SignNet: Single Channel Sign Generation using Metric Embedded Learning
Tejaswini Ananthanarayana, Lipisha Chaudhary, Ifeoma Nwogu

TL;DR
SignNet introduces a novel metric embedding learning approach for text-to-sign translation using a single modality, achieving significant improvements over state-of-the-art models in BLEU scores on a benchmark dataset.
Contribution
The paper presents a new metric embedding learning method for T2S sign generation, focusing on preserving sign dissimilarities and outperforming traditional models.
Findings
SignNet outperforms state-of-the-art models in text-to-pose BLEU scores.
Metric embedding learning significantly improves translation quality.
Model achieves notable BLEU score improvements on RWTH PHOENIX-Weather-2014T.
Abstract
A true interpreting agent not only understands sign language and translates to text, but also understands text and translates to signs. Much of the AI work in sign language translation to date has focused mainly on translating from signs to text. Towards the latter goal, we propose a text-to-sign translation model, SignNet, which exploits the notion of similarity (and dissimilarity) of visual signs in translating. This module presented is only one part of a dual-learning two task process involving text-to-sign (T2S) as well as sign-to-text (S2T). We currently implement SignNet as a single channel architecture so that the output of the T2S task can be fed into S2T in a continuous dual learning framework. By single channel, we refer to a single modality, the body pose joints. In this work, we present SignNet, a T2S task using a novel metric embedding learning process, to preserve the…
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Videos
SignNet: Single Channel Sign Generation using Metric Embedded Learning· youtube
Taxonomy
TopicsHand Gesture Recognition Systems · Hearing Impairment and Communication · Natural Language Processing Techniques
