PointCrack3D: Crack Detection in Unstructured Environments using a 3D-Point-Cloud-Based Deep Neural Network

11/23/2021
by   Faris Azhari, et al.
3

Surface cracks on buildings, natural walls and underground mine tunnels can indicate serious structural integrity issues that threaten the safety of the structure and people in the environment. Timely detection and monitoring of cracks are crucial to managing these risks, especially if the systems can be made highly automated through robots. Vision-based crack detection algorithms using deep neural networks have exhibited promise for structured surfaces such as walls or civil engineering tunnels, but little work has addressed highly unstructured environments such as rock cliffs and bare mining tunnels. To address this challenge, this paper presents PointCrack3D, a new 3D-point-cloud-based crack detection algorithm for unstructured surfaces. The method comprises three key components: an adaptive down-sampling method that maintains sufficient crack point density, a DNN that classifies each point as crack or non-crack, and a post-processing clustering method that groups crack points into crack instances. The method was validated experimentally on a new large natural rock dataset, comprising coloured LIDAR point clouds spanning more than 900 m^2 and 412 individual cracks. Results demonstrate a crack detection rate of 97 than 3 cm, significantly outperforming the state of the art. Furthermore, for cross-validation, PointCrack3D was applied to an entirely new dataset acquired in different locations and not used at all in training and shown to detect 100 of its crack instances. We also characterise the relationship between detection performance, crack width and number of points per crack, providing a foundation upon which to make decisions about both practical deployments and future research directions.

READ FULL TEXT

page 1

page 3

page 5

page 8

research
04/09/2023

DSMNet: Deep High-precision 3D Surface Modeling from Sparse Point Cloud Frames

Existing point cloud modeling datasets primarily express the modeling pr...
research
02/25/2022

ANTLER: Bayesian Nonlinear Tensor Learning and Modeler for Unstructured, Varying-Size Point Cloud Data

Unstructured point clouds with varying sizes are increasingly acquired i...
research
03/05/2021

Point Cloud based Hierarchical Deep Odometry Estimation

Processing point clouds using deep neural networks is still a challengin...
research
09/18/2020

Deep Learning for 3D Point Cloud Understanding: A Survey

The development of practical applications, such as autonomous driving an...
research
04/17/2019

3D Object Recognition with Ensemble Learning --- A Study of Point Cloud-Based Deep Learning Models

In this study, we present an analysis of model-based ensemble learning f...
research
04/16/2019

Predicting GNSS satellite visibility from densepoint clouds

To help future mobile agents plan their movement in harsh environments, ...
research
04/16/2019

Predicting GNSS satellite visibility from dense point clouds

To help future mobile agents plan their movement in harsh environments,a...

Please sign up or login with your details

Forgot password? Click here to reset