TY - JOUR A1 - Wöber, Wilfried A1 - Novotny, Georg A1 - Mehnen, Lars A1 - Olaverri-Monreal, Cristina T1 - Autonomous Vehicles: Vehicle Parameter Estimation Using Variational Bayes and Kinematics JF - Applied Sciences KW - Variational bayes KW - Vehicle parameter estimation KW - Probabilistic robotics Y1 - VL - 10 IS - 18 ER - TY - CHAP A1 - Mehnen, Lars A1 - Pfützner, Helmut A1 - Krismanic, Georg A1 - Leiss, Elisabeth A1 - Krell, Christian T1 - 2D Magnetisation Control by Means of Evolutionary Algorithms T2 - Proceedings of 1 and 2-dimensional Measurement and Testing, Vienna (Austria) KW - Algorithm KW - Magnetism Y1 - 2019 SP - 122 EP - 130 ER - TY - JOUR A1 - Traxler, Stefan A1 - Kosel, Jürgen A1 - Pfützner, Helmut A1 - Kaniusas, Eugenijus A1 - Mehnen, Lars A1 - Giouroudi, Ioanna T1 - Contactless flow detection with magnetostrictive bilayers JF - Sensors and Actuators A KW - Magnetism Y1 - 2018 VL - A 142 IS - 2 SP - 491 EP - 495 ER - TY - JOUR A1 - Mehnen, Lars A1 - Svec, Peter A1 - Pfützner, Helmut A1 - Duhaj, Pavel T1 - Displacement sensor based on an amorphous bilayer including a magnetostrictive component JF - Journal of Magnetism and Magnetic Materials KW - Magnetism KW - Sensor Y1 - 2019 IS - 254-255 SP - 627 EP - 629 ER - TY - CHAP A1 - Mehnen, Lars A1 - Svec, Peter A1 - Pfützner, Helmut A1 - Duhaj, Pavel T1 - Displacement sensor based on an amorphous bilayer T2 - Proceedings of the 15th Soft Magnetic Material Conference KW - Magnetics KW - Sensor Y1 - 2019 ER - TY - CHAP A1 - Kaniusas, Eugenijus A1 - Pfützner, Helmut A1 - Mehnen, Lars A1 - Kosel, Jürgen A1 - Varoneckas, Giedrius A1 - Meydan, Turgut A1 - Vazquez, Manuel A1 - Rohn, Michael A1 - Merlo, Alberto A1 - Marquardt, Bernd T1 - Magnetoelastic Skin Curvature Sensor for Biomedical Applications T2 - Proceedings of Sensor 2004 KW - Magnetism KW - Skin Curvature KW - Sensor KW - Biomedicine Y1 - 2019 SN - 0-7803-8692-2 ER - TY - CHAP A1 - Mehnen, Lars A1 - Slovik, Peter A1 - Rattay, Frank A1 - van't Klooster, Kees T1 - Reusability Study of a Meteosat Antenna for a Student MicroSatellite T2 - Proceedings of the 28th ESA Antenna Workshop on Space KW - Outer Space KW - Antenna KW - Satellite Y1 - 2018 ER - TY - CHAP A1 - Pfützner, Helmut A1 - Kaniusas, Eugenijus A1 - Kosel, Jürgen A1 - Mehnen, Lars A1 - Meydan, Turgut A1 - Borza, Firuta A1 - Vazquez, Manuel A1 - Rohn, Michael A1 - Marquardt, Bernd T1 - First Magnetic Materials with Sensitivity for the Physical Quantity of 'Curvature' T2 - 4th Japanese Mediterranean Workshop on Applied Electromagnetic Engineering for Magnetic, Superconducting and Nano Materials KW - Magnetic KW - Materials Y1 - 2019 SP - 177 EP - 178 ER - TY - JOUR A1 - Kaniusas, Eugenijus A1 - Pfützner, Helmut A1 - Mehnen, Lars A1 - Kosel, Jürgen A1 - Tellez-Blanco, Juan C. A1 - Mulasalihovic, Edin A1 - Meydan, Turgut A1 - Vazquez, Manuel A1 - Rohn, Michael A1 - Malvicino, Carlo A1 - Marquardt, Bernd T1 - Optimisation of sensitivity and time constant of thermal sensors based on magnetoelastic amorphous bilayers JF - Journal of Alloys and Compounds KW - Thermal Sensors KW - Magnetism Y1 - 2019 IS - 369 SP - 198 EP - 201 ER - TY - CHAP A1 - Kaniusas, Eugenijus A1 - Pfützner, Helmut A1 - Mehnen, Lars A1 - Kosel, Jürgen A1 - Tellez-Blanco, Juan C. T1 - Adaptive measurements of blood pressure changes using magnetic sensor and ECG T2 - Il-oji metine Konferencijy Pranesimu tezes KW - Blood Pressure KW - Magnetics KW - Sensor KW - Biomedicine Y1 - 2019 SP - 29 EP - 29 ER - TY - CHAP A1 - Kaniusas, Eugenijus A1 - Pfützner, Helmut A1 - Mehnen, Lars A1 - Kosel, Jürgen A1 - Tellez-Blanco, Juan C. T1 - Biomedical Applicability of Magnetoelastic Bilayer Sensors T2 - Proceedings of the 11th International