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Non-Linear Domain Adaptation with Boosting

机译:具有升压的非线性域适配

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摘要

A common assumption in machine vision is that the training and test samples are drawn from the same distribution. However, there are many problems when this assumption is grossly violated, as in bio-medical applications where different acquisitions can generate drastic variations in the appearance of the data due to changing experimental conditions. This problem is accentuated with 3D data, for which annotation is very time-consuming, limiting the amount of data that can be labeled in new acquisitions for training. In this paper we present a multitask learning algorithm for domain adaptation based on boosting. Unlike previous approaches that learn task-specific decision boundaries, our method learns a single decision boundary in a shared feature space, common to all tasks. We use the boosting-trick to learn a non-linear mapping of the observations in each task, with no need for specific a-priori knowledge of its global analytical form. This yields a more parameter-free domain adaptation approach that successfully leverages learning on new tasks where labeled data is scarce. We evaluate our approach on two challenging bio-medical datasets and achieve a significant improvement over the state of the art.
机译:机器视觉中的常见假设是从相同的分布中汲取训练和测试样本。然而,当这种假设违反这种假设时存在许多问题,如在生物医学应用中,由于不同的采集可以产生由于变化的实验条件而产生数据的外观剧烈变化。此问题与3D数据强调,其中注释非常耗时,限制了可以在新采集中标记的数据量。在本文中,我们介绍了一种基于升压的域自适应的多任务学习算法。与以前学习任务特定的决策边界的方法不同,我们的方法在共享特征空间中学习单个决策边界,对所有任务共同。我们使用升压技巧来学习每个任务中观察的非线性映射,无需对其全局分析形式的特定a-priorid知识。这产生了一种更具可参与的域适应方法,即成功利用了学习的新任务,其中标记数据是稀缺的。我们评估了我们在两个具有挑战性的生物医学数据集上的方法,并实现了对现有技术的显着改善。

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