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TUM School of Computation, Information and Technology
Technical University of Munich

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Informatik IX
Computer Vision Group

Boltzmannstrasse 3
85748 Garching info@vision.in.tum.de

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03.07.2024

We have five papers accepted to ECCV 2024. Check our publication page for more details.

09.06.2024
GCPR / VMV 2024

GCPR / VMV 2024

We are organizing GCPR / VMV 2024 this fall.

04.03.2024

We have twelve papers accepted to CVPR 2024. Check our publication page for more details.

18.07.2023

We have four papers accepted to ICCV 2023. Check out our publication page for more details.

02.03.2023

CVPR 2023

We have six papers accepted to CVPR 2023. Check out our publication page for more details.

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research:robotvision:replanning [2017/02/24 08:44]
usenko created
research:robotvision:replanning [2019/06/04 14:19] (current)
usenko
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-Dynamic trajectory replanning for obstacle avoidance.+ 
 + 
 +<html><iframe width="720" height="360" src="https://www.youtube.com/embed/jh6tMHjxHSY" frameborder="0" allowfullscreen></iframe></html> 
 + 
 + 
 +Contact: [[members:usenko|Vladyslav Usenko]]. 
 + 
 +<html><br><br><h1 class="sectionedit1">Abstract</h1></html> 
 +In this paper, we present a real-time approach to local trajectory replanning for microaerial vehicles (MAVs)Current trajectory generation methods for multicopters achieve high success rates in cluttered environments, but assume that the environment is static and require prior knowledge of the map. In the presented study, we use the results of such planners and extend them with a local replanning algorithm that can handle unmodeled (possibly dynamic) obstacles while keeping the MAV close to the global trajectory. To ensure that the proposed approach is real-time capable, we maintain information about the environment around the MAV in an occupancy grid stored in a three-dimensional circular buffer, which moves together with a drone, and represent the trajectories by using uniform B-splines. This representation ensures that the trajectory is sufficiently smooth and simultaneously allows for efficient optimization. 
 + 
 +<html><br><br><h1 class="sectionedit1">Open-Source Code</h1></html> 
 +The full source code is available on Github under LGPLv3 [[https://github.com/vsu91/ewok|https://github.com/vsu91/ewok]]. 
 + 
 + 
 +Some examples use the forest_gen dataset available here [[https://github.com/ethz-asl/forest_gen|https://github.com/ethz-asl/forest_gen]]. 
 + 
 + 
 + 
 +========== Publications ========== 
 +<bibtex> 
 +<keywords>replanning</keywords> 
 +</bibtex> 
 + 

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Informatik IX
Computer Vision Group

Boltzmannstrasse 3
85748 Garching info@vision.in.tum.de

Follow us on:

News

03.07.2024

We have five papers accepted to ECCV 2024. Check our publication page for more details.

09.06.2024
GCPR / VMV 2024

GCPR / VMV 2024

We are organizing GCPR / VMV 2024 this fall.

04.03.2024

We have twelve papers accepted to CVPR 2024. Check our publication page for more details.

18.07.2023

We have four papers accepted to ICCV 2023. Check out our publication page for more details.

02.03.2023

CVPR 2023

We have six papers accepted to CVPR 2023. Check out our publication page for more details.

More