Publication Type : Journal Article
Publisher : International Journal of Computational Science and Engineering
Source : International Journal of Computational Science and Engineering, vol. 22, 2020
Url : https://www.inderscience.com/info/inarticle.php?artid=107268
Keywords : convolutional neural networks; CNNs; sign language; fingerspelling; ensemble; vgg-16; classification; scale space; spatial resolution.
Campus : Amritapuri
School : Department of Computer Science and Engineering, School of Engineering
Center : AI and Disability Studies, Computer Vision and Robotics
Department : Computer Science
Year : 2020
Abstract : A sign language recognition system facilitates communication between the deaf community and the hearing majority. This paper proposes a novel specialised convolutional neural network (CNN) model, SignNet, to recognise hand gesture signs by incorporating scale space theory to deep learning framework. The proposed model is a weighted average ensemble of CNNs – a low resolution network (LRN), an intermediate resolution network (IRN) and a high resolution network (HRN). Augmented versions of VGG-16 are used as LRN, IRN and HRN. The ensemble works at different spatial resolutions and at varying depths of CNN. The SignNet model was assessed with static signs of American Sign Language – alphabets and digits. Since there exists no sign dataset for deep learning, the ensemble performance is evaluated on the synthetic dataset which we have collected for this task. Assessment of the synthetic dataset by SignNet reported an impressive accuracy of over 92%, notably superior to the other existing models.
Cite this Research Publication : N. Aloysius and M. Geetha, “A scale space model of weighted average CNN ensemble for ASL fingerspelling recognition”, International Journal of Computational Science and Engineering, vol. 22, 2020