Change detection and irregular object extraction in 3D point clouds is a challenging task that is of high importance not only for autonomous navigation but also for updating existing digital twin models of various industrial environments. This article proposes an innovative approach for change detection in 3D point clouds using deep learned place recognition descriptors and irregular object extraction based on voxel-to-point comparison. The proposed method first aligns the bi-temporal point clouds using a map-merging algorithm in order to establish a common coordinate frame. Then, it utilizes deep learning techniques to extract robust and discriminative features from the 3D point cloud scans, which are used to detect changes between consecu...
With the vigorous development of the urban construction industry, engineering deformation or changes...
International audienceAccording to the United Nations, 70% of earth population is going to live in c...
International audienceChange detection is an important task to rapidly identify modified areas, in p...
peer reviewedChange detection is an important step for the characterization of object dynamics at th...
Change detection is an important step for the characterization of object dynamics at the earth’s sur...
3D change detection draws more and more attention in recent years due to the increasing availability...
By combining terrestrial panorama images and aerial imagery, or using LiDAR, large 3D point clouds c...
Detecting changes that occurred in a pair of 3D airborne LiDAR point clouds, acquired at two differe...
As the majority of the earth population is living in urban environments, cities are continuously evo...
Localization and navigation are the two most important tasks for mobile robots, which require an up-...
National Mapping Agencies (NMAs) acquire nation-wide point cloud data from Airborne Laser Scanning (...
International audienceChange detection from traditional optical images has limited capability to mod...
In the context of rapid urbanization, monitoring the evolution of cities is crucial. To do so, 3D ch...
With the vigorous development of the urban construction industry, engineering deformation or changes...
International audienceAccording to the United Nations, 70% of earth population is going to live in c...
International audienceChange detection is an important task to rapidly identify modified areas, in p...
peer reviewedChange detection is an important step for the characterization of object dynamics at th...
Change detection is an important step for the characterization of object dynamics at the earth’s sur...
3D change detection draws more and more attention in recent years due to the increasing availability...
By combining terrestrial panorama images and aerial imagery, or using LiDAR, large 3D point clouds c...
Detecting changes that occurred in a pair of 3D airborne LiDAR point clouds, acquired at two differe...
As the majority of the earth population is living in urban environments, cities are continuously evo...
Localization and navigation are the two most important tasks for mobile robots, which require an up-...
National Mapping Agencies (NMAs) acquire nation-wide point cloud data from Airborne Laser Scanning (...
International audienceChange detection from traditional optical images has limited capability to mod...
In the context of rapid urbanization, monitoring the evolution of cities is crucial. To do so, 3D ch...
With the vigorous development of the urban construction industry, engineering deformation or changes...
International audienceAccording to the United Nations, 70% of earth population is going to live in c...
International audienceChange detection is an important task to rapidly identify modified areas, in p...