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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Automated High-Resolution Structure Analysis of Plant Root with a Morphological Image Filtering Algorithm
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Automated High-Resolution Structure Analysis of Plant Root with a Morphological Image Filtering Algorithm

机译:具有形态学图像滤波算法的植物根的自动高分辨率结构分析

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摘要

Research on rice ( Oryza sativa ) roots demands the automatic analysis of root architecture during image processing. It is challenging for a digital filter to identify the roots from the obscure and cluttered background. The original Frangi algorithm, presented by Alejandro F. Frangi in 1998, is a successful low-pass filter dedicated to blood vessel image enhancement. Considering the similarity between vessels and roots, the Frangi filter algorithm is applied to outline the roots. However, the original Frangi only enhances the tube-like primary roots but erases the lateral roots during filtering. In this paper, an improved Frangi filtering algorithm (IFFA), designed for plant roots, is proposed. Firstly, an automatic root phenotyping system is designed to fulfill the high-throughput root image acquisition. Secondly, multilevel image thresholding, connected components labeling, and width correction are used to optimize the output binary image. Thirdly, to enhance the local structure, the Gaussian filtering operator in the original Frangi is redesigned with a truncated Gaussian kernel, resulting in more discernible lateral roots. Compared to the original Frangi filter and commercially available software, IFFA is faster and more accurate, achieving a pixel accuracy of 97.48%. IFFA is an effective morphological filtering approach to enhance the roots of rice for segmentation and further biological research. It is convincing that IFFA is suitable for different 2-D plant root image processing and morphological analysis.
机译:稻米(Oryza Sativa)Roots的研究要求在图像处理期间自动分析根系结构。它对数字过滤器挑战了识别模糊和杂乱的背景的根源。 1998年由Alejandro F. Frangi呈现的原始纤巧算法是致力于血管图像增强的成功低通滤波器。考虑到血管和根部之间的相似性,植入晶体滤波器算法应用于概述根部。然而,原来的纤维只能增强管状的初级根,但在过滤过程中擦除侧根。本文提出了一种改进的FRANGI滤波算法(IFFA),用于植物根部。首先,设计自动根表型系统以满足高吞吐量的根图像采集。其次,使用多级图像阈值,连接的组件标记和宽度校正来优化输出二进制图像。第三,为了增强局部结构,原始纤维中的高斯滤波操作员重新设计了一个截短的高斯内核,导致更可辨别的横向根。与原版Frangi过滤器和市售软件相比,IFFA更快,更准确,实现了97.48%的像素精度。 IFFA是一种有效的形态学过滤方法,以增强水稻根部的分割和进一步的生物学研究。 IFFA适用于不同的二维植物根部图像处理和形态分析。

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