LGCLCVMLSep 24, 2019

Sign Language Recognition Analysis using Multimodal Data

arXiv:1909.11232v130 citations
Originality Incremental advance
AI Analysis

This work addresses accessibility for Deaf or Hard-of-Hearing users by providing a multimodal approach to sign language recognition, though it is incremental as it builds on existing deep learning methods.

The study developed a sign language recognition system using skeletal and RGB video data to enable Deaf or Hard-of-Hearing users to interact with voice-controlled devices, achieving validation on a dataset of 51 signs with 13,107 samples from 12 users.

Voice-controlled personal and home assistants (such as the Amazon Echo and Apple Siri) are becoming increasingly popular for a variety of applications. However, the benefits of these technologies are not readily accessible to Deaf or Hard-ofHearing (DHH) users. The objective of this study is to develop and evaluate a sign recognition system using multiple modalities that can be used by DHH signers to interact with voice-controlled devices. With the advancement of depth sensors, skeletal data is used for applications like video analysis and activity recognition. Despite having similarity with the well-studied human activity recognition, the use of 3D skeleton data in sign language recognition is rare. This is because unlike activity recognition, sign language is mostly dependent on hand shape pattern. In this work, we investigate the feasibility of using skeletal and RGB video data for sign language recognition using a combination of different deep learning architectures. We validate our results on a large-scale American Sign Language (ASL) dataset of 12 users and 13107 samples across 51 signs. It is named as GMUASL51. We collected the dataset over 6 months and it will be publicly released in the hope of spurring further machine learning research towards providing improved accessibility for digital assistants.

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