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Few-Shot Learning with Deep Triplet Networks for Brain Imaging Modality Recognition

机译:少量学习用深三重网络进行脑成像模型识别

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Image modality recognition is essential for efficient imaging workflows in current clinical environments, where multiple imaging modalities are used to better comprehend complex diseases. Emerging biomarkers from novel, rare modalities are being developed to aid in such understanding, however the availability of these images is often limited. This scenario raises the necessity of recognising new imaging modalities without them being collected and annotated in large amounts. In this work, we present a few-shot learning model for limited training examples based on Deep Triplet Networks. We show that the proposed model is more accurate in distinguishing different modalities than a traditional Convolutional Neural Network classifier when limited samples are available. Furthermore, we evaluate the performance of both classifiers when presented with noisy samples and provide an initial inspection of how the proposed model can incorporate measures of uncertainty to be more robust against out-of-sample examples.
机译:图像模块识别对于当前临床环境中的有效成像工作流程是必不可少的,其中多种成像方式用于更好地理解复杂疾病。新兴的生物标志物从新颖,正在制定罕见的方式以帮助这种理解,但是这些图像的可用性通常有限。这种情况提出了识别新的成像模式的必要性,而没有它们被收集和以大量收集和注释。在这项工作中,我们为基于深度三态网络的有限训练示例提供了几次学习模型。我们表明,当有限的样品可用时,所提出的模型比传统的卷积神经网络分类器不同的方式更准确。此外,我们评估两个分类器的性能,当涉及嘈杂的样本时,并提供初步检查所提出的模型如何包含不确定性的措施,以更加稳健地免于采样外实施例。

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