate the amount of vegetation cover within each segment of the PVC frame. The analysis when repeated over images captured at regular intervals of time provides crucial insights into plant growth. As a means of comparison, the proposed algorithm is compared with SamplePoint and Canopeo, two trusted applications used for vegetation cover estimation. The comparison shows a 99% similarity with both SamplePoint and Canopeo demonstrating the accuracy and feasibility of the algorithm for fractional vegetation cover estimation.

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