学习迁移
联合概率分布
计算机科学
合成孔径雷达
人工智能
模式识别(心理学)
特征(语言学)
条件概率分布
子空间拓扑
上下文图像分类
边际分布
概率分布
特征学习
条件概率
深度学习
雷达成像
图像(数学)
雷达
数学
随机变量
统计
哲学
语言学
电信
作者
Jie Geng,Xinyang Deng,Xiaorui Ma,Wen Jiang
标识
DOI:10.1109/tgrs.2020.2964679
摘要
The problem of different characters of heterogeneous synthetic aperture radar (SAR) images leads to poor performances for transfer learning of SAR image classification. To address this issue, a semisupervised model named as deep joint distribution adaptation networks (DJDANs) is proposed for transfer learning from a source SAR image to a different but similar target SAR image, which aims to match the joint probability distributions between the source domain and target domain. In the proposed DJDAN, a marginal distribution adaptation network is developed to map features across the domains into an augmented common feature subspace, which aims to match the marginal probability distributions and unify the dimensions. Then, a conditional distribution adaptation network is proposed to transfer knowledge across the domains, which aims to reduce the discrepancies of the conditional probability distributions and enhance the effectiveness of feature representation. Moreover, one-versus-rest classification is utilized in the proposed framework, which aims to improve the discrimination between the inside and outside class. Experimental results demonstrate the effectiveness of the proposed deep networks.
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