虽然无监督的域适应(UDA)算法,即,近年来只有来自源域的标记数据,大多数算法和理论结果侧重于单源无监督域适应(SUDA)。然而,在实际情况下,标记的数据通常可以从多个不同的源收集,并且它们可能不仅不同于目标域而且彼此不同。因此,来自多个源的域适配器不应以相同的方式进行建模。最近基于深度学习的多源无监督域适应(Muda)算法专注于通过在通用特征空间中的所有源极和目标域的分布对齐来提取所有域的公共域不变表示。但是,往往很难提取Muda中所有域的相同域不变表示。此外,这些方法匹配分布而不考虑类之间的域特定的决策边界。为了解决这些问题,我们提出了一个新的框架,具有两个对准阶段的Muda,它不仅将每对源和目标域的分布对齐,而且还通过利用域特定的分类器的输出对准决策边界。广泛的实验表明,我们的方法可以对图像分类的流行基准数据集实现显着的结果。
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在图像分类中,获得足够的标签通常昂贵且耗时。为了解决这个问题,域适应通常提供有吸引力的选择,给出了来自类似性质但不同域的大量标记数据。现有方法主要对准单个结构提取的表示的分布,并且表示可以仅包含部分信息,例如,仅包含部分饱和度,亮度和色调信息。在这一行中,我们提出了多代表性适应,这可以大大提高跨域图像分类的分类精度,并且特别旨在对准由名为Inception Adaption Adationation模块(IAM)提取的多个表示的分布。基于此,我们呈现多色自适应网络(MRAN)来通过多表示对准完成跨域图像分类任务,该任向性可以捕获来自不同方面的信息。此外,我们扩展了最大的平均差异(MMD)来计算适应损耗。我们的方法可以通过扩展具有IAM的大多数前进模型来轻松实现,并且网络可以通过反向传播有效地培训。在三个基准图像数据集上进行的实验证明了备的有效性。代码已在https://github.com/easezyc/deep-transfer -learning上获得。
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Deep networks have been successfully applied to learn transferable features for adapting models from a source domain to a different target domain.In this paper, we present joint adaptation networks (JAN), which learn a transfer network by aligning the joint distributions of multiple domain-specific layers across domains based on a joint maximum mean discrepancy (JMMD) criterion. Adversarial training strategy is adopted to maximize JMMD such that the distributions of the source and target domains are made more distinguishable. Learning can be performed by stochastic gradient descent with the gradients computed by back-propagation in linear-time. Experiments testify that our model yields state of the art results on standard datasets.
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The recent success of deep neural networks relies on massive amounts of labeled data. For a target task where labeled data is unavailable, domain adaptation can transfer a learner from a different source domain. In this paper, we propose a new approach to domain adaptation in deep networks that can jointly learn adaptive classifiers and transferable features from labeled data in the source domain and unlabeled data in the target domain. We relax a shared-classifier assumption made by previous methods and assume that the source classifier and target classifier differ by a residual function. We enable classifier adaptation by plugging several layers into deep network to explicitly learn the residual function with reference to the target classifier. We fuse features of multiple layers with tensor product and embed them into reproducing kernel Hilbert spaces to match distributions for feature adaptation. The adaptation can be achieved in most feed-forward models by extending them with new residual layers and loss functions, which can be trained efficiently via back-propagation. Empirical evidence shows that the new approach outperforms state of the art methods on standard domain adaptation benchmarks.
