<div class="csl-bib-body">
<div class="csl-entry">Zendel, O. (2023). <i>Test data for dependable computer vision applications</i> [Dissertation, Technische Universität Wien]. reposiTUm. https://doi.org/10.34726/hss.2023.116751</div>
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dc.identifier.uri
https://doi.org/10.34726/hss.2023.116751
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/189108
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dc.description
Kumulative Dissertation aus vier Artikeln
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dc.description
Zusammenfassung in deutscher Sprache
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dc.description.abstract
The goal of validation of computer vision (CV) systems is to test the reliability and robustness in various situations. This is done using dedicated test datasets which need to reflect all difficult aspects which the system will potentially face during operation. The creation of such datasets is expensive and difficult while a major challenge remains open: which aspects are actually necessary to test the robustness? This work presents a solution to plan the creation of datasets, compare the quality of existing ones, and pinpoint gaps in the data so that they may be filled using additional test cases. The CV-HAZOP checklist is the result of a risk analysis supplying over $1000$ entries which indicate potentially relevant aspects (called ``visual hazards'') for image test data. Performances of multiple stereo vision algorithms are compared between areas identified as difficult by the checklist vs. regular areas. The statistically significant drop in performance proves the value of this approach in describing challenging aspects. Existing stereo vision datasets are analysed to quantify the coverage of difficult and challenging aspects. This analysis shows: existing datasets focus on standard situations and include only a small amount of visual hazards. The visual hazard approach is then applied to the creation of a new dataset for semantic road scene understanding: Wilddash. A dedicated public benchmark webservice is created which allows the comparison of segmentation algorithm for robustness based on hazard-aware testing and negative testing. Finally, the concept is extended to panoptic segmentation and scaled to match regular state-of-the-art training datasets by creating Wilddash 2. The creation and application of a new unified label policy allows full compatibility of Wilddash 2 with three existing well-known segmentation datasets. The classifier-based detection of visual hazards allows automatic pre-selection of frames to speed up the process of creating challenging large-scale datasets.
en
dc.language
English
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dc.language.iso
en
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dc.rights.uri
http://rightsstatements.org/vocab/InC/1.0/
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dc.subject
computer vision
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dc.subject
validation
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dc.subject
dataset design
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dc.subject
test datasets
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dc.subject
safety analysis
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dc.subject
visual hazards
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dc.subject
HAZOP
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dc.subject
stereo vision
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dc.subject
semantic segmentation
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dc.subject
benchmarking
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dc.title
Test data for dependable computer vision applications
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dc.type
Thesis
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dc.type
Hochschulschrift
de
dc.rights.license
In Copyright
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dc.rights.license
Urheberrechtsschutz
de
dc.identifier.doi
10.34726/hss.2023.116751
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dc.contributor.affiliation
TU Wien, Österreich
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dc.rights.holder
Oliver Zendel
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dc.publisher.place
Wien
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tuw.version
vor
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tuw.thesisinformation
Technische Universität Wien
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tuw.publication.orgunit
E193 - Institut für Visual Computing and Human-Centered Technology