Identifying Australian Road Assessment Programme (AusRAP) attributes, such as speed signs, trees and electric poles, is the focus of road safety management. The major challenges are accurately segmenting and classifying AusRAP attributes. Researchers have focused on sematic segmentation and object classification to address the challenges mostly in 2D image setting, and few of them have recently extended techniques from 2D to 3D setting. However, most of them are designed for general objects and small scenes rather than large roadside scenes, and their performance on identifying AusRAP attributes, such as poles and trees, is limited. In this paper, we investigate segmentation and classification in roadside 3D setting, and propose an automati...
Today 3D models and point clouds are very popular being currently used in several fields, shared thr...
ICIP 2013 : 20th IEEE International Conference on Image Processing , Sep 15-18, 2013 , Melbourne, Au...
preprintInternational audienceIn this article we describe a new convolutional neural network...
Identifying Australian Road Assessment Programme (AusRAP) attributes, such as speed signs, trees and...
Jan, M ORCiD: 0000-0002-5066-4118; Verma, B ORCiD: 0000-0002-4618-0479Automatic assessment of road s...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
The United Nations (UN) stated that all new roads and 75% of travel time on roads must be 3+ star st...
Integrating geometric digital twins for roads can increase productivity and help streamline predicti...
Abstract—This paper presents a novel method for automated extraction of road markings directly from ...
In the near future, the communication between autonomous cars will produce a network of sensors that...
Detecting roadside safety attributes and distances in point cloud data is a challenging task. The ma...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
Virtual reconstruction of historic sites, planning of restorations and attachments of new building p...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Today 3D models and point clouds are very popular being currently used in several fields, shared thr...
ICIP 2013 : 20th IEEE International Conference on Image Processing , Sep 15-18, 2013 , Melbourne, Au...
preprintInternational audienceIn this article we describe a new convolutional neural network...
Identifying Australian Road Assessment Programme (AusRAP) attributes, such as speed signs, trees and...
Jan, M ORCiD: 0000-0002-5066-4118; Verma, B ORCiD: 0000-0002-4618-0479Automatic assessment of road s...
Abstract—Unprecedented amounts of 3D data can be ac-quired in urban environments, but their use for ...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
The United Nations (UN) stated that all new roads and 75% of travel time on roads must be 3+ star st...
Integrating geometric digital twins for roads can increase productivity and help streamline predicti...
Abstract—This paper presents a novel method for automated extraction of road markings directly from ...
In the near future, the communication between autonomous cars will produce a network of sensors that...
Detecting roadside safety attributes and distances in point cloud data is a challenging task. The ma...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
Virtual reconstruction of historic sites, planning of restorations and attachments of new building p...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Today 3D models and point clouds are very popular being currently used in several fields, shared thr...
ICIP 2013 : 20th IEEE International Conference on Image Processing , Sep 15-18, 2013 , Melbourne, Au...
preprintInternational audienceIn this article we describe a new convolutional neural network...