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虽然在许多域内生成并提供了大量的未标记数据,但对视觉数据的自动理解的需求高于以往任何时候。大多数现有机器学习模型通常依赖于大量标记的训练数据来实现高性能。不幸的是,在现实世界的应用中,不能满足这种要求。标签的数量有限,手动注释数据昂贵且耗时。通常需要将知识从现有标记域传输到新域。但是,模型性能因域之间的差异(域移位或数据集偏差)而劣化。为了克服注释的负担,域适应(DA)旨在在将知识从一个域转移到另一个类似但不同的域中时减轻域移位问题。无监督的DA(UDA)处理标记的源域和未标记的目标域。 UDA的主要目标是减少标记的源数据和未标记的目标数据之间的域差异,并在培训期间在两个域中学习域不变的表示。在本文中,我们首先定义UDA问题。其次,我们从传统方法和基于深度学习的方法中概述了不同类别的UDA的最先进的方法。最后,我们收集常用的基准数据集和UDA最先进方法的报告结果对视觉识别问题。
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通过从完全标记的源域中利用数据,无监督域适应(UDA)通过显式差异最小化数据分布或对抗学习来提高未标记的目标域上的分类性能。作为增强,通过利用模型预测来加强目标特征识别期间涉及类别对齐。但是,在目标域上的错误类别预测中产生的伪标签不准确以及由源域的过度录制引起的分发偏差存在未探明的问题。在本文中,我们提出了一种模型 - 不可知的两阶段学习框架,这大大减少了使用软伪标签策略的缺陷模型预测,并避免了课程学习策略的源域上的过度拟合。从理论上讲,它成功降低了目标域上预期误差的上限的综合风险。在第一阶段,我们用分布对齐的UDA方法训练一个模型,以获得具有相当高的置位目标域上的软语义标签。为了避免在源域上的过度拟合,在第二阶段,我们提出了一种课程学习策略,以自适应地控制来自两个域的损失之间的加权,以便训练阶段的焦点从源分布逐渐移位到目标分布,以预测信心提升了目标分布在目标领域。对两个知名基准数据集的广泛实验验证了我们提出框架促进促进顶级UDA算法的性能的普遍效果,并展示其一致的卓越性能。
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Recent studies reveal that a deep neural network can learn transferable features which generalize well to novel tasks for domain adaptation. However, as deep features eventually transition from general to specific along the network, the feature transferability drops significantly in higher layers with increasing domain discrepancy. Hence, it is important to formally reduce the dataset bias and enhance the transferability in task-specific layers. In this paper, we propose a new Deep Adaptation Network (DAN) architecture, which generalizes deep convolutional neural network to the domain adaptation scenario. In DAN, hidden representations of all task-specific layers are embedded in a reproducing kernel Hilbert space where the mean embeddings of different domain distributions can be explicitly matched. The domain discrepancy is further reduced using an optimal multi-kernel selection method for mean embedding matching. DAN can learn transferable features with statistical guarantees, and can scale linearly by unbiased estimate of kernel embedding. Extensive empirical evidence shows that the proposed architecture yields state-of-the-art image classification error rates on standard domain adaptation benchmarks.
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在本文中,我们提出了一种使用域鉴别特征模块的双模块网络架构,以鼓励域不变的特征模块学习更多域不变的功能。该建议的架构可以应用于任何利用域不变功能的任何模型,用于无监督域适应,以提高其提取域不变特征的能力。我们在作为代表性算法的神经网络(DANN)模型的区域 - 对抗训练进行实验。在培训过程中,我们为两个模块提供相同的输入,然后分别提取它们的特征分布和预测结果。我们提出了差异损失,以找到预测结果的差异和两个模块之间的特征分布。通过对抗训练来最大化其特征分布和最小化其预测结果的差异,鼓励两个模块分别学习更多域歧视和域不变特征。进行了广泛的比较评估,拟议的方法在大多数无监督的域适应任务中表现出最先进的。
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Domain adaptation aims at generalizing a high-performance learner on a target domain via utilizing the knowledge distilled from a source domain which has a different but related data distribution. One solution to domain adaptation is to learn domain invariant feature representations while the learned representations should also be discriminative in prediction. To learn such representations, domain adaptation frameworks usually include a domain invariant representation learning approach to measure and reduce the domain discrepancy, as well as a discriminator for classification. Inspired by Wasserstein GAN, in this paper we propose a novel approach to learn domain invariant feature representations, namely Wasserstein Distance Guided Representation Learning (WD-GRL). WDGRL utilizes a neural network, denoted by the domain critic, to estimate empirical Wasserstein distance between the source and target samples and optimizes the feature extractor network to minimize the estimated Wasserstein distance in an adversarial manner. The theoretical advantages of Wasserstein distance for domain adaptation lie in its gradient property and promising generalization bound. Empirical studies on common sentiment and image classification adaptation datasets demonstrate that our proposed WDGRL outperforms the state-of-the-art domain invariant representation learning approaches.
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Unsupervised Domain Adaptation (UDA) makes predictions for the target domain data while manual annotations are only available in the source domain. Previous methods minimize the domain discrepancy neglecting the class information, which may lead to misalignment and poor generalization performance. To address this issue, this paper proposes Contrastive Adaptation Network (CAN) optimizing a new metric which explicitly models the intra-class domain discrepancy and the inter-class domain discrepancy. We design an alternating update strategy for training CAN in an end-to-end manner. Experiments on two real-world benchmarks Office-31 and VisDA-2017 demonstrate that CAN performs favorably against the state-of-the-art methods and produces more discriminative features.
