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Brain Image Segmentation Based on Firefly Algorithm Combined with K-means Clustering

机译:基于萤火虫算法的脑图像分割与K-means聚类相结合

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During the past few decades digital images have become an important part of numerous scientific fields. Digital images used in medicine enabled tremendous progress in the diagnostics, treatment determination process as well as in monitoring patient recovery. Detection of brain tumors represents one of the active research fields and an algorithm for brain image segmentation was developed with an aim to emphasize four different primary brain tumors: glioma, metastatic adenocarcinoma, metastatic bronchogenic carcinoma and sarcoma from PET, MRI and SPECT images. The proposed image segmentation method is based on the firefly algorithm whose solutions are improved by the k-means clustering algorithm when Otsu's criterion was used as the fitness function. The proposed combined algorithm was tested on commonly used images from Harvard Whole Brain Atlas and the results were compared to other method from literature. The method proposed in this paper achieved better segmentation considering standard segmentation quality metrics such as normalized root square mean error, peak signal to noise and structural similarity index metric.
机译:在过去的几十年中,数字图像已成为众多科学领域的重要组成部分。医学中使用的数字图像使诊断,治疗确定过程以及监测患者恢复中的巨大进展。脑肿瘤的检测代表了一个活跃的研究领域之一,并且开发了一种脑图像分割算法,目的是强调四种不同的原发性脑肿瘤:来自PET,MRI和SPECT图像的胶质瘤,转移性腺癌,转移性支气管癌和肉瘤。所提出的图像分割方法基于萤火虫算法,当OTSU的标准用作健身功能时,通过K-Means聚类算法改进了萤火虫算法。在来自哈佛全脑地图集的常用图像上测试了所提出的组合算法,并将结果与​​来自文献的其他方法进行比较。本文提出的方法达到了考虑标准分割质量指标的更好的分割,例如归一化的根方形误差,峰值信号与噪声和结构相似性指数度量等。

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