Browse "School of Electrical Engineering(전기및전자공학부)" by Author Lim, Heoun-taek

Showing results 1 to 7 of 7

1
Binocular Fusion Net: Deep Learning Visual Comfort Assessment for Stereoscopic 3D

Kim, Hak Gu; Jeong, Hyunwook; Lim, Heoun-taek; Ro, Yong Man, IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, v.29, no.4, pp.956 - 967, 2019-04

2
Cybersickness assessment for frame rate of ultra-wide display with deep model of visual perception mismatch = 광시야 디스플레이에서 시지각 불일치 딥모델을 이용한 프레임률에 따른 사이버멀미 측정link

Lim, Heoun-taek; Ro, Yong Man; et al, 한국과학기술원, 2018

3
Deep Virtual Reality Image Quality Assessment with Human Perception Guider for Omnidirectional Image

Kim, Hak Gu; Lim, Heoun-taek; Ro, Yong Man, IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, v.30, no.4, pp.917 - 928, 2020-04

4
Measurement of exceptional motion in VR video contents for VR sickness assessment using deep convolutional autoencoder

Kim, Hak Gu; Alhaj Baddar, Wissam; Lim, Heoun-taek; Jeong, Hyunwook; Ro, Yong Man, 23rd ACM Conference on Virtual Reality Software and Technology, VRST 2017, pp.1 - 7, Association for Computing Machinery, 2017-11-08

5
Towards a Better Understanding of VR Sickness: Physical Symptom Prediction for VR Contents

Kim, Hak Gu; Lee, Sangmin; Kim, Seongyeop; Lim, Heoun-taek; Ro, Yong Man, 35th AAAI Conference on Artificial Intelligence, pp.836 - 844, Association for the Advancement of Artificial Intelligence (AAAI), 2021-02-02

6
VR IQA Net: Deep virtual reality image quality assessment using adversarial learning

Lim, Heoun-taek; Kim, Hak Gu; Ro, Yong Man, IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) 2018, pp.6737 - 6741, IEEE Signal Processing Society, 2018-04-20

7
VRSA Net: VR Sickness Assessment considering Exceptional Motion for 360-degree VR Video

Kim, Hak Gu; Lim, Heoun-taek; Lee, Sangmin; Ro, Yong Man, IEEE TRANSACTIONS ON IMAGE PROCESSING, v.28, no.4, pp.1646 - 1660, 2019-04

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