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Structure similarity-guided image binarization for automatic segmentation of epidermis surface microstructure images

机译:表皮表面微结构图像自动分割的结构相似性引导图像二值化

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摘要

Partitioning epidermis surface microstructure (ESM) images into skin ridge and skin furrow regions is an important preprocessing step before quantitative analyses on ESM images. Binarization segmentation is a potential technique for partitioning ESM images because of its computational simplicity and ease of implementation. However, even for some state-of-the-art binarization methods, it remains a challenge to automatically segment ESM images, because the grey-level histograms of ESM images have no obvious external features to guide automatic assessment of appropriate thresholds. Inspired by human visual perceptual functions of structural feature extraction and comparison, we propose a structure similarity-guided image binarization method. The proposed method seeks for the binary image that best approximates the input ESM image in terms of structural features. The proposed method is validated by comparing it with two recently developed automatic binarization techniques as well as a manual binarization method on 20 synthetic noisy images and 30 ESM images. The experimental results show: (1) the proposed method possesses self-adaption ability to cope with different images with same grey-level histogram; (2) compared to two automatic binarization techniques, the proposed method significantly improves average accuracy in segmenting ESM images with an acceptable decrease in computational efficiency; (3) and the proposed method is applicable for segmenting practical EMS images. (Matlab code of the proposed method can be obtained by contacting with the corresponding author.)
机译:将表皮表面微观结构(ESM)图像分配到皮肤脊和皮肤沟区中是在ESM图像上定量分析之前的重要预处理步骤。二值化分割是用于分区ESM图像的潜在技术,因为其计算简单性和易于实现。然而,即使对于某些最先进的二进制化方法,它仍然是自动段ESM图像的挑战,因为ESM图像的灰度直方图没有明显的外部特征来指导适当的阈值的自动评估。灵感来自人类视觉感知功能的结构特征提取和比较,我们提出了一种结构相似性引导的图像二值化方法。所提出的方法寻求最能逼近输入ESM图像的二进制图像,其在结构特征方面。通过将其与两个最近开发的自动二值化技术进行比较来验证所提出的方法以及20个合成嘈杂图像和30ESM图像的手动二值化方法。实验结果表明:(1)所提出的方法具有对具有相同灰度直方图的不同图像的自适应能力; (2)与两个自动二值化技术相比,所提出的方法显着提高了分段ESM图像的平均准确性,计算效率可接受的降低; (3)和所提出的方法适用于分割实用的EMS图像。 (所提出的方法的MATLAB代码可以通过与相应作者联系来获得。)

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