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Papers

Total Posts 301
191

[SCIE]Vibration isolation systems for the beam splitter and signal recycling mirrors of the KAGRA gravitational wave detector

T Akutsu,김환선,배영복,손재주,오정근 | Classical and Quantum Gravity | 2021

KAGRA is an underground interferometric gravitational wave detector which is currently being commissioned.

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190

[SCIE]Overview of KAGRA: Calibration, detector characterization, physical environmental monitors, and the geophysics interferometer

M. Ando,T. Akutsu,김환선,배영복,손재주,오상훈,오정근 | Progress of Theoretical and Experimental Physics | 2021

KAGRA is a newly built gravitational wave observatory, a laser interferometer with a 3 km arm length, located at Kamioka, Gifu, Japan. In this series of articles we present an overview of the baseline KAGRA, for which we finished installing the designed configuration in 2019.

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189

[SCIE]Observation of gravitational waves by light polarization

Dong-Hoon Kim,박찬 | EUROPEAN PHYSICAL JOURNAL C | 2021

We provide analysis to determine the effects of gravitational waves on electromagnetic waves, using perturbation theory in general relativity. Our analysis is performed in a completely covariant manner without invoking any coordinates.For a given observer, using the geometrical-optics approach, we work out the perturbations of the phase, amplitude, frequency and polarization properties?axes of ellipse and ellipticity of light, due to gravitational waves.

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188

[SCIE]Open data from the first and second observing runs of Advanced LIGO and Advanced Virgo

Rich Abbott,김환선,손재주,오상훈,오정근 | SoftwareX | 2021

Advanced LIGO and Advanced Virgo are monitoring the sky and collecting gravitational-wave strain data with sufficient sensitivity to detect signals routinely. In this paper we describe the data recorded by these instruments during their first and second observing runs.

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187

[SCIE]Scalable image decomposition

Hwanbok Mun,Jinjoo Song,Sang Min Yoon,윤강준 | NEURAL COMPUTING & APPLICATIONS | 2021

This paper proposes a simple but effective end-to-end deep neural image decomposition network, which is called ’’scalable image decomposition’’, by decomposing and upscaling structure and texture images from the degraded input image at the same time.

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184

[SCIE]3D cephalometric landmark detection by multiple stage deep reinforcement learning

Sang?Hoon Kang,Sang?Hwy Lee,강성호,전기완 | Scientific Reports | 2021

The lengthy time needed for manual landmarking has delayed the widespread adoption of threedimensional (3D) cephalometry. We here propose an automatic 3D cephalometric annotation system based on multi-stage deep reinforcement learning (DRL) and volume-rendered imaging. This system considers geometrical characteristics of landmarks and simulates the sequential decision process underlying human professional landmarking patterns.

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183

[SCIE]Deep self-representative subspace clustering network

Jinjoo Song,Sang Min Yoon,Sangwon Baek,윤강준 | PATTERN RECOGNITION | 2021

In this paper, we propose a self-representative feature extraction deep neural network for unsupervised subspace clustering to improve representativeness and clustering ability. The extensive relevant results on various data demonstrate that deep subspace clustering employing self-representative features from high-dimensional data can effectively reduce the dimension of the self-representative layer while improv- ing performance.

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182

[SCIE]Risk Assessment of Importation and Local Transmission of COVID-19 in South Korea: Statistical Modeling Approach

Eunsu Kim,Sunmi Lee,Yeahwon Kim,이효정 | JMIR PUBLIC HEALTH AND SURVEILLANCE | 2021

In this study, we aimed to assess the country-specific importation risk of COVID-19 and investigate its impact on the local transmission of COVID-19.

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