A framework for the automation of testing computer vision systems
Vision systems, i.e., systems that enable the detection and tracking of objects in images, have gained substantial importance over the past decades. They are used in quality as- surance applications, e.g., for finding surface defects in products during manufacturing, surveillance, but also automated driving, requiring reliable behavior. Interestingly, there is only little work on quality assurance and especially testing of vision systems in general. In this paper, we contribute to the area of testing vision software, and present a framework for the automated generation of tests for systems based on vision and image recognition with the focus on easy usage, uniform usability and expandability. The framework makes use of existing libraries for modifying the original images and to obtain similarities between the original and modified images. We show how such a framework can be used for testing a particular industrial application on identifying defects on riblet surfaces and present preliminary results from the image classification domain.
Fri 21 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
12:00 - 13:15 | |||
12:00 30mLong-paper | An Evolutionary Approach to Adapt Tests Across Mobile Apps AST 2021 Leonardo Mariani University of Milano Bicocca, Mauro Pezze USI Lugano, Switzerland, Valerio Terragni The University of Auckland, Daniele Zuddas Università della Svizzera italiana (USI) Pre-print Media Attached | ||
12:30 15mShort-paper | A framework for the automation of testing computer vision systems AST 2021 Franz Wotawa , Ledio Jahaj Technische Universitaet Graz, Lorenz Klampfl Graz University of Technology, Austria Pre-print Media Attached | ||
12:45 30mLong-paper | Multimodal Surprise Adequacy Analysis of Inputs for Natural Language Processing DNN Models AST 2021 Pre-print Media Attached |
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