Affiliation:
1. Centre for Applied Autonomous Sensor Systems, Institutionen för naturvetenskap & teknik Örebro University Örebro Sweden
2. Perception for Intelligent Systems Technical University of Munich Munich Germany
3. Department of Radiation Science, Radiation Physics Umeå University Umeå Sweden
Abstract
AbstractRegistration of point cloud data containing both depth and color information is critical for a variety of applications, including in‐field robotic plant manipulation, crop growth modeling, and autonomous navigation. However, current state‐of‐the‐art registration methods often fail in challenging agricultural field conditions due to factors such as occlusions, plant density, and variable illumination. To address these issues, we propose the NDT‐6D registration method, which is a color‐based variation of the Normal Distribution Transform (NDT) registration approach for point clouds. Our method computes correspondences between pointclouds using both geometric and color information and minimizes the distance between these correspondences using only the three‐dimensional (3D) geometric dimensions. We evaluate the method using the GRAPES3D data set collected with a commercial‐grade RGB‐D sensor mounted on a mobile platform in a vineyard. Results show that registration methods that only rely on depth information fail to provide quality registration for the tested data set. The proposed color‐based variation outperforms state‐of‐the‐art methods with a root mean square error (RMSE) of 1.1–1.6 cm for NDT‐6D compared with 1.1–2.3 cm for other color‐information‐based methods and 1.2–13.7 cm for noncolor‐information‐based methods. The proposed method is shown to be robust against noises using the TUM RGBD data set by artificially adding noise present in an outdoor scenario. The relative pose error (RPE) increased 14% for our method compared to an increase of 75% for the best‐performing registration method. The obtained average accuracy suggests that the NDT‐6D registration methods can be used for in‐field precision agriculture applications, for example, crop detection, size‐based maturity estimation, and growth modeling.
Funder
Horizon 2020 Framework Programme
Subject
Computer Science Applications,Control and Systems Engineering