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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Evolution-Based Hierarchical Feature Fusion for Ultrasonic Liver Tissue Characterization
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Evolution-Based Hierarchical Feature Fusion for Ultrasonic Liver Tissue Characterization

机译:基于进化的分层特征融合用于超声肝组织表征

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This paper presents an evolution-based hierarchical feature fusion system that selects the dominant features among multiple feature vectors for ultrasonic liver tissue characterization. After extracting the spatial gray-level dependence matrices, multiresolution fractal feature vectors and multiresolution energy feature vectors, the system utilizes evolution-based algorithms to select features. In each feature space, features are selected independently to compile a feature subset. As the features of different feature vectors contain complementary information, a feature fusion process is used to combine the subsets generated from different vectors. Features are then selected from the fused feature vector to form a fused feature subset. The selected features are used to classify ultrasonic images of liver tissue into three classes: hepatoma, cirrhosis, and normal liver. Experiment results show that the classification accuracy of the fused feature subset is superior to that derived by using individual feature subsets. Moreover, the findings demonstrate that the proposed algorithm is capable of selecting discriminative features among multiple feature vectors to facilitate the early detection of hepatoma and cirrhosis via ultrasonic liver imaging.
机译:本文提出了一种基于进化的层次特征融合系统,该系统从多个特征向量中选择优势特征进行超声肝组织表征。在提取了空间灰度相关性矩阵,多分辨率分形特征向量和多分辨率能量特征向量之后,系统利用了基于进化的算法来选择特征。在每个特征空间中,独立选择特征以编译特征子集。由于不同特征向量的特征包含互补信息,因此使用特征融合过程来组合从不同向量生成的子集。然后从融合特征向量中选择特征,以形成融合特征子集。选定的特征用于将肝组织的超声图像分为三类:肝癌,肝硬化和正常肝。实验结果表明,融合特征子集的分类精度优于使用单个特征子集的分类精度。此外,研究结果表明,所提出的算法能够在多个特征向量之间选择区分特征,以利于通过超声肝成像早期检测肝癌和肝硬化。

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