Search Results for author: Fabian Hüger

Found 18 papers, 4 papers with code

What should AI see? Using the Public's Opinion to Determine the Perception of an AI

no code implementations9 Jun 2022 Robin Chan, Radin Dardashti, Meike Osinski, Matthias Rottmann, Dominik Brüggemann, Cilia Rücker, Peter Schlicht, Fabian Hüger, Nikol Rummel, Hanno Gottschalk

Finally, we include comments from industry leaders in the field of AI safety on the applicability of survey based elements in the design of AI functionalities in automated driving.

Validation of Simulation-Based Testing: Bypassing Domain Shift with Label-to-Image Synthesis

no code implementations10 Jun 2021 Julia Rosenzweig, Eduardo Brito, Hans-Ulrich Kobialka, Maram Akila, Nico M. Schmidt, Peter Schlicht, Jan David Schneider, Fabian Hüger, Matthias Rottmann, Sebastian Houben, Tim Wirtz

We propose a novel framework consisting of a generative label-to-image synthesis model together with different transferability measures to inspect to what extent we can transfer testing results of semantic segmentation models from synthetic data to equivalent real-life data.

Image Generation Multi-class Classification +2

Risk Assessment for Machine Learning Models

no code implementations9 Nov 2020 Paul Schwerdtner, Florens Greßner, Nikhil Kapoor, Felix Assion, René Sass, Wiebke Günther, Fabian Hüger, Peter Schlicht

In this paper we propose a framework for assessing the risk associated with deploying a machine learning model in a specified environment.

BIG-bench Machine Learning

Strategy to Increase the Safety of a DNN-based Perception for HAD Systems

no code implementations20 Feb 2020 Timo Sämann, Peter Schlicht, Fabian Hüger

Safety is one of the most important development goals for highly automated driving (HAD) systems.

MetaFusion: Controlled False-Negative Reduction of Minority Classes in Semantic Segmentation

no code implementations16 Dec 2019 Robin Chan, Matthias Rottmann, Fabian Hüger, Peter Schlicht, Hanno Gottschalk

We present proof-of-concept results for CIFAR-10, and prove the efficiency of our method for the semantic segmentation of street scenes on the Cityscapes dataset based on predicted instances of the 'human' class.

Semantic Segmentation

The Ethical Dilemma when (not) Setting up Cost-based Decision Rules in Semantic Segmentation

no code implementations2 Jul 2019 Robin Chan, Matthias Rottmann, Radin Dardashti, Fabian Hüger, Peter Schlicht, Hanno Gottschalk

Neural networks for semantic segmentation can be seen as statistical models that provide for each pixel of one image a probability distribution on predefined classes.

Semantic Segmentation

Application of Decision Rules for Handling Class Imbalance in Semantic Segmentation

1 code implementation24 Jan 2019 Robin Chan, Matthias Rottmann, Fabian Hüger, Peter Schlicht, Hanno Gottschalk

We approach such potential misclassifications by weighting the posterior class probabilities with the prior class probabilities which in our case are the inverse frequencies of the corresponding classes in the training dataset.

Semantic Segmentation

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