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【學(xué)術(shù)報(bào)告】航海學(xué)院:Deep Learning for Audio Classification

發(fā)布時(shí)間:2019年12月09日 來(lái)源:航海學(xué)院 點(diǎn)擊數(shù):

報(bào)告主題:Deep Learning for Audio Classification

報(bào)人:Prof. Wenwu Wang

報(bào)告時(shí)間:1210日(周二10:00-11:30

報(bào)告地點(diǎn):航海學(xué)院323會(huì)議室

請(qǐng)人:于洋副教授

報(bào)告內(nèi)容簡(jiǎn)介:Audio classification (e.g. audio scene analysis, audio event detection and audio tagging) have a variety of potential applications in security surveillance, intelligent sensing for smart homes and cities, multimedia search and retrieval, and healthcare. This research area is under rapid development recently, having attracted increasing interest from both academia and industrialists. In this talk, we will present some recent and new development for several challenges related to this topic, including data challenges (e.g. DCASE challenges), acoustic modelling, feature learning, dealing with weakly labelled data, and learning with noisy labels. We will show some latest results of our proposed algorithms, such as the attention neural network algorithms for learning with weakly labelled data, and their results on AudioSet – a large scale dataset provided by Google, as compared with several baseline methods. We will also use some sound demos to illustrate the potentials of our proposed algorithms.

報(bào)告人簡(jiǎn)介:

Wenwu Wang is a Professor in Signal Processing and Machine Learning, and a Co-Director of the Machine Audition Lab within the Centre for Vision Speech and Signal Processing, University of Surrey, UK. He has been a Senior Area Editor (2019-) and Associate Editor (2014-2018) for IEEE Transactions on Signal Processing. He was a Publication Co-Chair for ICASSP 2019, Brighton, UK, and will serve as Tutorial Chair for ICASSP 2024, Seoul, South Korea. His current research interests include blind signal processing, sparse signal processing, audio-visual signal processing, machine learning and perception, artificial intelligence, machine audition (listening), and statistical anomaly detection. He has (co)-authored over 250 publications in these areas.

More information on his personal page:

http://personal.ee.surrey.ac.uk/Personal/W.Wang/

航海學(xué)院

2019年12月19日