Computational Analysis of Everyday Soundscapes

Acronym

EVERYSOUND

Description of the granted funding

Sounds carry a large amount of information about our everyday environment and physical events that take place in it. For example, when a car is passing by, one can perceive the approximate size and speed of the car. Sound can easily and unobtrusively be captured e.g. by mobile phones and transmitted further – for example, tens of hours of audio is uploaded to the internet every minute e.g. in the form of YouTube videos. However, today's technology is not able to recognize individual sound sources in realistic soundscapes, where multiple sounds are present, often simultaneously, and distorted by the environment. The ground-breaking objective of EVERYSOUND is to develop computational methods which will automatically provide high-level descriptions of environmental sounds in realistic everyday soundscapes such as street, park, home, etc. This requires developing several novel methods, including joint source separation and robust pattern classification algorithms to reliably recognize multiple overlapping sounds, and a hierarchical multilayer taxonomy to accurately categorize everyday sounds. The methods are based on the applicant's internationally recognized and awarded expertise on source separation and robust pattern recognition in speech and music processing, which will allow now tackling the new and challenging research area of everyday sound recognition. The results of EVERYSOUND will enable searching for multimedia based on its audio content, which is not possible with today's technology. It will allow mobile devices, robots, and intelligent monitoring systems to recognize activities in their environments using acoustic information. Producing automatically descriptions of vast quantities of audio will give new tools for geographical, social, cultural, and biological studies to analyze sounds related to human, animal, and natural activity in urban and rural areas, as well as multimedia in social networks.
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Starting year

2015

End year

2020

Granted funding

Tuomas Oskari Virtanen
1 500 000 €
Coordinator

Funder

European Union

Funding instrument

ERC Starting Grant

Framework programme

Horizon 2020 Framework Programme

Call

Programme part
EXCELLENT SCIENCE - European Research Council (ERC) (5215)
Topic
ERC Starting Grant (ERC-StG-2014)
Call ID
ERC-2014-STG

Other information

Funding decision number

637422

Identified topics

virtual reality, augmented reality