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We propose a novel unsupervised domain adaptation framework based on domain-specific batch normalization in deep neural networks. We aim to adapt to both domains by specializing batch normalization layers in convolutional neural networks while allowing them to share all other model parameters, which is realized by a twostage algorithm. In the first stage, we estimate pseudolabels for the examples in the target domain using an external unsupervised domain adaptation algorithm-for example, MSTN [27] or CPUA [14]-integrating the proposed domain-specific batch normalization. The second stage learns the final models using a multi-task classification loss for the source and target domains. Note that the two domains have separate batch normalization layers in both stages. Our framework can be easily incorporated into the domain adaptation techniques based on deep neural networks with batch normalization layers. We also present that our approach can be extended to the problem with multiple source domains. The proposed algorithm is evaluated on multiple benchmark datasets and achieves the state-of-theart accuracy in the standard setting and the multi-source domain adaption scenario.
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半监督域适应(SSDA)是一种具有挑战性的问题,需要克服1)以朝向域的较差的数据和2)分布换档的方法。不幸的是,由于培训数据偏差朝标标样本训练,域适应(DA)和半监督学习(SSL)方法的简单组合通常无法解决这两个目的。在本文中,我们介绍了一种自适应结构学习方法,以规范SSL和DA的合作。灵感来自多视图学习,我们建议的框架由共享特征编码器网络和两个分类器网络组成,用于涉及矛盾的目的。其中,其中一个分类器被应用于组目标特征以提高级别的密度,扩大了鲁棒代表学习的分类集群的间隙。同时,其他分类器作为符号器,试图散射源功能以增强决策边界的平滑度。目标聚类和源扩展的迭代使目标特征成为相应源点的扩张边界内的封闭良好。对于跨域特征对齐和部分标记的数据学习的联合地址,我们应用最大平均差异(MMD)距离最小化和自培训(ST)将矛盾结构投影成共享视图以进行可靠的最终决定。对标准SSDA基准的实验结果包括Domainnet和Office-Home,展示了我们对最先进的方法的方法的准确性和稳健性。
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鉴于大量具有相似属性但域不同的标记数据的可用性,域的适应性是一种有吸引力的方法。在图像分类任务中,获得足够的标签数据具有挑战性。我们提出了一种名为Selda的新方法,用于通过扩展三种域适应方法来堆叠合奏学习,以有效解决现实世界中的问题。主要假设是,当将基本域适应模型组合起来时,我们可以通过利用每个基本模型的能力来获得更准确,更健壮的模型。我们扩展最大平均差异(MMD),低级别编码和相关比对(珊瑚),以计算三个基本模型中的适应损失。同样,我们利用一个两双连接的层网络作为元模型来堆叠这三个表现良好的域适应模型的输出预测,以获得眼科图像分类任务的高精度。使用与年龄相关的眼病研究(AREDS)基准眼科数据集的实验结果证明了该模型的有效性。
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Top-performing deep architectures are trained on massive amounts of labeled data. In the absence of labeled data for a certain task, domain adaptation often provides an attractive option given that labeled data of similar nature but from a different domain (e.g. synthetic images) are available. Here, we propose a new approach to domain adaptation in deep architectures that can be trained on large amount of labeled data from the source domain and large amount of unlabeled data from the target domain (no labeled targetdomain data is necessary).As the training progresses, the approach promotes the emergence of "deep" features that are (i) discriminative for the main learning task on the source domain and (ii) invariant with respect to the shift between the domains. We show that this adaptation behaviour can be achieved in almost any feed-forward model by augmenting it with few standard layers and a simple new gradient reversal layer. The resulting augmented architecture can be trained using standard backpropagation.Overall, the approach can be implemented with little effort using any of the deep-learning packages. The method performs very well in a series of image classification experiments, achieving adaptation effect in the presence of big domain shifts and outperforming previous state-ofthe-art on Office datasets.
