SignRing

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Pub Date : 2023-09-27 DOI:10.1145/3610881
Jiyang Li, Lin Huang, Siddharth Shah, Sean J. Jones, Yincheng Jin, Dingran Wang, Adam Russell, Seokmin Choi, Yang Gao, Junsong Yuan, Zhanpeng Jin
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引用次数: 0

摘要

手语是聋人、重听人广泛使用的一种自然语言。先进的可穿戴设备可以自动识别手语。然而,由于缺乏标记数据的限制,即使在数据收集方面付出了艰苦的努力,词汇量也很少,性能也不理想。SignRing是一个基于IMU的系统,它突破了传统的数据增强方法,利用在线视频生成虚拟IMU (v-IMU)数据,突破了基于可穿戴系统的边界,词汇量达到934,句子最多16种。v-IMU数据是通过从两视图视频中重建3D手部运动并计算3轴加速度数据生成的,通过这种方法,我们能够在一半v-IMU和一半IMU训练数据(各2339个样本)混合的情况下实现6.3%的单词错误率(WER), 100% v-IMU训练数据(6048个样本)的错误率为14.7%,相比之下,8.3%的WER(用2339个IMU数据样本训练)的基线性能。我们对v-IMU和IMU数据进行了比较,以证明v-IMU数据的可靠性和通用性。这项跨学科的工作涵盖了可穿戴传感器开发、计算机视觉技术、深度学习和语言学等各个领域,可以为具有类似研究目标的研究人员提供有价值的见解。
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SignRing
Sign language is a natural language widely used by Deaf and hard of hearing (DHH) individuals. Advanced wearables are developed to recognize sign language automatically. However, they are limited by the lack of labeled data, which leads to a small vocabulary and unsatisfactory performance even though laborious efforts are put into data collection. Here we propose SignRing, an IMU-based system that breaks through the traditional data augmentation method, makes use of online videos to generate the virtual IMU (v-IMU) data, and pushes the boundary of wearable-based systems by reaching the vocabulary size of 934 with sentences up to 16 glosses. The v-IMU data is generated by reconstructing 3D hand movements from two-view videos and calculating 3-axis acceleration data, by which we are able to achieve a word error rate (WER) of 6.3% with a mix of half v-IMU and half IMU training data (2339 samples for each), and a WER of 14.7% with 100% v-IMU training data (6048 samples), compared with the baseline performance of the 8.3% WER (trained with 2339 samples of IMU data). We have conducted comparisons between v-IMU and IMU data to demonstrate the reliability and generalizability of the v-IMU data. This interdisciplinary work covers various areas such as wearable sensor development, computer vision techniques, deep learning, and linguistics, which can provide valuable insights to researchers with similar research objectives.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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