For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domestic environment audio recordings. We describe our approach of obtaining annotations for the recordings. Further, we quantify agreement between obtained annotations. Finally, we report baseline results for sound source recognition using the obtained dataset. Our annotation approach associates each 4-second excerpt from the audio recordings with multiple labels, on a set of 7 labels associated with sound sources in the acoustic environment. With the aid of 3 human annotators, we obtain 3 sets of multi-label annotations, for 4378 4-second audio excerpts. We evaluate agreement between annotators by computing Jaccard indices between sets of label a...
This paper presents the Real-Life Indoor Sound Event Dataset (ReaLISED), a new database which has be...
Environmental sound archives - casual recordings of people's daily life - are easily collected by MP...
ICME2002: IEEE International Conference on Multimedia and Expo, August 27-29, 2002, Lusanne, Switz...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
<p>Audio information retrieval is a difficult problem due to the highly unstructured nature of the d...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
The dataset was created for studying estimation of strong labels using crowdsourcing. It contains 4...
This work addresses the soundtrack indexing of multimedia documents. Our purpose is to detect and lo...
We introduce ChannelSet, a dataset which provides a launchpad for exploring the extraneous acoustic ...
In the developing field of automatic sound recognition there exists a need for well-annotated traini...
Abstract Recently, sound recognition has been used to identify sounds, such as the sound of a car, o...
The availability of audio data on sound sharing platforms such as Freesound gives users access to la...
Strong labels are a necessity for evaluation of sound event detection methods, but often scarcely av...
Sound recognition systems aim to determine what source produced a sound event. Until now, such syste...
This paper presents the Real-Life Indoor Sound Event Dataset (ReaLISED), a new database which has be...
Environmental sound archives - casual recordings of people's daily life - are easily collected by MP...
ICME2002: IEEE International Conference on Multimedia and Expo, August 27-29, 2002, Lusanne, Switz...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
For the task of sound source recognition, we introduce a novel data set based on 6.8 hours of domest...
<p>Audio information retrieval is a difficult problem due to the highly unstructured nature of the d...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
The dataset was created for studying estimation of strong labels using crowdsourcing. It contains 4...
This work addresses the soundtrack indexing of multimedia documents. Our purpose is to detect and lo...
We introduce ChannelSet, a dataset which provides a launchpad for exploring the extraneous acoustic ...
In the developing field of automatic sound recognition there exists a need for well-annotated traini...
Abstract Recently, sound recognition has been used to identify sounds, such as the sound of a car, o...
The availability of audio data on sound sharing platforms such as Freesound gives users access to la...
Strong labels are a necessity for evaluation of sound event detection methods, but often scarcely av...
Sound recognition systems aim to determine what source produced a sound event. Until now, such syste...
This paper presents the Real-Life Indoor Sound Event Dataset (ReaLISED), a new database which has be...
Environmental sound archives - casual recordings of people's daily life - are easily collected by MP...
ICME2002: IEEE International Conference on Multimedia and Expo, August 27-29, 2002, Lusanne, Switz...