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Image Analysis Techniques And Gray-level Co-occurrence Matrices (glcm) For Calculating Bioturbation Indices And Characterizing Biogenic Sedimentary Structures

机译:用于计算生物扰动指数和表征生物沉积结构的图像分析技术和灰度共现矩阵(glcm)

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Aspects of texture and structure in a bed resulting from bioturbation can provide valuable information about the ecology and environment at the time of deposition. However, not only the degree of bioturbation, but the structure of the burrows is important for interpreting biogenic fabrics. Here, image analysis is applied to real and artificial images of biogenic sedimentary structures. Image segmentation was applied to images of Middle Ordovician biogenic sedimentary structures from Dixon, Illinois (Pecatonica Formation), isolating the biogenic sedimentary structures. A gray-level co-occurrence matrix (GLCM) is calculated from the segmented image and eight artificial images representing different levels of image noise. Texture measures were calculated from the GLCMs and compared with identify scale and directional structural differences between the images. Principal component analysis was used to statistically group the images. Artificial images were found to be distinguishable from the real images by GLCM texture measures, and the real images differed most significantly at the largest scales.
机译:由生物扰动引起的床的质地和结构方面可以提供有关沉积时的生态和环境的有价值的信息。但是,不仅是生物扰动的程度,而且洞穴的结构对于解释生物织物也很重要。在这里,图像分析被应用于生物沉积结构的真实和人工图像。将图像分割应用于来自伊利诺伊州迪克森(Pecatonica组)的中奥陶纪生物成因沉积结构的图像,分离出生物成因沉积结构。从分割的图像和代表不同级别图像噪声的八个人造图像计算出灰度共生矩阵(GLCM)。从GLCM计算出纹理量度,并将其与确定图像之间的比例和方向性结构差异进行比较。主成分分析用于对图像进行统计分组。通过GLCM纹理测量发现,人造图像与真实图像是有区别的,并且真实图像在最大尺度上差异最大。

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