Litcius/Paper detail

Identifying and Characterizing Conveyor Belt Longitudinal Rip by 3D Point Cloud Processing

Shichang Xu, Gang Cheng, Yusong Pang, Zujin Jin, Bin Kang

2021Sensors17 citationsDOIOpen Access PDF

Abstract

Real-time and accurate longitudinal rip detection of a conveyor belt is crucial for the safety and efficiency of an industrial haulage system. However, the existing longitudinal detection methods possess drawbacks, often resulting in false alarms caused by tiny scratches on the belt surface. A method of identifying the longitudinal rip through three-dimensional (3D) point cloud processing is proposed to solve this issue. Specifically, the spatial point data of the belt surface are acquired by a binocular line laser stereo vision camera. Within these data, the suspected points induced by the rips and scratches were extracted. Subsequently, a clustering and discrimination mechanism was employed to distinguish the rips and scratches, and only the rip information was used as alarm criterion. Finally, the direction and maximum width of the rip can be effectively characterized in 3D space using the principal component analysis (PCA) method. This method was tested in practical experiments, and the experimental results indicate that this method can identify the longitudinal rip accurately in real time and simultaneously characterize it. Thus, applying this method can provide a more effective and appropriate solution to the identification scenes of longitudinal rip and other similar defects.

Topics & Concepts

Point cloudConveyor beltArtificial intelligenceComputer visionComputer scienceALARMPoint (geometry)Pattern recognition (psychology)EngineeringMathematicsGeometryAerospace engineeringMechanical engineeringBelt Conveyor Systems EngineeringPower Line Inspection RobotsMineral Processing and Grinding