Litcius/Paper detail

RETRACTED: SHREC 2021: 3D point cloud change detection for street scenes

Tao Ku, Sam Galanakis, Bas Boom, Remco C. Veltkamp, Darshan Bangera, Shankar Gangisetty, Nikolaos Stagakis, Gerasimos Arvanitis, Κωνσταντίνος Μουστάκας

2021Computers & Graphics33 citationsDOIOpen Access PDF

Abstract

The rapid development of 3D acquisition devices enables us to collect billions of points in a few hours. However, the analysis of the output data is a challenging task, especially in the field of 3D point cloud change detection. In this Shape Retrieval Challenge (SHREC) track, we provide a street-scene dataset for 3D point cloud change detection. The dataset consists of 866 3D object pairs in year 2016 and 2020 from 78 large-scale street scene 3D point clouds. Our goal is to detect the changes from multi-temporal point clouds in a complex street environment. We compare three methods on this benchmark, with one handcrafted (PoChaDeHH) and the other two learning-based (HGI-CD and SiamGCN). The results show that the handcrafted algorithm has balanced performance over all classes, while learning-based methods achieve overwhelming performance but suffer from the class-imbalanced problem and may fail on minority classes. The randomized oversampling metric applied in SiamGCN can alleviate this problem. Also, different siamese network architecture in HGI-CD and SiamGCN contribute to the designing of a network for the 3D change detection task.

Topics & Concepts

Point cloudComputer scienceChange detectionBenchmark (surveying)Task (project management)Artificial intelligenceMetric (unit)Point (geometry)Object detectionComputer visionClass (philosophy)Object (grammar)Deep learningPattern recognition (psychology)GeographyCartographyGeometryEconomicsOperations managementManagementMathematicsRemote Sensing and LiDAR Applications3D Surveying and Cultural HeritageRemote Sensing in Agriculture