DocumentCode :
3600141
Title :
Long short term memory neural network for keyboard gesture decoding
Author :
Alsharif, Ouais ; Ouyang, Tom ; Beaufays, Francoise ; Shumin Zhai ; Breuel, Thomas ; Schalkwyk, Johan
Author_Institution :
Google, Mountain View, CA, USA
fYear :
2015
Firstpage :
2076
Lastpage :
2080
Abstract :
Gesture typing is an efficient input method for phones and tablets using continuous traces created by a pointed object (e.g., finger or stylus). Translating such continuous gestures into textual input is a challenging task as gesture inputs exhibit many features found in speech and handwriting such as high variability, co-articulation and elision. In this work, we address these challenges with a hybrid approach, combining a variant of recurrent networks, namely Long Short Term Memories [1] with conventional Finite State Transducer decoding [2]. Results using our approach show considerable improvement relative to a baseline shape-matching-based system, amounting to 4% and 22% absolute improvement respectively for small and large lexicon decoding on real datasets and 2% on a synthetic large scale dataset.
Keywords :
acoustic signal processing; decoding; finite state machines; gesture recognition; keyboards; neural nets; baseline shape-matching-based system; coarticulation; conventional finite state transducer decoding; gesture inputs; handwriting; keyboard gesture decoding; lexicon decoding; long short term memory neural network; speech; stylus; textual input; Computer architecture; Decoding; Hidden Markov models; Keyboards; Recurrent neural networks; Speech recognition; Training; LSTM; Long-short term memory; gesture typing; keyboard;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/ICASSP.2015.7178336
Filename :
7178336
Link To Document :
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