Symposium on Applied Electromagnetics & Mechanics KW - Magnetism KW - Biomedicine KW - Sensor Y1 - 2019 SP - 236 EP - 237 ER - TY - CHAP A1 - Mehnen, Lars A1 - Kaniusas, Eugenijus T1 - The SSETI Knowledge Base System T2 - Proceedings of the AMSAT-UK 21st Annual Colloquium 2006 KW - Knowledge Base Y1 - 2018 SP - 61 EP - 62 ER - TY - CHAP A1 - Mehnen, Lars A1 - Kaniusas, Eugenijus A1 - Pfützner, Helmut T1 - Magnetostrictive Skin Sensor for Apnea Detection T2 - Schlafmedizin im dritten Jahrtausend KW - Magnetics KW - Sensor Y1 - 2019 SP - 37 EP - 38 ER - TY - CHAP A1 - Krell, Christian A1 - Mehnen, Lars A1 - Leiss, Elisabeth A1 - Pfützner, Helmut T1 - Rotational Single Sheet Testing on Samples of Arbitrary Size and Shape T2 - Proceedings of 1 and 2-dimensional Measurement and Testing, Vienna (Austria) KW - Testing Y1 - 2019 SP - 96 EP - 103 ER - TY - JOUR A1 - Wöber, Wilfried A1 - Mehnen, Lars A1 - Sykacek, Peter A1 - Meimberg, Harald T1 - Investigating Explanatory Factors of Machine Learning Models for Plant Classification JF - Plants N2 - Recent progress in machine learning and deep learning has enabled the implementation of plant and crop detection using systematic inspection of the leaf shapes and other morphological characters for identification systems for precision farming. However, the models used for this approach tend to become black-box models, in the sense that it is difficult to trace characters that are the base for the classification. The interpretability is therefore limited and the explanatory factors may not be based on reasonable visible characters. We investigate the explanatory factors of recent machine learning and deep learning models for plant classification tasks. Based on a Daucus carota and a Beta vulgaris image data set, we implement plant classification models and compare those models by their predictive performance as well as explainability. For comparison we implemented a feed forward convolutional neuronal network as a default model. To evaluate the performance, we trained an unsupervised Bayesian Gaussian process latent variable model as well as a convolutional autoencoder for feature extraction and rely on a support vector machine for classification. The explanatory factors of all models were extracted and analyzed. The experiments show, that feed forward convolutional neuronal networks (98.24% and 96.10% mean accuracy) outperforms the Bayesian Gaussian process latent variable pipeline (92.08% and 94.31% mean accuracy) as well as the convolutional autoenceoder pipeline (92.38% and 93.28% mean accuracy) based approaches in terms of classification accuracy, even though not significant for Beta vulgaris images. Additionally, we found that the neuronal network used biological uninterpretable image regions for the plant classification task. In contrast to that, the unsupervised learning models rely on explainable visual characters. We conclude that supervised convolutional neuronal networks must be used carefully to ensure biological interpretability. We recommend unsupervised machine learning, careful feature investigation, and statistical feature analysis for biological applications. View Full-Text Keywords: deep learning; machine learning; plant leaf morphometrics; explainable AI KW - deep learning KW - machine learning KW - plant leaf morphometrics KW - explainable AI Y1 - VL - 2021 IS - 10(12):2674 ER - TY - CHAP A1 - Krell, Christian A1 - Mehnen, Lars A1 - Kaniusas, Eugenijus A1 - Leiss, Elisabeth A1 - Pfützner, Helmut T1 - Effects of stress on permeability, losses and magnetostriction T2 - Proceedings of 1 and 2-dimensional Measurement and Testing, Vienna (Austria) KW - Material Stress KW - Magnetism Y1 - 2019 SP - 242 EP - 247 ER -