HEp-2 Specimen Classification Using Multi-resolution Local Patterns and SVM

Siyamalan Manivannan, Wenqi Li, Shazia Akbar, Ruixuan Wang, Jianguo Zhang, S. McKenna
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引用次数: 19

Abstract

A pattern recognition system was developed to classify immunofluorescence images of HEp-2 specimens into seven classes: homogeneous, speckled, nucleolar, centromere, golgi, nuclear membrane, and mitotic spindle. Root-SIFT features together with multi-resolution local patterns were used to capture local shape and texture information. Sparse coding with max-pooling was applied to get an image representation from these local features. Specimens were classified using a linear support vector machine. Leave-one-specimen-out experiments on the I3A Contest Task 2 data set predicted a mean class accuracy of 89.9%.
基于多分辨率局部模式和支持向量机的HEp-2样本分类
建立了一种模式识别系统,将HEp-2标本的免疫荧光图像分为7类:均匀、斑点、核仁、着丝粒、高尔基体、核膜和有丝分裂纺锤体。根- sift特征与多分辨率局部模式相结合,用于获取局部形状和纹理信息。利用最大池化稀疏编码从这些局部特征中得到图像表示。采用线性支持向量机对样本进行分类。在I3A Contest Task 2数据集上进行的“留一个样本”实验预测,平均分类准确率为89.9%。
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