| Literature DB >> 35062428 |
Dandan Peng1, Guoli Zhu1, Dailin Zhang1, Zhe Xie1, Rui Liu1, Jinlong Hu1, Yang Liu1.
Abstract
The visual measurement system plays a vital role in the disc cutter changing robot of the shield machine, and its accuracy directly determines the success rate of the disc cutter grasping. However, the actual industrial environment with strong noise brings a great challenge to the pose measurement methods. The existing methods are difficult to meet the required accuracy of pose measurement based on machine vision under the disc cutter changing conditions. To solve this problem, we propose a monocular visual pose measurement method consisting of the high precision optimal solution to the PnP problem (OPnP) method and the highly robust distance matching (DM) method. First, the OPnP method is used to calculate the rough pose of the shield machine's cutter holder, and then the DM method is used to measure its pose accurately. Simulation results show that the proposed monocular measurement method has better accuracy and robustness than the several mainstream PnP methods. The experimental results also show that the maximum error of the proposed method is 0.28° in the direction of rotation and 0.32 mm in the direction of translation, which can meet the measurement accuracy requirement of the vision system of the disc cutter changing robot in practical engineering application.Entities:
Keywords: OPnP; disc cutter holder; distance transformation; monocular vision; pose estimation
Year: 2022 PMID: 35062428 PMCID: PMC8779016 DOI: 10.3390/s22020467
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Flow diagram of the pose estimation method.
Figure 2The physical photo of the cutter holder. The blue curve on the surface of the cutter holder on the right is its inside contour.
Figure 3Flowchart of distance matching method.
Figure 4DT image. The distances are gray-level coded: the larger the distance the lighter the tone. The red cross are the feature points of the cutter holder.
Figure 5The structural block diagram of the step acceleration process.
Figure 6Accuracies of all methods when noise level changes. (a) The rotation error in the X-axis direction; (b) The movement error in the X-axis direction; (c) The rotation error in the Y-axis direction; (d) The movement error in the Y-axis direction; (e) The rotation error in the Z-axis direction; (f) The movement error in the Z-axis direction.
Figure 7Visual system and four-axis motion platform.
Figure 8Image processing flow diagram.
Figure 9Partial images of the contaminated parts of the cutter holder. The red boxes show the various contamination conditions of the cutter holder.
Figure 10Standard deviation of pose error.