论文标题
域名的域名少量学习扬声器验证
Domain Agnostic Few-shot Learning for Speaker Verification
论文作者
论文摘要
验证系统的深度学习模型通常无法推广到新用户和新环境,即使他们学习了高度歧视的功能。为了解决这个问题,我们提出了一些弹出域的概括框架,该框架学会了解决新用户和新域的分销转变。我们的框架由特定领域和域聚集网络组成,分别是特定和组合域的专家。通过使用这些网络,我们生成的发作是模仿新颖用户和新型域在训练阶段的存在,以最终产生更好的概括。为了节省内存,我们通过将相似域聚集在一起来减少特定域网络的数量。经过对人为生成的噪声域的广泛评估,我们可以明确显示我们框架的概括能力。此外,我们将提出的方法应用于标准基准的现有竞争体系结构,这显示了进一步的性能改进。
Deep learning models for verification systems often fail to generalize to new users and new environments, even though they learn highly discriminative features. To address this problem, we propose a few-shot domain generalization framework that learns to tackle distribution shift for new users and new domains. Our framework consists of domain-specific and domain-aggregation networks, which are the experts on specific and combined domains, respectively. By using these networks, we generate episodes that mimic the presence of both novel users and novel domains in the training phase to eventually produce better generalization. To save memory, we reduce the number of domain-specific networks by clustering similar domains together. Upon extensive evaluation on artificially generated noise domains, we can explicitly show generalization ability of our framework. In addition, we apply our proposed methods to the existing competitive architecture on the standard benchmark, which shows further performance improvements.