Spatio-Temporal Attention Mechanism and Knowledge Distillation for Lip Reading

Elashmawy, Shahd, Ramsis, Marian, Eraqi, Hesham M., Eldeshnawy, Farah, Mabrouk, Hadeel, Abugabal, Omar, Sakr, Nourhan

arXiv.org Artificial Intelligence 

Despite the advancement in the domain of audio and audio-visual speech recognition, visual speech recognition systems are still quite under-explored due to the visual ambiguity of some phonemes. In this work, we propose a new lip-reading model that combines three contributions. First, the model front-end adopts a spatio-temporal attention mechanism to help extract the informative data from the input visual frames. Second, the model back-end utilizes a sequence-level and frame-level Knowledge Distillation (KD) techniques that allow leveraging audio data during the visual model training. Third, a data preprocessing pipeline is adopted that includes facial landmarks detection-based lip-alignment. On LRW lip-reading dataset benchmark, a noticeable accuracy improvement is demonstrated; the spatio-temporal attention, Knowledge Distillation, and lip-alignment contributions achieved 88.43%, 88.64%, and 88.37% respectively.