Modified SLIC segmentation for medical hyperspectral cell images

Tingting Qiao, Meng Lv, Wei Li, Yu-wen Guo, X. Qiu
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Abstract

Simple linear iterative clustering (SLIC) is a fast and effective method for superpixel segmentation. However, the similarity measurement method of typical SLIC based on spatial and spectral features fails to get precise segmentation boundaries, especially for the images with complex and irregular shapes. To address this issue, a modified SLIC (MSLIC) method based on spectral, color, and texture information is proposed for medical hyperspectral cell images. The Gabor filter is used to exploit detailed texture features, which processes the image by using signal Fourier transform in the frequency domain. The MSLIC employs normalization, Gamma correction, and principal component analysis (PCA) to preprocess medical hyperspectral images, in which the texture features are integrated with spectral and spatial features to measure the distance. The under-segmentation error and boundary recall are used as the criterion of segmentation. Experiments for two medical datasets indicate that MSLIC achieves better segmentation performance than the typical SLIC method.
改进的SLIC分割医学高光谱细胞图像
简单线性迭代聚类(SLIC)是一种快速有效的超像素分割方法。然而,基于空间和光谱特征的典型SLIC相似度度量方法无法获得精确的分割边界,特别是对于形状复杂和不规则的图像。针对这一问题,提出了一种基于光谱、颜色和纹理信息的医学高光谱单元图像改进SLIC (MSLIC)方法。Gabor滤波器利用信号在频域傅里叶变换对图像进行处理,以挖掘图像的细节纹理特征。MSLIC采用归一化、伽玛校正和主成分分析(PCA)对医学高光谱图像进行预处理,将纹理特征与光谱特征和空间特征相结合,测量距离。将分割欠差和边界召回作为分割的标准。对两个医疗数据集的实验表明,MSLIC方法比典型的SLIC方法获得了更好的分割性能。
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