Publikationen (ohne Studienabschlussarbeiten)

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Greiner, Philipp; Bogatsch, Tania; Jahn, Norbert; Martins, Laurin; Linß, Gerhard; Notni, Gunther
Requirements for web-based, integrated management systems in the production of image processing components. - In: Photonics and education in measurement science 2019, (2019), S. 111441D-1-111441D-8

https://doi.org/10.1117/12.2532572
Fütterer, Richard; Schellhorn, Mathias; Notni, Gunther
Implementation of a multiview passive-stereo-imaging system with SoC technology. - In: Photonics and education in measurement science 2019, (2019), S. 111440Q-1-111440Q-5

https://doi.org/10.1117/12.2530721
Dietrich, Patrick; Heist, Stefan; Landmann, Martin; Kühmstedt, Peter; Notni, Gunther
BICOS - an algorithm for fast real-time correspondence search for statistical pattern projection-based active stereo sensors. - In: Applied Sciences, ISSN 2076-3417, Bd. 9 (2019), 16, 3330, S. 1-18

https://doi.org/10.3390/app9163330
Trambitckii, Konstantin; Anding, Katharina; Steinert, Lilli; Notni, Gunther
Estimation of correlation between texture features and surface parameters for milled metal parts. - In: Proceedings of the 8th International Conference on Pattern Recognition Applications and Methods, (2019), S. 421-428

Fast developing of computer technologies led to vast improvements of image processing systems and algorithms. Nowadays these algorithms are widely used in different areas of computer and machine vision systems. In this research texture features were used to analyse metal surfaces using a set of images obtained with industrial camera with macro lens. This kind of contactless surface roughness estimation is cheaper and quicker in comparison with traditional methods. A set of 27 texture features were calculated for a set of surface images. Correlation coefficients between the texture features and 10 roughness parameters for the sample surfaces were estimated. Obtained results showed that texture features can be successfully used for quick surface quality estimation.



https://doi.org/10.5220/0007344104210428
Steinert, Lilli; Anding, Katharina; Trambitckii, Konstantin; Notni, Gunther
Comparison between supervised and unsupervised feature selection methods. - In: Proceedings of the 8th International Conference on Pattern Recognition Applications and Methods, (2019), S. 582-589

The reduction of the feature set by selecting relevant features for the classification process is an important step within the image processing chain, but sometimes too little attention is paid to it. Such a reduction has many advantages. It can remove irrelevant and redundant data, improve recognition performance, reduce storage capacity requirements, computational time of calculations and also the complexity of the model. Within this paper supervised and unsupervised feature selection methods are compared with respect to the achievable recognition accuracy. Supervised Methods include information of the given classes in the selection, whereas unsupervised ones can be used for tasks without known class labels. Feature clustering is an unsupervised method. For this type of feature reduction, mainly hierarchical methods, but also k-means are used. Instead of this two clustering methods, the Expectation Maximization (EM) algorithm was used in this paper. The aim is to investigate whethe r this type of clustering algorithm can provide a proper feature vector using feature clustering. There is no feature reduction technique that provides equally best results for all datasets and classifiers. However, for all datasets, it was possible to reduce the feature set to a specific number of useful features without losses and often even with improvements in recognition performance.



https://doi.org/10.5220/0007385305820589
Notni, Gunther; Breitbarth, Andreas; Simmen, Katharina; Buch, Benjamin
Thema: Pilot - Strukturwandel - Verbundvorhaben: 3dStahl; TP1.1: Multimodale Datenerfassung und Analyse : Schlussbericht : Sachbericht zum Verwendungsnachweis : Berichtszeitraum: 01.10.2016 - 31.12.2018. - Ilmenau : Technische Universität Ilmenau. - 1 Online-Ressource (41 Seiten, 2,01 MB)Förderkennzeichen BMBF 03PSIPT3A. - Verbund-Nummer 01175194

https://doi.org/10.2314/KXP:1672117364
Hess, Albrecht; Junger, Christina; Rosenberger, Maik; Notni, Gunther
FPGA-based phase measuring profilometry system. - In: Three-Dimensional Imaging, Visualization, and Display 2019, (2019), S. 109970O-1-109970O-8

https://doi.org/10.1117/12.2520916
Dittrich, Paul-Gerald; Bichra, Mohamed; Stiehler, Daniel; Pfützenreuter, Christian; Radtke, Lisa; Rosenberger, Maik; Notni, Gunther
Extended characterization of multispectral resolving filter-on-chip snapshot-mosaic CMOS cameras. - In: Algorithms, Technologies, and Applications for Multispectral and Hyperspectral Imagery XXV, (2019), S. 109860I-1-109860I-11

https://doi.org/10.1117/12.2518842
Illmann, Raik; Rosenberger, Maik; Notni, Gunther
Optimized algorithm for processing hyperspectral push-broom data from multiple sources. - In: Algorithms, Technologies, and Applications for Multispectral and Hyperspectral Imagery XXV, (2019), S. 109861I-1-109861I-11

https://doi.org/10.1117/12.2519052
Freitag, Christoph; Kühmstedt, Peter; Notni, Gunther; Gross, Herbert
Simulation of computational ghost imaging: application for 3D measurement. - In: Modeling Aspects in Optical Metrology VII, (2019), S. 1105710-1-1105710-9

https://doi.org/10.1117/12.2526380