归一化和颜色特征对超像素分类的影响:在细胞学图像分割中的应用。

Q3 Biochemistry, Genetics and Molecular Biology
Mohammed El Amine Bechar, Nesma Settouti, Mostafa El Habib Daho, Mouloud Adel, Mohammed Amine Chikh
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引用次数: 5

摘要

在彩色超像素分类中,超像素特征提取是获得满意分类效果的关键问题。给定一个颜色特征提取问题,有必要知道哪种方法是解决这个问题的最佳方法。在目前的工作中,我们对细胞学图像中核和细胞质自动识别的挑战感兴趣。我们提出了一种使用超像素分类的白细胞(WBC)自动分割过程。这个过程分为五个步骤。第一步,计算颜色归一化。第二步采用简单线性迭代聚类算法生成超像素。第三步,利用颜色属性实现光照不变性。第四步,在每个超像素上计算颜色特征。最后,实现监督学习,将每个超像素划分为细胞核和细胞质区域。本研究利用高度归一化方法、四色空间和四种特征提取技术,对各种颜色超像素分类进行了详尽的统计评估。归一化和色彩空间稍微提高了超像素分类的平均精度。我们基于统计比较的实验可以得出结论,对于超像素分类,综合灰色世界归一化归一化优于不归一化,在弗里德曼排名中排名第一。RGB空间是用于核和细胞质分割的超像素特征提取的最佳颜色空间。在特征提取方面,学习方法对一阶统计特征的提取效果较好,可用于WBC自动分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of normalization and color features on super-pixel classification: application to cytological image segmentation.

Super-pixel feature extraction is a key problem to get an acceptable performance in color super-pixel classification. Given a color feature extraction problem, it is necessary to know which is the best approach to solve this problem. In the current work, we're interested in the challenge of nucleus and cytoplasm automatic recognition in the cytological image. We propose an automatic process for white blood cells (WBC) segmentation using super-pixel classification. The process is divided into five steps. In first step, the color normalization is calculated. The super-pixels generation by Simple Linear Iterative Clustering algorithm is performed in the second step. In third step, the color property is used to achieve illumination invariance. In fourth step, color features are calculated on each super-pixel. Finally, supervised learning is realized to classify each super-pixel into nucleus and cytoplasm region. The present work rallied an exhaustive statistical evaluation of a very wide variety of the color super-pixel classification, with height normalization methods, four-color spaces and four feature extraction techniques. Normalization and color spaces slightly increase the average accuracy of super-pixel classification. Our experiments based to statistical comparison allow to conclude that comprehensive gray world normalized normalization is better than without normalization for super-pixel classification achieving the first positions in the Friedman ranking. RGB space is the best color spaces to be used in super-pixel feature extraction for nucleus and cytoplasm segmentation. For feature extraction, the learning methods work better on the first order statistics features for the automatic WBC segmentation.

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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Australasian Physical & Engineering Sciences in Medicine (APESM) is a multidisciplinary forum for information and research on the application of physics and engineering to medicine and human physiology. APESM covers a broad range of topics that include but is not limited to: - Medical physics in radiotherapy - Medical physics in diagnostic radiology - Medical physics in nuclear medicine - Mathematical modelling applied to medicine and human biology - Clinical biomedical engineering - Feature extraction, classification of EEG, ECG, EMG, EOG, and other biomedical signals; - Medical imaging - contributions to new and improved methods; - Modelling of physiological systems - Image processing to extract information from images, e.g. fMRI, CT, etc.; - Biomechanics, especially with applications to orthopaedics. - Nanotechnology in medicine APESM offers original reviews, scientific papers, scientific notes, technical papers, educational notes, book reviews and letters to the editor. APESM is the journal of the Australasian College of Physical Scientists and Engineers in Medicine, and also the official journal of the College of Biomedical Engineers, Engineers Australia and the Asia-Oceania Federation of Organizations for Medical Physics.
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