Search Results for author: Lukas Schneider

Found 11 papers, 3 papers with code

Learning Risk-Aware Quadrupedal Locomotion using Distributional Reinforcement Learning

no code implementations25 Sep 2023 Lukas Schneider, Jonas Frey, Takahiro Miki, Marco Hutter

Instead of relying on a value expectation, we estimate the complete value distribution to account for uncertainty in the robot's interaction with the environment.

Distributional Reinforcement Learning reinforcement-learning

Monte-Carlo tree search with uncertainty propagation via optimal transport

no code implementations19 Sep 2023 Tuan Dam, Pascal Stenger, Lukas Schneider, Joni Pajarinen, Carlo D'Eramo, Odalric-Ambrym Maillard

We introduce a novel backup operator that computes value nodes as the Wasserstein barycenter of their action-value children nodes; thus, propagating the uncertainty of the estimate across the tree to the root node.

Thompson Sampling

3DMOTFormer: Graph Transformer for Online 3D Multi-Object Tracking

1 code implementation ICCV 2023 Shuxiao Ding, Eike Rehder, Lukas Schneider, Marius Cordts, Juergen Gall

Tracking 3D objects accurately and consistently is crucial for autonomous vehicles, enabling more reliable downstream tasks such as trajectory prediction and motion planning.

3D Multi-Object Tracking Autonomous Vehicles +6

Structural Knowledge Distillation for Object Detection

no code implementations23 Nov 2022 Philip de Rijk, Lukas Schneider, Marius Cordts, Dariu M. Gavrila

Knowledge Distillation (KD) is a well-known training paradigm in deep neural networks where knowledge acquired by a large teacher model is transferred to a small student.

Feature Importance Knowledge Distillation +4

Learning Stixel-based Instance Segmentation

no code implementations7 Jul 2021 Monty Santarossa, Lukas Schneider, Claudius Zelenka, Lars Schmarje, Reinhard Koch, Uwe Franke

Stixels have been successfully applied to a wide range of vision tasks in autonomous driving, recently including instance segmentation.

Autonomous Driving Instance Segmentation +2

Slanted Stixels: A way to represent steep streets

no code implementations2 Oct 2019 Daniel Hernandez-Juarez, Lukas Schneider, Pau Cebrian, Antonio Espinosa, David Vazquez, Antonio M. Lopez, Uwe Franke, Marc Pollefeys, Juan C. Moure

This work presents and evaluates a novel compact scene representation based on Stixels that infers geometric and semantic information.

Sparsity Invariant CNNs

1 code implementation22 Aug 2017 Jonas Uhrig, Nick Schneider, Lukas Schneider, Uwe Franke, Thomas Brox, Andreas Geiger

In this paper, we consider convolutional neural networks operating on sparse inputs with an application to depth upsampling from sparse laser scan data.

Depth Completion Depth Estimation +1

Slanted Stixels: Representing San Francisco's Steepest Streets

1 code implementation17 Jul 2017 Daniel Hernandez-Juarez, Lukas Schneider, Antonio Espinosa, David Vázquez, Antonio M. López, Uwe Franke, Marc Pollefeys, Juan C. Moure

In this work we present a novel compact scene representation based on Stixels that infers geometric and semantic information.

The Stixel world: A medium-level representation of traffic scenes

no code implementations2 Apr 2017 Marius Cordts, Timo Rehfeld, Lukas Schneider, David Pfeiffer, Markus Enzweiler, Stefan Roth, Marc Pollefeys, Uwe Franke

We believe this challenge should be faced by introducing a representation of the sensory data that provides compressed and structured access to all relevant visual content of the scene.

Autonomous Vehicles object-detection +1

Semantically Guided Depth Upsampling

no code implementations2 Aug 2016 Nick Schneider, Lukas Schneider, Peter Pinggera, Uwe Franke, Marc Pollefeys, Christoph Stiller

We present a novel method for accurate and efficient up- sampling of sparse depth data, guided by high-resolution imagery.

Edge Detection Scene Labeling

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