Abstract

Industrial augmented reality (AR) applications demand high on the visual consistency of virtual-real registration. To present, the marker-based registration method is most popular because it is fast, robust, and convenient to obtain the registration matrix. In practice, the registration matrix should multiply an offset matrix that describes the transformation between the attaching position and the initial position of the marker relative to the object. However, the offset matrix is usually measured, calculated, and set manually, which is not accurate and convenient. This paper proposes an accurate and automatic marker–object offset matrix calibration method. First, the normal direction of the target object is obtained by searching and matching the top surface of the CAD model. Then, the spatial translation is estimated by aligning the projected and the imaged top surface. Finally, all six parameters of the offset matrix are iteratively optimized using a 3D image alignment framework. Experiments were performed on the publicity monocular rigid 3D tracking dataset and an automobile gearbox. The average translation and rotation errors of the optimized offset matrix are 2.10 mm and 1.56 degree respectively. The results validate that the proposed method is accurate and automatic, which contributes to a universal offset matrix calibration tool for marker-based industrial AR applications.

Highlights

  • Augmented reality (AR) superimposes rich visual information on the real-world scene, which is intuitively suitable for guiding or training manual operations in the manufacturing industry

  • For all visible markers in the images of the experimental videos, the registration matrix was calculated by Equation (1), where TM was given by the tracking pose results of one ARUCO marker, and TO was given by T

  • The results of the initial offset matrix estimation using dominant orientation templates (DOT) matching are shown in the first column, and the results of the global parameter optimization of the offset matrix are shown in the second column

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Summary

Introduction

Augmented reality (AR) superimposes rich visual information on the real-world scene, which is intuitively suitable for guiding or training manual operations in the manufacturing industry. AR has not fully broken the industrial market yet, because it lacks pervasiveness from the standpoint of industrial users [1], and this paper addresses one related issue that is commonly confronted at the beginning of setting an industrial AR application.

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