Home /Research /A data-set and a method for pointing direction estimation from depth images for human-robot interaction and VR applications
HRI

A data-set and a method for pointing direction estimation from depth images for human-robot interaction and VR applications

Shome S. Das

Year
2021
Citations
7

Abstract

3D pointing devices are indispensable in virtual reality (hereafter VR) and human-robot interaction scenarios. Existing devices are cumbersome or non-immersive or have a limited volume of operation. Hand gesture-based interfaces do not suffer from these problems and can be used for 3D pointing purposes. However, there is a lack of robust, accurate hand gesture-based pointing techniques which can be attributed to the non-existence of large and accurate data-set for the same. To overcome this barrier, we propose a data-set consisting of depth images with a large number (107000) of samples collected from 11 subjects, with accurate ground-truth and adequate variation in the orientation and distance of the hand w.r.t. the camera. We propose a 3D convolutional neural network based technique that works on the proposed data-set and achieves an accuracy of 94.49% for an angle error threshold of 10 degrees. The proposed data-set may be used for developing more accurate, robust, less computationally expensive methods.

Keywords

Computer scienceVirtual realityOrientation (vector space)Set (abstract data type)Artificial intelligenceComputer visionGestureConvolutional neural networkGround truthRobot

Related papers

Browse all HRI papers