Most existing domain adaptation methods focus on adaptation from only one source domain, however, in practice there are a number of relevant sources that could be leveraged to help improve performance on target domain. We propose a novel approach named T-SVDNet to address the task of Multi-source Domain Adaptation (MDA), which is featured by incorporating Tensor Singular Value Decomposition (T-SVD) into a neural network's training pipeline. Overall, high-order correlations among multiple domains and categories are fully explored so as to better bridge the domain gap. Specifically, we impose Tensor-Low-Rank (TLR) constraint on a tensor obtained by stacking up a group of prototypical similarity matrices, aiming at capturing consistent data structure across different domains. Furthermore, to avoid negative transfer brought by noisy source data, we propose a novel uncertainty-aware weighting strategy to adaptively assign weights to different source domains and samples based on the result of uncertainty estimation. Extensive experiments conducted on public benchmarks demonstrate the superiority of our model in addressing the task of MDA compared to state-of-the-art methods.
翻译:大多数现有领域适应方法只侧重于一个源域的适应,但在实践中,有一些相关来源可以用来帮助提高目标域的绩效,我们提议采用名为T-SVDNet的新颖办法,处理多源域适应(MDA)的任务,将热索星值分解(T-SVD)纳入神经网络的培训管道,全面探讨多个领域和类别之间的高分级关系,以更好地弥合域间差距,具体地说,我们对通过堆叠一组原型相似性矩阵获得的分级限制,目的是获取不同领域的一致数据结构,此外,为避免杂音源数据带来的负面转移,我们建议采用新的不确定性加权战略,根据不确定性估计的结果,对不同源域和样本进行适应性分配权重。