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Markus König

Researcher at Ruhr University Bochum

Publications -  201
Citations -  10619

Markus König is an academic researcher from Ruhr University Bochum. The author has contributed to research in topics: Building information modeling & Computer science. The author has an hindex of 25, co-authored 177 publications receiving 8993 citations. Previous affiliations of Markus König include University of Würzburg & SLAC National Accelerator Laboratory.

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Quantum Spin Hall Insulator State in HgTe Quantum Wells

TL;DR: The quantum phase transition at the critical thickness, d = 6.3 nanometers, was independently determined from the magnetic field–induced insulator-to-metal transition, providing experimental evidence of the quantum spin Hall effect.

Quantum Spin Hall Insulator State in HgTe Quantum Wells

TL;DR: In this article, the quantum spin Hall effect was observed in HgTe/(Hg,Cd)Te quantum wells with well width d 6.3 nanometers and the residual conductance was independent of sample width, indicating that it is caused by edge states.
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Imaging currents in HgTe quantum wells in the quantum spin Hall regime

TL;DR: This work directly confirms the existence of the edge channels of the quantum spin Hall state by imaging the magnetic fields produced by current flowing in large Hall bars made from HgTe quantum wells, providing input to the question of how ballistic transport may be limited in the edge channel.
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Low-cost virtual reality environment for engineering and construction

TL;DR: A way to build a low-cost, highly immersive virtual reality environment for engineering and construction applications, and a method to simplify and partly automate the process of reusing digital building models, which are already used in construction, to create virtual scenes, instead of having to do parallel content creation for visualization.
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Natural markers for augmented reality-based indoor navigation and facility maintenance

TL;DR: This paper presents a natural marker based AR framework that can digitally support facility maintenance operators when navigating to the FM item of interest and when actually performing the maintenance and repair actions.