The goal of automatic Sign Language Production (SLP) is to translate spoken language to a continuous stream of sign language video at a level comparable to a human translator. If this was achievable, then it would revolutionise Deaf hearing communications. Previous work on predominantly isolated SLP has shown the need for architectures that are better suited to the continuous domain of full sign sequences. In this paper, we propose Progressive Transformers, the first SLP model to translate from discrete spoken language sentences to continuous 3D sign pose sequences in an end-to-end manner. A novel counter decoding technique is introduced, that enables continuous sequence generation at training and inference. We present two model configurati...
There are softwares which translate from any language to any language, however, the promise of the f...
heute gibt es aber auch mehr angebote in der kultur oder woanders (trans: Today, however, there are ...
Main paper and code for "Stochastic Transformer Networks with Linear Competing Units: Application t...
AbstractSign languages are multi-channel visual languages, where signers use a continuous 3D space t...
Prior work on Sign Language Translation has shown that having a mid-level sign gloss representation(...
It is common practice to represent spoken languages at their phonetic level. However, for sign langu...
We present a novel approach to automatic Sign Language Production using recent developments in Neura...
We present a novel approach to automatic Sign Language Production using stateof- the-art Neural Mach...
Sign Languages are rich multi-channel languages, requiring articulation of both manual (hands) and n...
Sign languages have been studied by computer vision researchers for the last threedecades. One of th...
Sign language is a form of visual language that uses face expression and hand gestures to communicat...
We present SignSynth, a fully automatic and holistic approach to generating sign language video. Tra...
Automating sign language translation (SLT) is a challenging real-world application. Despite its soci...
Sign Language Recognition (SLR) has been an active research field for the last two decades. However,...
We present SignSynth, a fully automatic and holistic approach to generating sign language video. Tr...
There are softwares which translate from any language to any language, however, the promise of the f...
heute gibt es aber auch mehr angebote in der kultur oder woanders (trans: Today, however, there are ...
Main paper and code for "Stochastic Transformer Networks with Linear Competing Units: Application t...
AbstractSign languages are multi-channel visual languages, where signers use a continuous 3D space t...
Prior work on Sign Language Translation has shown that having a mid-level sign gloss representation(...
It is common practice to represent spoken languages at their phonetic level. However, for sign langu...
We present a novel approach to automatic Sign Language Production using recent developments in Neura...
We present a novel approach to automatic Sign Language Production using stateof- the-art Neural Mach...
Sign Languages are rich multi-channel languages, requiring articulation of both manual (hands) and n...
Sign languages have been studied by computer vision researchers for the last threedecades. One of th...
Sign language is a form of visual language that uses face expression and hand gestures to communicat...
We present SignSynth, a fully automatic and holistic approach to generating sign language video. Tra...
Automating sign language translation (SLT) is a challenging real-world application. Despite its soci...
Sign Language Recognition (SLR) has been an active research field for the last two decades. However,...
We present SignSynth, a fully automatic and holistic approach to generating sign language video. Tr...
There are softwares which translate from any language to any language, however, the promise of the f...
heute gibt es aber auch mehr angebote in der kultur oder woanders (trans: Today, however, there are ...
Main paper and code for "Stochastic Transformer Networks with Linear Competing Units: Application t...