计算机科学
人工智能
判别式
水准点(测量)
领域(数学分析)
机器学习
深度学习
域适应
生成语法
适应(眼睛)
深层神经网络
对抗制
学习迁移
模式识别(心理学)
光学
地理
数学分析
物理
大地测量学
分类器(UML)
数学
作者
Sicheng Zhao,Xiangyu Yue,Shanghang Zhang,Bo Li,Han Zhao,Bichen Wu,Ravi Krishna,Joseph E. Gonzalez,Alberto Sangiovanni‐Vincentelli,Sanjit A. Seshia,Kurt Keutzer
标识
DOI:10.1109/tnnls.2020.3028503
摘要
Large-scale labeled training datasets have enabled deep neural networks to excel across a wide range of benchmark vision tasks. However, in many applications, it is prohibitively expensive and time-consuming to obtain large quantities of labeled data. To cope with limited labeled training data, many have attempted to directly apply models trained on a large-scale labeled source domain to another sparsely labeled or unlabeled target domain. Unfortunately, direct transfer across domains often performs poorly due to the presence of domain shift or dataset bias. Domain adaptation (DA) is a machine learning paradigm that aims to learn a model from a source domain that can perform well on a different (but related) target domain. In this article, we review the latest single-source deep unsupervised DA methods focused on visual tasks and discuss new perspectives for future research. We begin with the definitions of different DA strategies and the descriptions of existing benchmark datasets. We then summarize and compare different categories of single-source unsupervised DA methods, including discrepancy-based methods, adversarial discriminative methods, adversarial generative methods, and self-supervision-based methods. Finally, we discuss future research directions with challenges and possible solutions.
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