Title of article :
SignsWorld Atlas; a benchmark Arabic Sign Language database
Author/Authors :
Shohieb, Samaa M. Faculty of Computers and Information Systems - Information Systems Department, Egypt , Elminir, Hamdy K. Kafr El-Sheikh University - Faculty of Engineering - Department of Electrical Engineering, Egypt , Riad, A.M. Mansoura University - Faculty of Computers and Information Systems, Egypt
Abstract :
Research has increased notably in vision-based automatic sign language recognition (ASLR). However, there has been little attention given to building a uniform platform for these purposes. Sign language (SL) includes not only static hand gestures, finger spelling, hand motions (which are called manual signs ‘‘MS”) but also facial expressions, lip reading, and body language (which are called non-manual signs ‘‘NMS”). Building up a database (DB) that includes both MS and NMS is the main first step for any SL recognition task. In addition to this, the Arabic Sign Language (ArSL) has no standard database. For this purpose, this paper presents a DB developed for the ArSL MS and NM signs which we call SignsWorld Atlas. The postures, gestures, and motions included in this DB are collected in lighting and background laboratory conditions. Individual facial expression recognition and static hand gestures recognition tasks were tested by the authors using the SignsWorld Atlas, achieving a recognition rate of 97% and 95.28%, respectively
Keywords :
Sign language recognition , Manual signs , Non , manual signs , Arabic Sign Language , Database
Journal title :
Journal Of King Saud University - Computer and Information Sciences
Journal title :
Journal Of King Saud University - Computer and Information Sciences