|The REVERB challenge: A common evaluation framework for dereverberation and recognition of reverberant speech|
K Kinoshita, M Delcroix, T Yoshioka, T Nakatani, E Habets, ...
2013 IEEE Workshop on Applications of Signal Processing to Audio and†…, 2013
|A summary of the REVERB challenge: state-of-the-art and remaining challenges in reverberant speech processing research|
K Kinoshita, M Delcroix, S Gannot, EA P. Habets, R Haeb-Umbach, ...
EURASIP Journal on Advances in Signal Processing 2016, 1-19, 2016
|Making machines understand us in reverberant rooms: Robustness against reverberation for automatic speech recognition|
T Yoshioka, A Sehr, M Delcroix, K Kinoshita, R Maas, T Nakatani, ...
IEEE Signal Processing Magazine 29 (6), 114-126, 2012
|Anchored speech detection and speech recognition|
SHK Parthasarathi, B Hoffmeister, B King, R Maas
US Patent 10,373,612, 2019
|Reverberation model-based decoding in the logmelspec domain for robust distant-talking speech recognition|
A Sehr, R Maas, W Kellermann
IEEE transactions on audio, speech, and language processing 18 (7), 1676-1691, 2010
|Improving noise robustness of automatic speech recognition via parallel data and teacher-student learning|
L Mošner, M Wu, A Raju, SHK Parthasarathi, K Kumatani, S Sundaram, ...
ICASSP 2019-2019 IEEE International Conference on Acoustics, Speech and†…, 2019
|A stereophonic acoustic signal extraction scheme for noisy and reverberant environments|
K Reindl, Y Zheng, A Schwarz, S Meier, R Maas, A Sehr, W Kellermann
Computer Speech & Language 27 (3), 726-745, 2013
|Device-directed utterance detection|
SH Mallidi, R Maas, K Goehner, A Rastrow, S Matsoukas, B Hoffmeister
arXiv preprint arXiv:1808.02504, 2018
|Spatial diffuseness features for DNN-based speech recognition in noisy and reverberant environments|
A Schwarz, C Huemmer, R Maas, W Kellermann
2015 IEEE International Conference on Acoustics, Speech and Signal†…, 2015
|Efficient minimum word error rate training of RNN-Transducer for end-to-end speech recognition|
J Guo, G Tiwari, J Droppo, M Van Segbroeck, CW Huang, A Stolcke, ...
arXiv preprint arXiv:2007.13802, 2020
|Towards a better understanding of the effect of reverberation on speech recognition performance|
A Sehr, EAP Habets, R Maas, W Kellermann
Proc. IWAENC, 1-4, 2010
|Improving ASR confidence scores for Alexa using acoustic and hypothesis embeddings|
P Swarup, R Maas, S Garimella, SH Mallidi, B Hoffmeister
|Robust speech recognition via anchor word representations|
B King, IF Chen, Y Vaizman, Y Liu, R Maas, SHK Parthasarathi, ...
|Wav2vec-c: A self-supervised model for speech representation learning|
S Sadhu, D He, CW Huang, SH Mallidi, M Wu, A Rastrow, A Stolcke, ...
arXiv preprint arXiv:2103.08393, 2021
|On the application of reverberation suppression to robust speech recognition|
R Maas, EAP Habets, A Sehr, W Kellermann
2012 IEEE International Conference on Acoustics, Speech and Signal†…, 2012
|Combining acoustic embeddings and decoding features for end-of-utterance detection in real-time far-field speech recognition systems|
R Maas, A Rastrow, C Ma, G Lan, K Goehner, G Tiwari, S Joseph, ...
2018 IEEE International Conference on Acoustics, Speech and Signal†…, 2018
|A two-channel acoustic front-end for robust automatic speech recognition in noisy and reverberant environments|
R Maas, A Schwarz, Y Zheng, K Reindl, S Meier, A Sehr, W Kellermann
Machine Listening in Multisource Environments, 2011
|The elitist particle filter based on evolutionary strategies as novel approach for nonlinear acoustic echo cancellation|
C Huemmer, C Hofmann, R Maas, A Schwarz, W Kellermann
2014 IEEE International Conference on Acoustics, Speech and Signal†…, 2014
|Synthasr: Unlocking synthetic data for speech recognition|
A Fazel, W Yang, Y Liu, R Barra-Chicote, Y Meng, R Maas, J Droppo
arXiv preprint arXiv:2106.07803, 2021
|The NLMS algorithm with time-variant optimum stepsize derived from a Bayesian network perspective|
C Huemmer, R Maas, W Kellermann
IEEE Signal Processing Letters 22 (11), 1874-1878, 2015