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Deep convolutional Triplet network for quantitative medical image analysis with comparative case study of gamma image classification

机译:深度卷积三重态网络用于定量医学图像分析以及伽玛图像分类的比较案例研究

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摘要

Alternative feature generation for quantitative image analysis is proposed. The proposed method reorganize Deep Convolutional Neural Networks to learn representation in Triplet Network. The features are compared with texture features using series of classifiers in a Gamma image classification task that contains visual information but has no known suitable features. Experiment show that features from the Triplet Network method outperform in the classification task suggesting a useful way of extracting feature for task without known suitable feature but advantageous for further investigation.
机译:提出了用于定量图像分析的替代特征生成。所提出的方法重组了深度卷积神经网络以学习三重态网络中的表示。在包含视觉信息但没有已知合适特征的Gamma图像分类任务中,使用一系列分类器将这些特征与纹理特征进行比较。实验表明,三重态网络方法中的特征在分类任务中表现优异,这表明一种有用的方法可以提取任务特征,而无需已知合适的特征,但有利于进一步研究。

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