Modeling Kinect Sensor Noise for Improved 3D Reconstruction and Tracking 论文
2012引用 331
Robotics and Sensor-Based LocalizationOptical measurement and interference techniquesAdvanced Vision and Imaging
摘要
We contribute an empirically derived noise model for the Kinect sensor. We systematically measure both lateral and axial noise distributions, as a function of both distance and angle of the Kinect to an observed surface. The derived noise model can be used to filter Kinect depth maps for a variety of applications. Our second contribution applies our derived noise model to the KinectFusion system to extend filtering, volumetric fusion, and pose estimation within the pipeline. Qualitative results show our method allows reconstruction of finer details and the ability to reconstruct smaller objects and thinner surfaces. Quantitative results also show our method improves pose estimation accuracy.