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A Bag of Features Approach for CEUS Liver Lesions Investigation

机译:Ceus肝病变调查的一袋特征方法

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In this work a novel approach for CEUS based diagnosis is presented. We propose a spatial/image-based method using a parallel and hierarchical system architecture. As a feature extraction stage, we propose the Bag of Features (BoF) algorithm which treats image features as a bag of visual words. It is followed by a multiclass SVM classifier trained separately for each phase of the ultrasound investigation. A soft voting scheme has been proposed for the information fusion of the individual phase classifiers. The preliminary evaluation shows promising qualitative results of our approach on samples of a newly introduced CEUS dataset. Using only 550 images, (5 liver lesions × 10 pictures/lesion × 11 patients) an average accuracy of 64% has been obtained for a leave-one patient-out procedure.
机译:在这项工作中,提出了一种基于CEUS基于CEU的诊断方法。我们使用并行和分层系统架构提出了一种基于空间/图像的方法。作为特征提取阶段,我们提出了一种特征(BOF)算法的袋,其将图像特征视为一袋视觉词。其次是多级SVM分类器,分别为超声调查的每个阶段培训。已经提出了个体阶段分类器的信息融合的软投票方案。初步评估显示了我们对新推出的Ceus数据集的样本的方法的有希望的定性结果。仅使用550个图像,(5个肝脏病变×10张图片/病变×11例),已经获得了64%的平均精度,为休假患者输出程序获得了64%。

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