Title :
Glove-Based Continuous Arabic Sign Language Recognition in User-Dependent Mode
Author :
Tubaiz, Noor ; Shanableh, Tamer ; Assaleh, Khaled
Author_Institution :
Dept. of Comput. Sci. & Eng., American Univ. of Sharjah, Sharjah, United Arab Emirates
Abstract :
In this paper, we propose a glove-based Arabic sign language recognition system using a novel technique for sequential data classification. We compile a sensor-based dataset of 40 sentences using an 80-word lexicon. In the dataset, hand movements are captured using two DG5-VHand data gloves. Data labeling is performed using a camera to synchronize hand movements with their corresponding sign language words. Low-complexity preprocessing and feature extraction techniques are applied to capture and emphasize the temporal dependence of the data. Subsequently, a Modified k-Nearest Neighbor (MKNN) approach is used for classification. The proposed MKNN makes use of the context of feature vectors for the purpose of accurate classification. The proposed solution achieved a sentence recognition rate of 98.9%. The results are compared against an existing vision-based approach that uses the same set of sentences. The proposed solution is superior in terms of classification rates while eliminating restrictions of vision-based systems.
Keywords :
computer vision; data gloves; feature extraction; image classification; learning (artificial intelligence); sign language recognition; 80-word lexicon; DG5-VHand data gloves; MKNN approach; classification rates; data labeling; feature extraction techniques; glove-based continuous Arabic sign language recognition; hand movements; hand movements synchronization; low-complexity preprocessing; modified k-nearest neighbor approach; sensor-based dataset; sentence recognition; sequential data classification; user-dependent mode; vision-based approach; Accuracy; Assistive technology; Feature extraction; Gesture recognition; Man machine systems; Training; Vectors; Feature extraction; pattern recognition; sensor gloves; sign language recognition;
Journal_Title :
Human-Machine Systems, IEEE Transactions on
DOI :
10.1109/THMS.2015.2406692