"PUBLICATIONS
-Visual Speech Recognition
We developed an end-to-end deep learning architecture for word-level visual speech recognition and we attained 17.0% word error rate on BBC-TV [3].
We further modified it and we attained 11.9% word error rate. We also demonstrated promising results on low-shot learning, i.e. on words with few examples for training [4].
We worked on visual key-word spotting. Our system obtained very promising KWS results for keywords unseen during training [7].
-Audiovisual Speech Recognition
We collaborated with Imperial College London in developing (a) the first truly end-to-end system audiovisual word recognition [5], a hybrid CTC/attention architecture for audio-visual ASR [9].
We performed an exhaustive experimentation on the challenging ""Lipreading in the wild"" database [8].
-Audio-only Speech and Speaker Recognition
We participated with the I4U consortium in the prestigious NIST Speaker Recognition Evaluation (SRE) of 2016 [4] [5].
We contributed in the development of a generic method called meta-embeddings which improves i-vector/PLDA model by 20% [6].
We helped towards improving a text-dependent method for text-dependent and text-prompted speaker recognition. The method goes beyond state-of-the-art in the challenging RSR-2015 part III benchmark [10].
WORKSHOP ORGANIZATION
We organised a one-day workshop at BMVC-2017 that took place in Imperial College London (visit:
http://www.talking-heads.eu/bmvc/(si apre in una nuova finestra)).
LIST OF PUBLICATIONS AND SUBMISSIONS
[1] KA Lee, H Sun, S Aleksandr, W Guangsen, T Stafylakis, G Tzimiropoulos, et al. “The I4U submission to the 2016 NIST speaker recognition evaluation”, NIST SRE 2016 Workshop, 2016.
[2] KA Lee, V Hautamäki, T Kinnunen, A Larcher, C Zhang, A Nautsch, T Stafylakis, G Tzimiropoulos, et al. “The I4U mega fusion and collaboration for NIST speaker recognition evaluation 2016”, ISCA Interspeech 2017.
[3] T Stafylakis and G Tzimiropoulos, “Combining Residual Networks with LSTMs for Lipreading”, ISCA Interspeech 2017.
[4] T Stafylakis and G Tzimiropoulos, “Deep word embeddings for visual speech recognition”, IEEE ICASSP 2018.
[5] S Petridis, T Stafylakis, P Ma, F Cai, G Tzimiropoulos, M Pantic, “End-to-end Audiovisual Speech Recognition”, IEEE ICASSP 2018.
[6] N Brummer, A Silnova, L Burget, T Stafylakis, “Gaussian meta-embeddings for efficient scoring of a heavy-tailed PLDA model”, ISCA Odyssey 2018.
[7] T Stafylakis and G Tzimiropoulos, “Zero-shot keyword spotting for visual speech recognition in-the-wild”, ECCV 2018 (accepted).
[8] T Stafylakis, MH Khan and G Tzimiropoulos, “Pushing the boundaries of audiovisual word recognition using Spatiotemporal Residual Networks and LSTMs”, Computer Vision and Image Understanding, Elsevier (Journal Publication, current status: “minor revisions”).
[9] S Petridis, T Stafylakis, Pingchuan Ma, G Tzimiropoulos, M Pantic, “Audio-visual speech recognition with a hybrid CTC/attention architecture”, IEEE Workshop on Spoken Language Technology (SLT), 2018 (current status: “under review”).
[10] N Maghsoodi, H Sameti, H Zeinali, T Stafylakis, “Speaker Recognition with Random Digit Strings Using Uncertainty Normalized HMM-based i-vectors”, IEEE/ACM Transactions on Audio, Speech and Language Processing (Journal Publication, current status: “under review”).
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