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Robust and Efficient Feature Tracking for Indoor Navigation

Ranga Rodrigo, Mehrnaz Zouqi, Zhenhe Chen, Jagath Samarabandu

Year
2009
Citations
19

Abstract

Robust feature tracking is a requirement for many computer vision tasks such as indoor robot navigation. However, indoor scenes are characterized by poorly localizable features. As a result, indoor feature tracking without artificial markers is challenging and remains an attractive problem. We propose to solve this problem by constraining the locations of a large number of nondistinctive features by several planar homographies which are strategically computed using distinctive features. We experimentally show the need for multiple homographies and propose an illumination-invariant local-optimization scheme for motion refinement. The use of a large number of nondistinctive features within the constraints imposed by planar homographies allows us to gain robustness. Also, the lesser computation cost in estimating these nondistinctive features helps to maintain the efficiency of the proposed method. Our local-optimization scheme produces subpixel accurate feature motion. As a result, we are able to achieve robust and accurate feature tracking.

Keywords

Subpixel renderingArtificial intelligenceRobustness (evolution)Computer visionFeature trackingComputer scienceFeature (linguistics)ComputationPlanarInvariant (physics)

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