论文标题
域调整网络
Domain Conditioned Adaptation Network
论文作者
论文摘要
通过寻求域不变特征,已经做出了巨大的研究工作,以蓬勃发展深度领域的适应性(DA)。大多数现有的深色DA模型仅着眼于跨域的特定于任务层的特征表示,同时集成了用于源和目标的完全共享的卷积体系结构。但是,我们认为,当源和目标数据分布在很大程度上不同时,如此强烈共享的卷积层可能对特定于域特征的特征学习有害。在本文中,我们放宽了先前DA方法做出的共享convnets假设,并提出了一个域调节网络(DCAN),该域旨在用域调节的通道注意机制激发不同的卷积通道。结果,可以适当探索关键的低级域依赖性知识。据我们所知,这是探索深度DA网络的域卷积渠道激活的第一项工作。此外,为了有效地对齐两个域上的高级特征分布,我们在特定于任务特定的层之后进一步部署了域的特征校正块,这将明确纠正域差异。对三个跨域基准测试的广泛实验表明,所提出的方法的表现优于现有方法,尤其是在非常严格的跨域学习任务上。
Tremendous research efforts have been made to thrive deep domain adaptation (DA) by seeking domain-invariant features. Most existing deep DA models only focus on aligning feature representations of task-specific layers across domains while integrating a totally shared convolutional architecture for source and target. However, we argue that such strongly-shared convolutional layers might be harmful for domain-specific feature learning when source and target data distribution differs to a large extent. In this paper, we relax a shared-convnets assumption made by previous DA methods and propose a Domain Conditioned Adaptation Network (DCAN), which aims to excite distinct convolutional channels with a domain conditioned channel attention mechanism. As a result, the critical low-level domain-dependent knowledge could be explored appropriately. As far as we know, this is the first work to explore the domain-wise convolutional channel activation for deep DA networks. Moreover, to effectively align high-level feature distributions across two domains, we further deploy domain conditioned feature correction blocks after task-specific layers, which will explicitly correct the domain discrepancy. Extensive experiments on three cross-domain benchmarks demonstrate the proposed approach outperforms existing methods by a large margin, especially on very tough cross-domain learning tasks.