基于多尺度顶帽变换的显微矿物图像增强

Julio César Mello Román, José Luis Vázquez Noguera, H. Legal-Ayala, Diego Pinto, M. Monteiro, Jesús César Ariel López Colmán
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引用次数: 1

摘要

获得具有良好对比度的矿物显微图像对于鉴定和分析其性质至关重要。然而,在许多情况下,由于图像环境,显微镜操作人员的调整不完善或样品采集不当,所获得的矿物显微图像不清晰。本文提出了一种利用对比度调整权值对矿物显微图像进行多尺度Top-Hat变换增强的算法。首先,利用顶帽变换提取矿物图像的多个明暗特征;其次,计算前一步得到的亮尺度差和暗尺度差;第三,将前面步骤得到的多个dark和bright特征的所有强度分别求和。最后,根据对比度权重调整的明亮特征被添加到图像中,而根据相同权重调整的黑暗特征被从图像中减去。在各种显微矿物图像上的实验结果验证了该方法的有效性,增强了图像的对比度,改善了图像的细节和空间信息
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Microscopy Mineral Image Enhancement Using Multiscale Top-Hat Transform
The acquisition of microscopic images of minerals with good contrast is critical for the identification and analysis of their properties. However, in many cases, the microscopic images of minerals obtained are unclear due to the image environment, imperfect adjustment of the microscopy operators or improper collection of samples. In this paper, we present an algorithm to enhance the microscopic images of minerals by multiscale Top-Hat transform using contrast adjustment weights. First, the multiple dark and bright features of the mineral image are extracted using the top-hat transform. Secondly, bright scale differences and dark scale differences obtained in the previous step are calculated. Third, all the intensities of the multiple dark and bright features from the previous steps are summed separately. Finally, the bright features adjusted for a contrast weight are then added to the image and dark features adjusted for the same weight are subtracted from the image. Experimental results on various kinds of microscopic mineral images verified the effective performance of this proposed enhancing the contrast, improving the detail and spatial information about the images
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