This paper deals with human detection in the LiDAR data using the YOLO object detection neural network architecture. RGB-based object detection is the most studied topic in the field of neural networks and autonomous agents. However, these models are very sensitive to even minor changes in the weather or light conditions if the training data do not cover these situations. This paper proposes to use the LiDAR data as a redundant, and more condition invariant source of object detections around the autonomous agent. We used the publically available real-traffic dataset that simultaneously captures data from RGB camera and 3D LiDAR sensors during the clear-sky day and rainy night time and we aggregate the LiDAR data for a short period to increa...
Increasingly, the task of detecting and recognizing the actions of a human has been delegated to som...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
We present a method for 3D person detection from camera images and lidar point clouds in automotive ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
© 2018 Australasian Robotics and Automation Association. All rights reserved. In this paper we intro...
International audienceExisting neural network-based object detection approaches process LiDAR point ...
© 2020 IEEE. This paper addresses the problem of detecting humans in a point cloud taken with a 3D-L...
International audienceAccurate 3D object detection is a key part of the perception module for autono...
The goal of this Master's Thesis is to successfully detect and classify humans in a LiDAR data strea...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
Today it is easily possible to generate dense point clouds of the sensor environment using 360° LiDA...
Object detection is one of the most important research topics in autonomous vehicles. The detection ...
For safe and reliable driving, it is essential that an autonomous vehicle can accurately perceive th...
In this paper we present a new approach for object classification in continuously streamed Lidar poi...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
Increasingly, the task of detecting and recognizing the actions of a human has been delegated to som...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
We present a method for 3D person detection from camera images and lidar point clouds in automotive ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
© 2018 Australasian Robotics and Automation Association. All rights reserved. In this paper we intro...
International audienceExisting neural network-based object detection approaches process LiDAR point ...
© 2020 IEEE. This paper addresses the problem of detecting humans in a point cloud taken with a 3D-L...
International audienceAccurate 3D object detection is a key part of the perception module for autono...
The goal of this Master's Thesis is to successfully detect and classify humans in a LiDAR data strea...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
Today it is easily possible to generate dense point clouds of the sensor environment using 360° LiDA...
Object detection is one of the most important research topics in autonomous vehicles. The detection ...
For safe and reliable driving, it is essential that an autonomous vehicle can accurately perceive th...
In this paper we present a new approach for object classification in continuously streamed Lidar poi...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
Increasingly, the task of detecting and recognizing the actions of a human has been delegated to som...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
We present a method for 3D person detection from camera images and lidar point clouds in automotive ...