A Deep Neural Framework for Continuous Sign Language Recognition via Iterative Training

Authors

  • YITONG CAI Author

DOI:

https://doi.org/10.61173/2hpmfy05

Keywords:

Gesture Recognition, Similarity Fusion, Relevant Feature Recognition, Cross-language gesture, Continuous Sign Language Recognition

Abstract

Sign language is a visual language that uses a variety of hand gesture combinations to express distinct ideas. It acts as a bridge to communicate with the outside world and is a vital communication tool for the deaf and mute community. Recent years have seen a fast increase in computer technology, opening up new avenues for research on sign language recognition through developments in computer graphics, computer vision, neural networks, and associated hardware. However, many sign language movements are still hard to tell apart because of the intrinsic constraints of visual component combinations. Natural language can be incorporated to help with the recognition process in order to overcome this difficulty. This review study highlights the benefits and drawbacks of modern approaches to sign language recognition in terms of recording, identifying, translating, and depicting motions. The primary difficulties in the field of sign language technology are also covered, along with the introduction of a number of useful applications. In order to encourage and support additional achievements in this field, future research directions and possible developments are finally suggested.

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Published

2025-12-19

Issue

Section

Articles