Litcius/Paper detail

Using Motion History Images With 3D Convolutional Networks in Isolated Sign Language Recognition

Özge Mercanoğlu Sincan, Hacer Yalım Keleş

2022IEEE Access67 citationsDOIOpen Access PDF

Abstract

Sign language recognition using computational models is a challenging problem that requires simultaneous spatio-temporal modeling of the multiple sources, i.e. faces, hands, body, etc. In this paper, we propose an isolated sign language recognition model based on a model trained using Motion History Images (MHI) that are generated from RGB video frames. RGB-MHI images represent spatio-temporal summary of each sign video effectively in a single RGB image. We propose two different approaches using this RGB-MHI model. In the first approach, we use the RGB-MHI model as a motion-based spatial attention module integrated into a 3D-CNN architecture. In the second approach, we use RGB-MHI model features directly with the features of a 3D-CNN model using a late fusion technique. We perform extensive experiments on two recently released large-scale isolated sign language datasets, namely AUTSL and BosphorusSign22k. Our experiments show that our models, which use only RGB data, can compete with the state-of-the-art models in the literature that use multi-modal data.

Topics & Concepts

Computer scienceRGB color modelArtificial intelligenceSign languageComputer visionConvolutional neural networkMotion (physics)Pattern recognition (psychology)PhilosophyLinguisticsHand Gesture Recognition SystemsGait Recognition and AnalysisHuman Pose and Action Recognition