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Application of Image Texture Analysis for Evaluation of X-Ray Images of Fungal-Infected Maize Kernels

机译:图像纹理分析对真菌感染玉米核X射线图像评估的应用

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摘要

The feasibility of image texture analysis to evaluate X-ray images of fungal-infected maize kernels was investigated. X-ray images of maize kernels infected with Fusarium verticillioides and control kernels were acquired using high-resolution X-ray micro-computed tomography. After image acquisition and pre-processing, several algorithms were developed to extract image textural features from selected two-dimensional (2D) images of the kernels. Four first-order statistics (mean, standard deviation, kurtosis and skewness) and four grey level co-occurrence matrix (GLCM) features (correlation, energy, homogeneity and contrast) were extracted from the side, front and top views of each kernel and used as inputs for principal component analysis (PCA). The first-order statistical image features gave a better separation of the control from infected kernels on day 8 post-inoculation. Classification models were developed using partial least squares discriminant analysis (PLS-DA), and accuracies of 67 and 73% were achieved using first-order statistical features and GLCM extracted features, respectively. This work provides information on the possible application of image texture as method for analysing X-ray images.
机译:研究了图像纹理分析的可行性,评估真菌感染玉米核的X射线图像。利用高分辨率X射线微型计算机断层扫描获取感染富硅酸纤维氧化物和对照核的玉米核的X射线图像。在图像获取和预处理之后,开发了几种算法以从内核的所选二维(2D)图像中提取图像纹理特征。从每个内核的侧面,前部和顶视图中提取四个一阶统计(平均,标准偏差,峰值)和四个灰度共发生矩阵(GLCM)特征(相关,能量,均匀性和对比度)用作主成分分析(PCA)的输入。一阶统计图像特征在接种后第8天在第8天更好地分离来自感染的核。使用部分最小二乘判别分析(PLS-DA)开发了分类模型,并且使用一阶统计特征和GLCM提取的特征,实现了67和73%的精度。这项工作提供有关可能应用图像纹理作为分析X射线图像的方法的信息。

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