1. This paper presents an active learning framework for the classification of one-minute audio-recordings derived from long-duration recordings of the environment. The goal of the framework is to investigate the efficacy of active learning on reducing the manual annotation effort required to label a large volume of acoustic data according to its dominant sound source, while ensuring the high quality of automatically labelled data. 2. We present a comprehensive empirical comparison through extensive simulation experiments of a range of active learning approaches against a Random Sampling baseline for soundscape classification. Random Forest is used as a benchmark supervised approach to build classifiers in the active learning framework. Also...
International audienceAutomatic detection and classification of animal sounds has many applications ...
Environmental sound events are defined as sounds occurring naturally or produced due to human activi...
Labeling audio material to train classifiers comes with a large amount of human labor. In this pape...
1. This paper presents an active learning framework for the classification of one-minute audio-recor...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Audio classification tasks like speech recognition and acoustic scene analysis require substantial l...
This paper proposes an active learning method to control a labeling process for efficient annotation...
This paper proposes a novel active learning method to save annotation effort when preparing material...
Long-duration sound recordings are an established technique to monitor terrestrial ecosystems. Acous...
<p>There are 16,930 sound instances in our database with durations ranging 242 from 1 to 10 seconds,...
Environmental sound archives - casual recordings of people's daily life - are easily collected by MP...
Coping with scarcity of labeled data is a common problem in sound classification tasks. Approaches f...
Continuous audio recordings are playing an ever more important role in conservation and biodiversity...
Labeling of samples is a recurrent and time-consuming task in data analysis and machine learning and...
International audienceMuch audio content today is rendered as a static stereo mix: fundamentally a f...
International audienceAutomatic detection and classification of animal sounds has many applications ...
Environmental sound events are defined as sounds occurring naturally or produced due to human activi...
Labeling audio material to train classifiers comes with a large amount of human labor. In this pape...
1. This paper presents an active learning framework for the classification of one-minute audio-recor...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Audio classification tasks like speech recognition and acoustic scene analysis require substantial l...
This paper proposes an active learning method to control a labeling process for efficient annotation...
This paper proposes a novel active learning method to save annotation effort when preparing material...
Long-duration sound recordings are an established technique to monitor terrestrial ecosystems. Acous...
<p>There are 16,930 sound instances in our database with durations ranging 242 from 1 to 10 seconds,...
Environmental sound archives - casual recordings of people's daily life - are easily collected by MP...
Coping with scarcity of labeled data is a common problem in sound classification tasks. Approaches f...
Continuous audio recordings are playing an ever more important role in conservation and biodiversity...
Labeling of samples is a recurrent and time-consuming task in data analysis and machine learning and...
International audienceMuch audio content today is rendered as a static stereo mix: fundamentally a f...
International audienceAutomatic detection and classification of animal sounds has many applications ...
Environmental sound events are defined as sounds occurring naturally or produced due to human activi...
Labeling audio material to train classifiers comes with a large amount of human labor. In this pape...