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arxiv: 1510.04616 · v1 · pith:HSMVKWWJnew · submitted 2015-10-15 · 💻 cs.SD

Evaluating the Non-Intrusive Room Acoustics Algorithm with the ACE Challenge

classification 💻 cs.SD
keywords methoddataestimateestimationfull-bandnetworkneuralnon-intrusive
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We present a single channel data driven method for non-intrusive estimation of full-band reverberation time and full-band direct-to-reverberant ratio. The method extracts a number of features from reverberant speech and builds a model using a recurrent neural network to estimate the reverberant acoustic parameters. We explore three configurations by including different data and also by combining the recurrent neural network estimates using a support vector machine. Our best method to estimate DRR provides a Root Mean Square Deviation (RMSD) of 3.84 dB and a RMSD of 43.19 % for T60 estimation.

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