TY - JOUR AU - Razieh Rastgoo AU - Kourosh Kiani AU - Sergio Escalera PY - 2018// TI - Multi-Modal Deep Hand Sign Language Recognition in Still Images Using Restricted Boltzmann Machine T2 - ENTROPY JO - Entropy SP - 809 VL - 20 IS - 11 KW - hand sign language KW - deep learning KW - restricted Boltzmann machine (RBM) KW - multi-modal KW - profoundly deaf KW - noisy image N2 - In this paper, a deep learning approach, Restricted Boltzmann Machine (RBM), is used to perform automatic hand sign language recognition from visual data. We evaluate how RBM, as a deep generative model, is capable of generating the distribution of the input data for an enhanced recognition of unseen data. Two modalities, RGB and Depth, are considered in the model input in three forms: original image, cropped image, and noisy cropped image. Five crops of the input image are used and the hand of these cropped images are detected using Convolutional Neural Network (CNN). After that, three types of the detected hand images are generated for each modality and input to RBMs. The outputs of the RBMs for two modalities are fused in another RBM in order to recognize the output sign label of the input image. The proposed multi-modal model is trained on all and part of the American alphabet and digits of four publicly available datasets. We also evaluate the robustness of the proposal against noise. Experimental results show that the proposed multi-modal model, using crops and the RBM fusing methodology, achieves state-of-the-art results on Massey University Gesture Dataset 2012, American Sign Language (ASL). and Fingerspelling Dataset from the University of Surrey’s Center for Vision, Speech and Signal Processing, NYU, and ASL Fingerspelling A datasets. UR - http://dx.doi.org/10.3390/e20110809 N1 - HUPBA; no proj ID - Razieh Rastgoo2018 ER -