Abstract

A key problem in mobile computing is providing people access to cyber-information associated with their surrounding physical objects. Mobile augmented reality is one of the emerging techniques that addresses this problem by allowing users to see the cyber-information associated with real-world physical objects by overlaying that cyber-information on the physical objects’ imagery. This paper presents a new vision-based context-aware approach for mobile augmented reality that allows users to query and access semantically-rich 3D cyber-information related to real-world physical objects and see it precisely overlaid on top of imagery of the associated physical objects. The approach does not require any RF-based location tracking modules, external hardware attachments on the mobile devices, and/or optical/fiducial markers for localizing a user’s position. Rather, the user’s 3D location and orientation are automatically and purely derived by comparing images from the user’s mobile device to a 3D point cloud model generated from a set of pre-collected photographs. Our approach supports content authoring where collaboration on editing the content stored in the 3D cloud is possible and content added by one user can be immediately accessible by others. In addition, a key challenge of scalability for mobile augmented reality is addressed in this paper. In general, mobile augmented reality is required to work regardless of users’ location and environment, in terms of physical scale, such as size of objects, and in terms of cyber-information scale, such as total number of cyber-information entities associated with physical objects. However, many existing approaches for mobile augmented reality have mainly tested their approaches on limited real-world use-cases and have challenges in scaling their approaches. By designing a multi-model based direct 2D-to-3D matching algorithms for localization, as well as applying a caching scheme, the proposed research consistently supports near real-time localization and information association regardless of users’ location, size of physical objects, and number of cyber-physical information items. Empirical results presented in the paper show that the approach can provide millimeter-level augmented reality across several hundred or thousand objects without the need for additional non-imagery sensor inputs.

Highlights

  • Augmented Reality (AR) is an emerging technique that allows users to see real-world physical objects and their associated cyber-information overlaid on top of imagery of them

  • Several key characteristics directly determine the reliability and utility of mobile augmented reality approaches: 1) user localization, which determines the users’ viewpoint and derives what real-world physical objects are in the current scene, in order to interpret the user’s surrounding contexts and deliver relevant cyber-information, 2) the speed of determining which cyber-information is associated with physical objects in order to deliver/visualize the cyber-information in the correct position, 3) the robustness of the system and ability to work with dynamically changing environments, and 4) the scalability of the cyber-physical information association system, both in terms of physical scale, such as size of objects, and in terms of cyber-information scale, such as total number of cyber-information entities associated with physical objects

  • This paper extends our prior work on Hybrid 4Dimensional Augmented Reality (HD4AR) in the following ways: 1) the localization speed is further increased by designing and developing a caching approach for direct 2D-to-3D matching and 2) a new multi-model augmentation approach that scales to hundreds or thousands of 3D point clouds in the system is implemented and tested

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Summary

Introduction

Augmented Reality (AR) is an emerging technique that allows users to see real-world physical objects and their associated cyber-information overlaid on top of imagery of them. Mobile augmented reality must work regardless of users’ location and environment, and deliver relevant cyber-information precisely and quickly. Several key characteristics directly determine the reliability and utility of mobile augmented reality approaches: 1) user localization, which determines the users’ viewpoint and derives what real-world physical objects are in the current scene, in order to interpret the user’s surrounding contexts and deliver relevant cyber-information, 2) the speed of determining which cyber-information is associated with physical objects in order to deliver/visualize the cyber-information in the correct position, 3) the robustness of the system and ability to work with dynamically changing environments, and 4) the scalability of the cyber-physical information association system, both in terms of physical scale, such as size of objects, and in terms of cyber-information scale, such as total number of cyber-information entities associated with physical objects.

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