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 23 000 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 o...
Strong labels are a necessity for evaluation of sound event detection methods, but often scarcely av...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
Label noise is an important issue in classification, with many potential negative consequences. For ...
ARCA23K is a dataset of labelled sound events created to investigate real-world label noise. It cont...
Comunicació presentada a: ICASSP 2019 - 2019 IEEE International Conference on Acoustics, Speech and ...
This paper introduces Task 2 of the DCASE2019 Challenge, titled "Audio tagging with noisy labels and...
This thesis focuses on the aspect of label noise for real-life datasets. Due to the upcoming growing...
Label noise refers to the presence of inaccurate target labels in a dataset. It is an impediment to ...
<p>Audio information retrieval is a difficult problem due to the highly unstructured nature of the d...
This thesis is a first approach to creating and evaluating algorithms whose aim is to detect an unwa...
In classification, it is often difficult or expensive to obtain completely accurate and reliable lab...
Label noise refers to the presence of inaccurate target labels in a dataset. It is an impediment to ...
General-purpose audio tagging refers to classifying sounds that are of a diverse nature, and is rele...
In this paper we present our audio tagging system for the DCASE 2019 Challenge Task 2. We propose a ...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Strong labels are a necessity for evaluation of sound event detection methods, but often scarcely av...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
Label noise is an important issue in classification, with many potential negative consequences. For ...
ARCA23K is a dataset of labelled sound events created to investigate real-world label noise. It cont...
Comunicació presentada a: ICASSP 2019 - 2019 IEEE International Conference on Acoustics, Speech and ...
This paper introduces Task 2 of the DCASE2019 Challenge, titled "Audio tagging with noisy labels and...
This thesis focuses on the aspect of label noise for real-life datasets. Due to the upcoming growing...
Label noise refers to the presence of inaccurate target labels in a dataset. It is an impediment to ...
<p>Audio information retrieval is a difficult problem due to the highly unstructured nature of the d...
This thesis is a first approach to creating and evaluating algorithms whose aim is to detect an unwa...
In classification, it is often difficult or expensive to obtain completely accurate and reliable lab...
Label noise refers to the presence of inaccurate target labels in a dataset. It is an impediment to ...
General-purpose audio tagging refers to classifying sounds that are of a diverse nature, and is rele...
In this paper we present our audio tagging system for the DCASE 2019 Challenge Task 2. We propose a ...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Strong labels are a necessity for evaluation of sound event detection methods, but often scarcely av...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
Label noise is an important issue in classification, with many potential negative consequences. For ...