Estimation of hand skeletal postures by using deep convolutional networks

AuthorsHassan Farsi,Sajad Mohamadzadeh
JournalInternational Journal of Engineering
Page number552-559
Serial number33
Volume number4
Paper TypeFull Paper
Published At2020
Journal GradeScientific - research
Journal TypeTypographic
Journal CountryIran, Islamic Republic Of
Journal Indexisc،Scopus

Abstract

Hand posture estimation attracts researchers because of its many applications. Hand posture recognition systems simulate the hand postures by using mathematical algorithms. Convolutional neural networks have provided the best results in the hand posture recognition so far. In this paper, we propose a new method to estimate the hand skeletal posture by using deep convolutional neural networks. To simplify the proposed method and to be more functional, the depth factor is ignored. So only the simple color images of hands are used as inputs of the system. The proposed method is evaluated by using two datasets with high-diversity named Mixamo and RWTH, which include 43,986 and 1160 color images, respectively, where 74% of these images are selected as a training set and, 26% of the rest images are selected as the evaluation set. The experiments show that the proposed method provides better results in both hand posture recognition and detection of sign languages compared to state-of-the-art methods.

Paper URL

tags: Hand Posture Recognition Deep Convolutional Neural Network Deep Learning Skeletal Estimation