Simultaneous machine translation systems rely on a policy to schedule read and write operations in order to begin translating a source sentence before it is complete. In this paper, we demonstrate the use of Adaptive Computation Time (ACT) as an adaptive, learned policy for simultaneous machine translation using the transformer model and as a more numerically stable alternative to Monotonic Infinite Lookback Attention (MILk). We achieve state-of-the-art results in terms of latency-quality tradeoffs. We also propose a method to use our model on unsegmented input, i.e. without sentence boundaries, simulating the condition of translating output from automatic speech recognition. We present first benchmark results on this task
In simultaneous speech translation (SimulST), effective policies that determine when to write partia...
International audienceBoosted by the simultaneous translation shared task at IWSLT 2020, promising e...
Neural transducers have been widely used in automatic speech recognition (ASR). In this paper, we in...
Simultaneous neural Machine Translation (SiMT) aims to maintain translation quality while minimizing...
[EN] Simultaneous machine translation has recently gained traction thanks to significant quality imp...
International audienceSimultaneous machine translation consists in starting output generation before...
This research was reported in the trade magazine Slator: Language Industry Intelligence in Oct 2016 ...
Simultaneous speech translation (SimulST) is a challenging task aiming to translate streaming speech...
We investigate a new approach for SMT system training within the streaming model of computation. We ...
Streaming Machine Translation (MT) is the task of translating an unbounded input text stream in real...
Translation needs have greatly increased during the last years. In many situations, text to be tran...
Simultaneous translation systems start producing the output while processing the partial source sent...
We present a Deep Reinforcement Learning based approach for the task of real time machine translatio...
[EN] The cascade approach to Speech Translation (ST) is based on a pipeline that concatenates an Aut...
Simultaneous translation (ST) starts translations synchronously while reading source sentences, and ...
In simultaneous speech translation (SimulST), effective policies that determine when to write partia...
International audienceBoosted by the simultaneous translation shared task at IWSLT 2020, promising e...
Neural transducers have been widely used in automatic speech recognition (ASR). In this paper, we in...
Simultaneous neural Machine Translation (SiMT) aims to maintain translation quality while minimizing...
[EN] Simultaneous machine translation has recently gained traction thanks to significant quality imp...
International audienceSimultaneous machine translation consists in starting output generation before...
This research was reported in the trade magazine Slator: Language Industry Intelligence in Oct 2016 ...
Simultaneous speech translation (SimulST) is a challenging task aiming to translate streaming speech...
We investigate a new approach for SMT system training within the streaming model of computation. We ...
Streaming Machine Translation (MT) is the task of translating an unbounded input text stream in real...
Translation needs have greatly increased during the last years. In many situations, text to be tran...
Simultaneous translation systems start producing the output while processing the partial source sent...
We present a Deep Reinforcement Learning based approach for the task of real time machine translatio...
[EN] The cascade approach to Speech Translation (ST) is based on a pipeline that concatenates an Aut...
Simultaneous translation (ST) starts translations synchronously while reading source sentences, and ...
In simultaneous speech translation (SimulST), effective policies that determine when to write partia...
International audienceBoosted by the simultaneous translation shared task at IWSLT 2020, promising e...
Neural transducers have been widely used in automatic speech recognition (ASR). In this paper, we in...