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A Versatile Method for Depth Data Error Estimation in RGB-D Sensors

Elizabeth V. Cabrera-Avila, Luis E. Ortiz-Fernandez, Bruno Marques Ferreira da Silva, Esteban Clua, Luiz Marcos Garcia Gonçalves

Year
2018
Citations
23
Access
Open access

Abstract

) data of the scene, i.e., the ones based on techniques such as structured light, time of flight and stereo. A common checkerboard is used, the corners are detected and two point clouds are created, one with the real coordinates of the pattern corners and one with the corner coordinates given by the device. After a registration of these two clouds, the RMS error is computed. Then, using curve fittings methods, an equation is obtained that generalizes the RMS error as a function of the distance between the sensor and the checkerboard pattern. The depth errors estimated by our method are compared to those estimated by state-of-the-art approaches, validating its accuracy and utility. This method can be used to rapidly estimate the quality of RGB-D sensors, facilitating robotics applications as SLAM and object recognition.

Keywords

RGB color modelArtificial intelligencePoint cloudComputer visionComputer scienceStructured lightRoboticsDepth mapPoint (geometry)Simultaneous localization and mapping

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