SignNet: Single Channel Sign Generation using Metric Embedded Learning

Tejaswini Ananthanarayana, Lipisha Chaudhary, Ifeoma Nwogu
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引用次数: 2

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 distances between sign embeddings relative to their dissimilarity. We also describe how to choose positive and negative examples of signs for similarity testing. From our analysis, we observe that metric embedding learning-based model perform significantly better than the other models with traditional losses, when evaluated using BLEU scores. In the task of gloss to pose, SignNet performed as well as its state-of-the-art (SoTA) counterparts and outperformed them in the task of text to pose, by showing noteworthy enhancements in BLEU 1 - BLEU 4 scores (BLEU 1: 31 → 39; ≈26% improvement and BLEU 4: 10.43 →11.84; ≈14% improvement) when tested on the popular RWTH PHOENIX-Weather-2014T benchmark dataset
SignNet:使用度量嵌入式学习生成单通道符号
一个真正的口译员不仅理解手语并翻译成文本,而且理解文本并翻译成符号。迄今为止,手语翻译中的大部分人工智能工作主要集中在从手势到文本的翻译上。为了实现后一个目标,我们提出了一个文本到符号的翻译模型,SignNet,它利用了翻译中视觉符号的相似性(和不相似性)的概念。本模块只是文本到签名(T2S)和符号到文本(S2T)双任务学习过程的一部分。我们目前将SignNet实现为单通道架构,以便T2S任务的输出可以在连续双学习框架中馈送到S2T。通过单通道,我们指的是一个单一的形态,身体姿势关节。在这项工作中,我们提出了SignNet,这是一个使用新颖度量嵌入学习过程的T2S任务,以保持符号嵌入之间相对于其不相似性的距离。我们还描述了如何选择符号的正反例进行相似性测试。从我们的分析中,我们观察到,当使用BLEU分数进行评估时,基于度量嵌入学习的模型的表现明显优于其他具有传统损失的模型。在光泽到姿势的任务中,SignNet表现得与最先进的(SoTA)同行一样好,并且在文本到姿势的任务中表现得更好,BLEU 1 - BLEU 4得分显著提高(BLEU 1:31→39;≈26%改进,BLEU 4: 10.43→11.84;≈14%的改进),在流行的RWTH PHOENIX-Weather-2014T基准数据集上进行测试
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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