叶片分割的精确统计方法

M. Ghazal, Ali M. Mahmoud, A. Shalaby, Shams Shaker, A. Khelifi, A. El-Baz
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引用次数: 0

摘要

帮助自动环境监测的一件事是树叶分割。通过对叶片进行分割,可以进行基于图像的叶片健康评估,这对于维持环境平衡的有效性至关重要。本文提出了一种从彩色图像中准确分割病叶的技术框架。换句话说,该方法使用我们存储在数据库中的RGB图像生成的信息来表示当前输入图像。为了实现该技术,构建了四个主要步骤:1)利用对比度变化来表征给定叶子的感兴趣区域(ROI),从而在最短的时间内提高分割的准确性。2)使用离散高斯的线性组合(LCDG)来表示输入图像的视觉外观,并假设三个兴趣类区域的边际概率分布。3)使用我们存储在数据库中的RGB图像生成的信息,在第二步中以像素为基础计算三类的概率。4)最后,利用高斯-马尔可夫随机场模型(GGMRF)对标签进行澄清,保持标签的连续性。经过实验验证,该方法具有较高的精度。
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Precise Statistical Approach for Leaf Segmentation
One thing that assists in automatic environmental monitoring is leaf segmentation. By segmenting a leaf, image-based leaf health assessment can be performed which is crucial in maintaining the effectiveness of the environmental balance. This paper presents a technique that serves an accurate framework for diseased leaf segmentation from Coloured imaged. In other words, this method works to use information generated from RGB images that we have stored in our data base to represent the current input image. To achieve such technique, four main steps were constructed: 1) Using contrast variations to characterize the region of interest (ROI) of a given leaf which enhances the accuracy of the segmentation using minimal time. 2) using linear combination of discrete Gaussians (LCDG) to represent the visual appearance of the input image and to assume the marginal probability distributions of the three regions of interest classes. 3) Using information generated from RGB images that we have stored in our data base to calculate the probabilities of the three classes on a pixel basis in step two. 4) Lastly, clarifying the labels with Gauss-Markov random field model (GGMRF) to maintain the continuity. After all these steps, the experimental validation promised high accuracy.
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