Open-Window: A Sound Event Dataset for Window State Detection and Recognition

Saeid Safavi, Turab Iqbal, Wenwu Wang, Philip Coleman, Mark D. Plumbley
2020 Workshop on Detection and Classification of Acoustic Scenes and Events  
Situated in the domain of urban sound scene classification by humans and machines, this research is the first step towards mapping urban noise pollution experienced indoors and finding ways to reduce its negative impact in peoples' homes. We have recorded a sound dataset, called Open-Window, which contains recordings from three different locations and four different window states; two stationary states (open and close) and two transitional states (open to close and close to open). We have then
more » ... uilt our machine recognition baselines for different scenarios (open set versus closed set) using a deep learning framework. The human listening test is also performed to be able to compare the human and machine performance for detecting the window state just using the acoustic cues. Our experimental results reveal that when using a simple machine baseline system, humans and machines are achieving similar average performance for closed set experiments.
dblp:conf/dcase/SafaviIWCP20 fatcat:zgiys5krjjcbffzqv6wfrjv5uu