Abstract: Sign language recognition is an important area of research with uses in a range of industries, including education, communication, and human-computer interaction. Trajectory-based human hand tracking is a popular technique for sign language recognition because it allows capturing dynamic hand movement during signing. This paper presents an overview of different trajectory-based human hand tracking methods, including template matching, feature-based tracking, and model-based tracking. This framework aims to accurately identify various one-handed dynamic isolated characters and interpret their intended meaning. Emphasis is placed on designing a system that can effectively recognize and interpret a wide variety of sign gestures, enabling effective communication and understanding between sign language users and individuals who do not know sign language.
Keywords: pre-processing, feature extraction, recognition.
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DOI:
10.17148/IJARCCE.2023.12624
[1] Jagdale Mrudula Dattatraya, Kasture Rushikesh Sunil, Jadhav Rushabh Pratap, Prof.M.M.Jadhav, "MOTION TRAJECTORY BASED HUMAN HAND TRACKING FOR SIGN LANGUAGE RECOGNITION," International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), DOI: 10.17148/IJARCCE.2023.12624