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Main Authors: Bürkle, Cornelius, Oboril, Fabian, Scholl, Kay-Ulrich
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.02647
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author Bürkle, Cornelius
Oboril, Fabian
Scholl, Kay-Ulrich
author_facet Bürkle, Cornelius
Oboril, Fabian
Scholl, Kay-Ulrich
contents The automotive industry is currently expanding digital display options with every new model that comes onto the market. This entails not just an expansion in dimensions, resolution, and customization choices, but also the capability to employ novel display effects like overlays while assembling the content of the display cluster. Unfortunately, this raises the need for appropriate monitoring systems that can detect rendering errors and apply appropriate countermeasures when required. Classical solutions such as Cyclic Redundancy Checks (CRC) will soon be no longer viable as any sort of alpha blending, warping of scaling of content can cause unwanted CRC violations. Therefore, we propose a novel monitoring approach to verify correctness of displayed content using telltales (e.g. warning signs) as example. It uses a learning-based approach to separate "good" telltales, i.e. those that a human driver will understand correctly, and "corrupted" telltales, i.e. those that will not be visible or perceived correctly. As a result, it possesses inherent resilience against individual pixel errors and implicitly supports changing backgrounds, overlay or scaling effects. This is underlined by our experimental study where all "corrupted" test patterns were correctly classified, while no false alarms were triggered.
format Preprint
id arxiv_https___arxiv_org_abs_2409_02647
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning-Based Error Detection System for Advanced Vehicle Instrument Cluster Rendering
Bürkle, Cornelius
Oboril, Fabian
Scholl, Kay-Ulrich
Computer Vision and Pattern Recognition
Human-Computer Interaction
Machine Learning
Robotics
Image and Video Processing
The automotive industry is currently expanding digital display options with every new model that comes onto the market. This entails not just an expansion in dimensions, resolution, and customization choices, but also the capability to employ novel display effects like overlays while assembling the content of the display cluster. Unfortunately, this raises the need for appropriate monitoring systems that can detect rendering errors and apply appropriate countermeasures when required. Classical solutions such as Cyclic Redundancy Checks (CRC) will soon be no longer viable as any sort of alpha blending, warping of scaling of content can cause unwanted CRC violations. Therefore, we propose a novel monitoring approach to verify correctness of displayed content using telltales (e.g. warning signs) as example. It uses a learning-based approach to separate "good" telltales, i.e. those that a human driver will understand correctly, and "corrupted" telltales, i.e. those that will not be visible or perceived correctly. As a result, it possesses inherent resilience against individual pixel errors and implicitly supports changing backgrounds, overlay or scaling effects. This is underlined by our experimental study where all "corrupted" test patterns were correctly classified, while no false alarms were triggered.
title Learning-Based Error Detection System for Advanced Vehicle Instrument Cluster Rendering
topic Computer Vision and Pattern Recognition
Human-Computer Interaction
Machine Learning
Robotics
Image and Video Processing
url https://arxiv.org/abs/2409.02647