用改进的零直流分量型Gabor小波实现薄切片电子显微镜图像生物目标分割的半自动轮廓跟踪方法。

Gen Maeda, Misuzu Baba, Norio Baba
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引用次数: 0

摘要

在电子显微镜图像处理中,人工智能是一种强大的分割方法。由于创建训练数据仍然耗时且繁重,因此需要一种简单准确的分割工具来创建人工智能的训练数据并支持即时图像分析,该工具是有效的,不依赖于手动绘图。设计了一种基于Gabor小波的轮廓跟踪方法,作为实现这种工具的一步。尽管已经发表了许多关于基于Gabor滤波器和Gabor滤波器组的纹理分割的论文,但先前的研究并没有将基于Gabor小波的方法应用于直接检测膜状脊和台阶边缘进行分割,因为早期的工作使用了非零DC分量类型的Gabor小波。直流部件在这种检测中存在严重缺陷。尽管直流分量可以通过满足小波理论的公式或log-Gabor函数来去除,但这对于所提出的方案来说是不实用的。在此,我们设计了改进的零直流分量型Gabor小波。所提出的方法实际上可以将小波限制在小的图像区域内。这种类型的Gabor小波可以适当地跟踪通过冷冻替代固定方法制备的薄片透射电子显微镜图像中出现的细胞器的各种轮廓。所提出的方法不仅更准确地跟踪脊和台阶边缘轮廓,而且还跟踪由略微不同的图像模式组成的模式边界轮廓。仿真验证了这些结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semiautomatic contour tracking method for biological object segmentation in thin-section electron microscope images with modified zero DC component-type Gabor wavelets.

In electron microscopic image processing, artificial intelligence (AI) is a powerful method for segmentation. Because creating training data remains time-consuming and burdensome, a simple and accurate segmentation tool, which is effective and does not rely on manual drawings, is necessary to create training data for AI and to support immediate image analysis. A Gabor wavelet-based contour tracking method has been devised as a step toward realizing such a tool. Although many papers on Gabor filter-based and Gabor filter bank-based texture segmentations have been published, previous studies did not apply the Gabor wavelet-based method to straightforwardly detect membrane-like ridges and step edges for segmentation because earlier works used a nonzero DC component-type Gabor wavelets. The DC component has a serious flaw in such detection. Although the DC component can be removed by a formula that satisfies the wavelet theory or by a log-Gabor function, this is not practical for the proposed scheme. Herein, we devised modified zero DC component-type Gabor wavelets. The proposed method can practically confine a wavelet within a small image area. This type of Gabor wavelet can appropriately track various contours of organelles appearing in thin-section transmission electron microscope images prepared by the freeze-substitution fixation method. The proposed method not only more accurately tracks ridge and step edge contours but also tracks pattern boundary contours consisting of slightly different image patterns. Simulations verified these results.

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