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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >DART: Domain-Adversarial Residual-Transfer networks for unsupervised cross-domain image classification
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DART: Domain-Adversarial Residual-Transfer networks for unsupervised cross-domain image classification

机译:DART:用于无监督跨域图像分类的域 - 对抗残差网络

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摘要

The accuracy of deep learning (e.g., convolutional neural networks) for an image classification task critically relies on the amount of labeled training data. Aiming to solve an image classification task on a new domain that lacks labeled data but gains access to cheaply available unlabeled data, unsupervised domain adaptation is a promising technique to boost the performance without incurring extra labeling cost, by assuming images from different domains share some invariant characteristics. In this paper, we propose a new unsupervised domain adaptation method named Domain-Adversarial Residual-Transfer (DART) learning of deep neural networks to tackle cross-domain image classification tasks. In contrast to the existing unsupervised domain adaption approaches, the proposed DART not only learns domain-invariant features via adversarial training, but also achieves robust domain-adaptive classification via a residual-transfer strategy, all in an end-to-end training framework. We evaluate the performance of the proposed method for cross-domain image classification tasks on several well-known benchmark data sets, in which our method clearly outperforms the state-of-the-art approaches. (c) 2020 Elsevier Ltd. All rights reserved.
机译:用于图像分类任务的深度学习(例如,卷积神经网络)的准确性依赖于标记的训练数据的量依赖性依赖于标记的训练数据量。旨在解决在缺乏标记数据的新域中的图像分类任务,但增益访问廉价的未标记数据,通过假设来自不同域的图像共享一些不变的图像,这是一个有希望的技术,而不是产生额外的标记成本。特征。在本文中,我们提出了一种新的无监督域适应方法,名为Domain-verserarial剩余转移(DART)学习深神经网络的学习,以解决跨域图像分类任务。与现有无监督域适应方法相比,建议的飞镖不仅通过对抗性培训学习域不变特征,而且还通过残余传输策略实现了强大的域 - 自适应分类,所有这些都是在端到端的训练框架中。我们评估所提出的方法在几个公知的基准数据集中进行跨域图像分类任务的性能,其中我们的方法显然优于最先进的方法。 (c)2020 elestvier有限公司保留所有权利。

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