连续和实时手指字符识别的时间序列灵活重采样

Takuma Nitta, Shinpei Hagimoto, Kyosuke Miyamura, Ryotaro Okada, T. Nakanishi
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引用次数: 1

摘要

手语是聋人或听障人士交流的重要方法之一。在对话中,手指文字经常被用来作为手语的补充,特别是在一些难以用手语表达的单词时。然而,很少有人懂手语。手语或手指文字自动翻译系统的实现将为聋人或听障人士的交流提供便利。为了开发一种可以在日常生活中使用的手指文字识别系统,实现顺畅的对话,需要进行连续的实时识别。提出了一种新的实时数据处理框架——时间序列柔性重采样。该框架包括三个步骤:检测、分割和提取。该框架能够对稳定状态和变化状态反复出现的非循环时间序列数据进行连续和实时识别。此外,采用时间序列柔性重采样的方法实现了手指字符的连续实时识别。实验验证了将时间序列柔性重采样应用于手指字符识别系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Series Flexible Resampling for Continuous and Real-Time Finger Character Recognition
Sign language is one of the crucial methods of communication for deaf or hearing-impaired people. Finger characters are often used to supplement sign language in conversations, especially when it is difficult to express some words by sign language. However, few people understand sign language. The realization of an automatic translation system for sign language or finger characters will facilitate communication with deaf or hearing-impaired people. To develop a finger character recognition system that is practical in the daily lives for smooth conversations, continuous and real-time recognition is required. This paper presents a novel real-time data processing framework, the time-series flexible resampling. This framework consists of three steps: detection, segmentation, and extraction. This framework enables continuous and real-time recognition for acyclic time-series data, in which stable states and changing states occur repeatedly. In addition, continuous and real-time finger character recognition is realized by applying time-series flexible resampling. The effectiveness of applying time-series flexible resampling to the finger character recognition system was verified in subject experiments.
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