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Junsuk Rho

Researcher at Pohang University of Science and Technology

Publications -  333
Citations -  13493

Junsuk Rho is an academic researcher from Pohang University of Science and Technology. The author has contributed to research in topics: Metamaterial & Medicine. The author has an hindex of 41, co-authored 236 publications receiving 7173 citations. Previous affiliations of Junsuk Rho include Yonsei University & University of Lahore.

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MAXIM: Metasurfaces-oriented electromagnetic wave simulation software with intuitive graphical user interfaces

TL;DR: The principal advantage of MAXIM is an intuitive graphical user interface drastically improving the accessibility of the software to who are not familiar with computer programming, and the development of related research fields of metasurfaces and nanophotonics.
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Resolution enhancement of fluorescence microscopy using encoded patterns from all-dielectric metasurfaces

TL;DR: In this article, a metasurface application was proposed to improve the lateral resolution of the optical system in fluorescence microscopy based on patterned illumination, achieving a resolution of 1.71 times higher than the diffraction limit of conventional imaging systems.
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Metasurfaces: Subwavelength nanostructure arrays for ultrathin flat optics and photonics

TL;DR: In this article, progress in metasurfaces and their applications in optics and photonics is discussed to provide a comprehensive understanding of these materials and their application in planar optical devices.
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Biomimetic Ultra-Broadband Perfect Absorbers Optimised with Reinforcement Learning

TL;DR: In this article, a double deep Q-learning network was used to design ultra-broadband, biomimetic, perfect absorbers with various materials, based the structure of a moths eye.
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Deep Q-network to produce polarization-independent perfect solar absorbers: a statistical report

TL;DR: Using reinforcement learning, a deep Q-network was used to design polarization-independent, perfect solar absorbers, selected the geometrical properties and materials of a symmetric three-layer metamaterial made up of circular rods on top of two films.