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Toward Content-Based Image Retrieval with Deep Convolutional Neural Networks

机译:对深度卷积神经网络的基于内容的图像检索

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Content-based image retrieval (CBIR) offers the potential to identify similar case histories, understand rare disorders, and eventually, improve patient care. Recent advances in database capacity, algorithm efficiency, and deep Convolutional Neural Networks (dCNN), a machine learning technique, have enabled great CBIR success for general photographic images. Here, we investigate applying the leading ImageNet CBIR technique to clinically acquired medical images captured by the Vanderbilt Medical Center. Briefly, we (1) constructed a dCNN with four hidden layers, reducing dimensionality of an input scaled to 128×128 to an output encoded layer of 4×384, (2) trained the network using back-propagation 1 million random magnetic resonance (MR) and computed tomography (CT) images, (3) labeled an independent set of 2100 images, and (4) evaluated classifiers on the projection of the labeled images into manifold space. Quantitative results were disappointing (averaging a true positive rate of only 20%); however, the data suggest that improvements would be possible with more evenly distributed sampling across labels and potential re-grouping of label structures. This prelimainry effort at automated classification of medical images with ImageNet is promising, but shows that more work is needed beyond direct adaptation of existing techniques.
机译:基于内容的图像检索(CBIR)提供了识别类似案例历史,理解稀有障碍,并最终改善患者护理的可能性。数据库容量,算法效率和深度卷积神经网络(DCNN),机器学习技术的最新进展使得一般摄影图像的巨大CBIR成功使能。在这里,我们调查将领先的Imagenet CBIR技术应用于Vanderbilt医疗中心捕获的临床获取的医学图像。简而言之,我们(1)构造了具有四个隐藏层的DCNN,将输入的数字降低到128×128的输入到4×384的输出编码层,(2)使用反向传播100万随机磁共振训练网络( MR)和计算机断层扫描(CT)图像,(3)标记为独立的2100图像集,(4)评估标记图像投影的分类器到歧管空间中。定量结果令人失望(平均只有20%的真正阳性率);然而,数据表明,通过跨标签更均匀分布的采样和标签结构的潜在重新分组,可以提高改进。这种预先筹集了与想象成的医学图像自动分类的努力很有希望,但表明需要更多的工作,超出现有技术的直接适应。

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