ARCA23K: An audio dataset for investigating open-set label noise

19 Sep 2021  ·  Turab Iqbal, Yin Cao, Andrew Bailey, Mark D. Plumbley, Wenwu Wang ·

The availability of audio data on sound sharing platforms such as Freesound gives users access to large amounts of annotated audio. Utilising such data for training is becoming increasingly popular, but the problem of label noise that is often prevalent in such datasets requires further investigation. This paper introduces ARCA23K, an Automatically Retrieved and Curated Audio dataset comprised of over 23000 labelled Freesound clips. Unlike past datasets such as FSDKaggle2018 and FSDnoisy18K, ARCA23K facilitates the study of label noise in a more controlled manner. We describe the entire process of creating the dataset such that it is fully reproducible, meaning researchers can extend our work with little effort. We show that the majority of labelling errors in ARCA23K are due to out-of-vocabulary audio clips, and we refer to this type of label noise as open-set label noise. Experiments are carried out in which we study the impact of label noise in terms of classification performance and representation learning.

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Datasets


Introduced in the Paper:

ARCA23K

Used in the Paper:

AudioSet FSD50K FSDnoisy18k FSDKaggle2018

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