Navigation

You are here: Home / Members / Daniel Wagner / Publications / Real-Time Detection and Tracking for Augmented Reality on Mobile Phones

Real-Time Detection and Tracking for Augmented Reality on Mobile Phones

Authors Wagner Daniel, Reitmayr Gerhard, Mulloni Alessandro, Tom Drummond, Schmalstieg Dieter
Appeared in

IEEE Transactions on Visualization and Computer Graphics

Volume 16
Number 3
Pages

355-368

Date May/June 2010
Abstract

In this paper, we present three techniques for 6DOF natural feature tracking in real time on mobile phones. We achieve interactive frame rates of up to 30 Hz for natural feature tracking from textured planar targets on current generation phones. We use an approach based on heavily modified state-of-the-art feature descriptors, namely SIFT and Ferns plus a template-matching-based tracker. While SIFT is known to be a strong, but computationally expensive feature descriptor, Ferns classification is fast, but requires large amounts of memory. This renders both original designs unsuitable for mobile phones. We give detailed descriptions on how we modified both approaches to make them suitable for mobile phones. The template-based tracker further increases the performance and robustness of the SIFT- and Ferns-based approaches. We present evaluations on robustness and performance and discuss their appropriateness for Augmented Reality applications.

Link

PDF

[Powered by Plone]