Abstract(#br)This paper presents a real-time 3D object detector based on LiDAR based Simultaneous Localization and Mapping (LiDAR-SLAM). The 3D point clouds acquired by mobile LiDAR systems, within the environment of buildings, are usually highly sparse, irregularly distributed, and often contain occlusion and structural ambiguity. Existing 3D object detection methods based on Convolutional Neural Networks (CNNs) rely heavily on both the stability of the 3D features and a large amount of labelling. A key challenge is efficient detection of 3D objects in point clouds of large-scale building environments without pre-training the 3D CNN model. To project image-based object detection results and LiDAR-SLAM results onto a 3D probability map, we ...
© 2018 Faten Hamed Nahhas et al. This paper reports on a building detection approach based on deep l...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
This paper reports on a building detection approach based on deep learning (DL) using the fusion of ...
International audienceAccurate 3D object detection is a key part of the perception module for autono...
In this paper, we propose a novel deep architecture by combining multiple sensors for 3D object dete...
In response to the problem that the detection precision of the current 3D object detection algorithm...
Camera-LiDAR 3D object detection has been extensively investigated due to its significance for many ...
3D object detection systems based on deep neural network become a core component of self-driving veh...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
It’s critical for an autonomous vehicle to acquire accurate and real-time information of the objects...
The performance of autonomous agents in both commercial and consumer applications increases along wi...
In this paper we present a new approach for object classification in continuously streamed Lidar poi...
In a three-dimensional world, for perception of the objects around us, we not only wish to classify ...
Estimating and understanding the surroundings of the vehicle precisely forms the basic and crucial s...
3D object detectors based only on LiDAR point clouds hold the state-of-the-art on modern street-view...
© 2018 Faten Hamed Nahhas et al. This paper reports on a building detection approach based on deep l...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
This paper reports on a building detection approach based on deep learning (DL) using the fusion of ...
International audienceAccurate 3D object detection is a key part of the perception module for autono...
In this paper, we propose a novel deep architecture by combining multiple sensors for 3D object dete...
In response to the problem that the detection precision of the current 3D object detection algorithm...
Camera-LiDAR 3D object detection has been extensively investigated due to its significance for many ...
3D object detection systems based on deep neural network become a core component of self-driving veh...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
It’s critical for an autonomous vehicle to acquire accurate and real-time information of the objects...
The performance of autonomous agents in both commercial and consumer applications increases along wi...
In this paper we present a new approach for object classification in continuously streamed Lidar poi...
In a three-dimensional world, for perception of the objects around us, we not only wish to classify ...
Estimating and understanding the surroundings of the vehicle precisely forms the basic and crucial s...
3D object detectors based only on LiDAR point clouds hold the state-of-the-art on modern street-view...
© 2018 Faten Hamed Nahhas et al. This paper reports on a building detection approach based on deep l...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
This paper reports on a building detection approach based on deep learning (DL) using the fusion of ...