Critical steps in camera pose estimation: an evaluation using LTI-LIB2 library

Main Article Content

Laura Cabrera-Quirós
Rafael Campos-Gómez
Jorge Castro-Godínez

Abstract

An evaluation of camera pose estimation methods using a chessboard pattern is presented. Steps evaluated in the estimation process are landmark point detection and camera parameter estimation, due to their critical role in the entire process. The ChESS method and a custom heuristic method are compared for chessboard pattern detection.  Both methods are objectively contrasted using True Positive and False Negative criteria. Meanwhile, Zhang’s method for pose estimation based on planar surface point distribution is used as a first approach, and then refined with a nonlinear regression through the Levenberg-Marquardt algorithm. This pose estimation algorithm is evaluated through a comparison with a stable tool, such as the Camera Calibration Toolbox for Matlab®.

Article Details

How to Cite
Cabrera-Quirós, L., Campos-Gómez, R., & Castro-Godínez, J. (2014). Critical steps in camera pose estimation: an evaluation using LTI-LIB2 library. Tecnología En Marcha Journal, pág. 60–69. https://doi.org/10.18845/tm.v0i0.1656
Section
Artículo científico