Indian Sign Language Recognition Using Eigen Value Weighted Euclidean Distance Based Classification Technique

Authors: Joyeeta Singha, Karen Das

Abstract: Sign Language Recognition is one of the most growing fields of research today. Many new techniques have been developed recently in these fields. Here in this paper, we have proposed a system using Eigen value weighted Euclidean distance as a classification technique for recognition of various Sign Languages of India. The system comprises of four parts: Skin Filtering, Hand Cropping, Feature Extraction and Classification. Twenty four signs were considered in this paper, each having ten samples, thus a total of two hundred forty images was considered for which recognition rate obtained was 97 percent.

Submitted to arXiv on 04 Mar. 2013

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