Implicit neural representation for change detection

07/28/2023
by   Peter Naylor, et al.
0

Detecting changes that occurred in a pair of 3D airborne LiDAR point clouds, acquired at two different times over the same geographical area, is a challenging task because of unmatching spatial supports and acquisition system noise. Most recent attempts to detect changes on point clouds are based on supervised methods, which require large labelled data unavailable in real-world applications. To address these issues, we propose an unsupervised approach that comprises two components: Neural Field (NF) for continuous shape reconstruction and a Gaussian Mixture Model for categorising changes. NF offer a grid-agnostic representation to encode bi-temporal point clouds with unmatched spatial support that can be regularised to increase high-frequency details and reduce noise. The reconstructions at each timestamp are compared at arbitrary spatial scales, leading to a significant increase in detection capabilities. We apply our method to a benchmark dataset of simulated LiDAR point clouds for urban sprawling. The dataset offers different challenging scenarios with different resolutions, input modalities and noise levels, allowing a multi-scenario comparison of our method with the current state-of-the-art. We boast the previous methods on this dataset by a 10 metric. In addition, we apply our methods to a real-world scenario to identify illegal excavation (looting) of archaeological sites and confirm that they match findings from field experts.

READ FULL TEXT

page 5

page 6

page 8

page 12

page 13

research
02/14/2023

Optimal Transport for Change Detection on LiDAR Point Clouds

The detection of changes occurring in multi-temporal remote sensing data...
research
09/30/2022

Transformers for Object Detection in Large Point Clouds

We present TransLPC, a novel detection model for large point clouds that...
research
06/09/2020

Tree Annotations in LiDAR Data Using Point Densities and Convolutional Neural Networks

LiDAR provides highly accurate 3D point clouds. However, data needs to b...
research
04/19/2021

Lidar Point Cloud Guided Monocular 3D Object Detection

Monocular 3D object detection is drawing increasing attention from the c...
research
09/24/2021

Quantifying point cloud realism through adversarially learned latent representations

Judging the quality of samples synthesized by generative models can be t...
research
12/24/2021

Reconstructing Compact Building Models from Point Clouds Using Deep Implicit Fields

Three-dimensional (3D) building models play an increasingly pivotal role...
research
04/20/2022

Multimodal Gaussian Mixture Model for Realtime Roadside LiDAR Object Detection

Background modeling is widely used for intelligent surveillance systems ...

Please sign up or login with your details

Forgot password? Click here to reset