首页> 外文会议>International Conference on Computational Intelligence and Security >Automatic Detection of Lumina in Mouse Liver Immunohistochemical Color Image Using Support Vector Machine and Cellular Neural Network
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Automatic Detection of Lumina in Mouse Liver Immunohistochemical Color Image Using Support Vector Machine and Cellular Neural Network

机译:支持向量机和蜂窝神经网络自动检测小鼠肝免疫组化彩色图像的肝液

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A novel method for automatic lumina detection is proposed according to the characteristics of immunohise chemical color images for mouse liver. Firstly, the classification model of support vector machine was generated by the trained sample pixels based on the texture features: entropy, standard deviation and range in G component of the original color image. Secondly, the trained model is used to classify all pixels in image. Thirdly, Extracting Closed Domain Cellular Neural Network and median filtering were applied in turn to eliminate the misclassified pixels in last step. The expert's evaluation of our method showed that our method can get 76% classification accuracy, which are comparable to an pathologist's judgement.
机译:根据小鼠肝脏的免疫化学彩色图像的特征,提出了一种新的自动液体检测方法。首先,基于纹理特征的训练采样像素生成支持向量机的分类模型:熵,标准偏差和原始彩色图像的G分量中的标准偏差和范围。其次,培训的模型用于对图像中的所有像素进行分类。第三,依次提取闭合畴蜂窝神经网络和中值滤波,以消除最后一步中的错误分类像素。专家对我们的方法的评估表明,我们的方法可以获得76%的分类准确性,与病理学家的判断相当。

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