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Titlebook: Data Augmentation, Labelling, and Imperfections; Second MICCAI Worksh Hien V. Nguyen,Sharon X. Huang,Yuan Xue Conference proceedings 2022 T

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楼主: 银河
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,Long-Tailed Classification of Thorax Diseases on Chest X-Ray: A New Benchmark Study,ogist can learn the visual presentation of rare conditions by studying a few representative examples, teaching a machine to learn from such a “long-tailed” distribution is much more difficult, as standard methods would be easily biased toward the most frequent classes. In this paper, we present a co
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,TAAL: Test-Time Augmentation for Active Learning in Medical Image Segmentation, such effort by prioritizing which samples are best to annotate in order to maximize the performance of the task model. While frameworks for active learning have been widely explored in the context of classification of natural images, they have been only sparsely used in medical image segmentation.
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,Noisy Label Classification Using Label Noise Selection with Test-Time Augmentation Cross-Entropy anrectly labeled data, has become an important task. In this paper, we propose a method of learning noisy label data using the label noise selection with test-time augmentation (TTA) cross-entropy and classifier learning with the NoiseMix method. In the label noise selection, we propose TTA cross-entr
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,A Stratified Cascaded Approach for Brain Tumor Segmentation with the Aid of Multi-modal Synthetic Dnd treatment of gliomas. Recent advances in deep learning methods have made a significant step towards a robust and automated brain tumor segmentation. However, due to the variation in shape and location of gliomas, as well as their appearance across different tumor grades, obtaining an accurate and
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,Efficient Medical Image Assessment via Self-supervised Learning,s due to the high cost of medical image labeling. Existing data assessment methods commonly require knowing the labels in advance, which are not feasible to achieve our goal of . To this end, we formulate and propose a novel and efficient data assessment strategy, .ponenti.l .arginal s.gular valu. (
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,Few-Shot Learning Geometric Ensemble for Multi-label Classification of Chest X-Rays,seases with multi-label indications is challenging without sufficient labeled training samples. Our model leverages the information from common diseases and adapts to perform on less common mentions. We propose to use multi-label few-shot learning (FSL) schemes including neighborhood component analy
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