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Conventional unsupervised domain adaptation (UDA) assumes that training data are sampled from a single domain. This neglects the more practical scenario where training data are collected from multiple sources, requiring multi-source domain adaptation. We make three major contributions towards addressing this problem. First, we collect and annotate by far the largest UDA dataset, called DomainNet, which contains six domains and about 0.6 million images distributed among 345 categories, addressing the gap in data availability for multi-source UDA research. Second, we propose a new deep learning approach, Moment Matching for Multi-Source Domain Adaptation (M 3 SDA), which aims to transfer knowledge learned from multiple labeled source domains to an unlabeled target domain by dynamically aligning moments of their feature distributions. Third, we provide new theoretical insights specifically for moment matching approaches in both single and multiple source domain adaptation. Extensive experiments are conducted to demonstrate the power of our new dataset in benchmarking state-of-the-art multi-source domain adaptation methods, as well as the advantage of our proposed model. Dataset and Code are available at http://ai.bu.edu/M3SDA/
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无监督域适配利用标记的源域中丰富的信息来模拟未标记的目标域。现有方法尝试对齐跨域分布。然而,两个域的对准的统计表示并不良好解决。在本文中,我们提出了深度最小二乘对准(DLSA)来估计通过参数化线性模型来估计潜在空间中的两个域的分布。我们通过最小化拟合线和截距差异之间的角度以及进一步学习域不变特征,进一步开发边缘和条件适应损失以减少域差异。广泛的实验表明,所提出的DLSA模型在对准域分布和优于最先进的方法方面有效。
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Deep domain adaptation has emerged as a new learning technique to address the lack of massive amounts of labeled data. Compared to conventional methods, which learn shared feature subspaces or reuse important source instances with shallow representations, deep domain adaptation methods leverage deep networks to learn more transferable representations by embedding domain adaptation in the pipeline of deep learning. There have been comprehensive surveys for shallow domain adaptation, but few timely reviews the emerging deep learning based methods. In this paper, we provide a comprehensive survey of deep domain adaptation methods for computer vision applications with four major contributions. First, we present a taxonomy of different deep domain adaptation scenarios according to the properties of data that define how two domains are diverged. Second, we summarize deep domain adaptation approaches into several categories based on training loss, and analyze and compare briefly the state-of-the-art methods under these categories. Third, we overview the computer vision applications that go beyond image classification, such as face recognition, semantic segmentation and object detection. Fourth, some potential deficiencies of current methods and several future directions are highlighted.
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Unlike human learning, machine learning often fails to handle changes between training (source) and test (target) input distributions. Such domain shifts, common in practical scenarios, severely damage the performance of conventional machine learning methods. Supervised domain adaptation methods have been proposed for the case when the target data have labels, including some that perform very well despite being "frustratingly easy" to implement. However, in practice, the target domain is often unlabeled, requiring unsupervised adaptation. We propose a simple, effective, and efficient method for unsupervised domain adaptation called CORrelation ALignment (CORAL). CORAL minimizes domain shift by aligning the second-order statistics of source and target distributions, without requiring any target labels. Even though it is extraordinarily simple-it can be implemented in four lines of Matlab code-CORAL performs remarkably well in extensive evaluations on standard benchmark datasets."Everything should be made as simple as possible, but not simpler."
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Deep learning has produced state-of-the-art results for a variety of tasks. While such approaches for supervised learning have performed well, they assume that training and testing data are drawn from the same distribution, which may not always be the case. As a complement to this challenge, single-source unsupervised domain adaptation can handle situations where a network is trained on labeled data from a source domain and unlabeled data from a related but different target domain with the goal of performing well at test-time on the target domain. Many single-source and typically homogeneous unsupervised deep domain adaptation approaches have thus been developed, combining the powerful, hierarchical representations from deep learning with domain adaptation to reduce reliance on potentially-costly target data labels. This survey will compare these approaches by examining alternative methods, the unique and common elements, results, and theoretical insights. We follow this with a look at application areas and open research directions.
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睡眠分期在诊断和治疗睡眠障碍中非常重要。最近,已经提出了许多数据驱动的深度学习模型,用于自动睡眠分期。他们主要在一个大型公共标签的睡眠数据集上训练该模型,并在较小的主题上对其进行测试。但是,他们通常认为火车和测试数据是从相同的分布中绘制的,这可能在现实世界中不存在。最近已经开发了无监督的域适应性(UDA)来处理此域移位问题。但是,以前用于睡眠分期的UDA方法具有两个主要局限性。首先,他们依靠一个完全共享的模型来对齐,该模型可能会在功能提取过程中丢失特定于域的信息。其次,它们仅在全球范围内将源和目标分布对齐,而无需考虑目标域中的类信息,从而阻碍了测试时模型的分类性能。在这项工作中,我们提出了一个名为Adast的新型对抗性学习框架,以解决未标记的目标域中的域转移问题。首先,我们开发了一个未共享的注意机制,以保留两个领域中的域特异性特征。其次,我们设计了一种迭代自我训练策略,以通过目标域伪标签提高目标域上的分类性能。我们还建议双重分类器,以提高伪标签的鲁棒性和质量。在六个跨域场景上的实验结果验证了我们提出的框架的功效及其优于最先进的UDA方法。源代码可在https://github.com/emadeldeen24/adast上获得。
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