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引用次数: 11

摘要

目前可用的few-shot学习(具有少量训练样例的机器学习)基准在其涵盖的领域中是有限的,主要集中在图像分类上。这项工作旨在通过提供第一个全面、公开和完全可复制的基于音频的替代方案,覆盖各种声音域和实验设置,减轻对基于图像的基准的依赖。我们比较了各种技术在七个音频数据集(从环境声音到人类语音)上的少镜头分类性能。在此基础上,我们对联合训练(在训练期间使用所有数据集)和跨数据集适应协议进行了深入分析,建立了通用音频少镜头分类算法的可能性。我们的实验表明,基于梯度的元学习方法(如MAML和meta-曲率)始终优于度量和基线方法。我们还证明,联合训练例程有助于所包括的环境声音数据库的总体泛化,同时也是处理跨数据集/域设置的有效方法。
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MetaAudio: A Few-Shot Audio Classification Benchmark
Currently available benchmarks for few-shot learning (machine learning with few training examples) are limited in the domains they cover, primarily focusing on image classification. This work aims to alleviate this reliance on image-based benchmarks by offering the first comprehensive, public and fully reproducible audio based alternative, covering a variety of sound domains and experimental settings. We compare the few-shot classification performance of a variety of techniques on seven audio datasets (spanning environmental sounds to human-speech). Extending this, we carry out in-depth analyses of joint training (where all datasets are used during training) and cross-dataset adaptation protocols, establishing the possibility of a generalised audio few-shot classification algorithm. Our experimentation shows gradient-based meta-learning methods such as MAML and Meta-Curvature consistently outperform both metric and baseline methods. We also demonstrate that the joint training routine helps overall generalisation for the environmental sound databases included, as well as being a somewhat-effective method of tackling the cross-dataset/domain setting.
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