General information |
Label |
Value |
Description |
|
Name |
TAU Urban Acoustic Scenes 2019, Leaderboard dataset |
Full dataset name |
|
ID |
scenes/tau_asc_2019_lb
|
Datalist id for external indexing |
|
Abbreviation |
TAU-ASC2019-LB |
Official dataset abbreviation, e.g. one used in the original paper |
|
Provider |
TAU |
|
|
Year |
2019 |
Dataset release year |
|
Modalities |
Audio
|
Data modalities included in the dataset |
|
Collection name |
TAU Urban Acoustic Scenes |
Common name for all related datasets, used to group datasets coming from same source |
|
Research domain |
ASC
|
Related domains, e.g., Scenes, Mobile devices, Audio-visual, Open set, Ambient noise, Unlabelled, Multiple sensors, SED, SELD, Tagging, FL, Strong annotation, Weak annotation, Unlabelled, Multi-annotator |
|
Related datasets name |
|
|
|
License |
Free |
|
|
Download |
Download
(3.0GB)
|
|
|
Citation |
[Mesaros2018] A multi-device dataset for urban acoustic scene classification
|
|
Audio |
Label |
Value |
Description |
|
Data |
|
|
Data type |
Audio
|
Possible values: Audio | Features |
|
|
File format |
|
|
|
File format type |
Constant
|
Possible values: Constant | Variable |
|
|
|
File format |
wav
|
Possible value: wav | aiff | flac | mp3 | aac | ogg |
|
|
|
Lossy compression |
No
|
is audio compressed in a lossy manner |
|
|
|
Bit rate |
24 |
Bit depth of audio, possible values: 8 | 16 | 24 | 32 |
|
|
|
Sampling rate (kHz) |
48 kHz |
Sampling rate in kHz, possible values: 8 | 16 | 22.05 | 32 | 44.1 | 48 |
|
|
Channels |
|
|
|
Setup |
Binaural
|
Possible values: Mono | Stereo | Binaural | Ambisonic | Array | Multi-Channel | Variable |
|
|
|
Number of channels |
2 |
|
|
|
Material |
|
|
|
Source |
Original
|
Possible values: Original | Youtube | Freesound | Online | Crowdsourced | [Dataset name] |
|
|
|
Variability sources |
Country
City
Location
Position
|
Possible values: Country | City | Location | Position | Device |
|
Content |
|
|
Content type |
Freefield
|
Possible values: Freefield | Synthetic | Isolated |
|
|
Scene |
Constant
|
Is the scene class constant for single recording, possible values: Constant | Variable |
|
Recording |
|
|
Setup |
Uncontrolled
|
Possible values: Near-field | Far-field | Mixed | Uncontrolled | Unknown |
|
|
Setup count |
1 |
Amount of different recording setups (microphone and recording device) used |
|
|
Spot type |
Fixed
|
Possible values: Fixed | Moving | Unknown |
|
Files |
|
|
Count |
1200 files |
Total number of files |
|
|
Total duration (minutes) |
200 min |
Total duration of the dataset in minutes |
|
|
File length |
Constant
|
Characterization of the file lengths, possible values: Constant | Quasi-constant | Variable |
|
|
File length (seconds) |
10 sec |
Approximate length of files |
Meta |
Label |
Value |
Description |
|
Types |
Scene
|
List of meta data types provided for the data, possible values: Event, Tag, Scene, Caption, Geolocation, Spatial location, Annotator, Timestamp, Presence, Proximity, etc. |
|
Scene |
|
|
Classes |
10 |
Number of scene classes |
|
|
Classes |
- airport
- bus
- metro station
- metro
- park
- public square
- shopping mall
- street traffic
- street pedestrian
- tram
|
|
|
|
Annotation |
|
|
|
Type |
None
|
Possible values: Strong | Weak | None |
|
|
|
Labelled amount (%) |
0 % |
Percentage of all data, amount of data which is labelled |
|
|
Labeling |
|
|
|
Hierarchical |
No
|
|
|
|
Instance |
|
|
|
Count |
1200 |
Count of all scene instances in the dataset |
Cross-validation setup |
Label |
Value |
Description |
|
|
Provided |
No
|
|
Baseline |
Label |
Value |
Description |
|
|
Download |
Download
|
Link to baseline system source code |
Info |
Label |
Value |
Description |
|
|
Evaluation campaign |
DCASE2019 task1A |
Evaluation campaigns where the dataset was used. |