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초록· 키워드

This paper presents a new algorithm for the self-localization of a mobile robot using perspective invariant(Cross Ratio). Most of conventional model-based self-localization methods have some problems that data structure building, map updating and matching processes are very complex. Use of the simple cross ratio can be effective to the above problems. The algorithm is based on two basic assumptions that the ground plane is flat and two parallel walls are available. Also it is assumed that an environmental map is available for matching between the scene and the model. To extract an accurate steering angle for a mobile robot, we take advantage of geometric features such as vanishing points(V.P). Point features for computing cross ratios are extracted robustly using a vanishing point and the intersection points between floor and the vertical lines of door frames. The robustness and feasibility of our algorithms have been demonstrated through experiments in indoor environments using an indoor mobile robot, KASIRI-II(KAist SIImple Roving Intelligence ).
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  1. Abstract
  2. 1. INTRODUCTION
  3. 2. BASIC THEORY
  4. 3. PRE-PROCESSING
  5. 4. EXPERIMENTS
  6. 5. DISCUSSION
  7. 6. REFERENCE

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UCI(KEPA) : I410-ECN-0101-2014-569-000843291