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Indoor Image Surface Normal Estimation Using Convolutional Neural Network : 합성곱 신경망을 이용한 실내 이미지에서의 표면 노말 추정

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dc.contributor.advisor고형석-
dc.contributor.author이원준-
dc.date.accessioned2018-05-29T03:28:37Z-
dc.date.available2018-05-29T03:28:37Z-
dc.date.issued2018-02-
dc.identifier.other000000150718-
dc.identifier.urihttps://hdl.handle.net/10371/141516-
dc.description학위논문 (석사)-- 서울대학교 대학원 : 공과대학 전기·정보공학부, 2018. 2. 고형석.-
dc.description.abstractA surface normal vector is related to material of object, shape of geometry, re-
flection of light. To estimate other features, the surface normal vector is necessary.
Therefore, the surface normal estimation problem is one of the most important topic
in inverse graphics.
Previously, computing surface normal image from single RGB-D image has been stud-
ied since estimating surface normal vector from single RGB image is extremely ill-
posed problem. Recently, deep learning based approach has been presented for the
task. However, it is not well-known that which deep learning model is efficiently solve
the problem. Also there are limitations in dataset computed from real RGB-D images.
In this thesis, first we describes the problems in previous works
-
dc.description.abstractthe dataset. Sec-
ond, we suggest a way to overcome the limitation of previous work
-
dc.description.abstractsynthetic dataset.
Lastly, we test several neural net model with set of experiments to find the most proper
model. After that we train the neural network model with synthetic dataset.
The models prediction of surface normal image looks plausible. Numerically the
trained model achieve lower error compared to previous works.
-
dc.description.tableofcontents1 INTRODUCTION 1
2 BACKGROUND AND RELATED WORKS 3
2.1 Convolutional Network 3
2.2 Convolutional Network Nodels 4
2.3 Single Image Surface Normal Estimation 7
2.4 Synthetic Dataset 8
3 METHODS 10
3.1 Training Data 10
3.2 Preprocessing 13
3.3 Training Setup 15
3.4 Loss Function 16
3.5 Neural Network 17
4 EXPERIMENT RESULTS 19
4.1 Loss Comparison 21
4.2 Model Comparison with Partial Dataset 21
4.3 Model Comparison with Full Dataset 24
5 CONCLUSION 27
Abstract (In Korean) 31
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dc.formatapplication/pdf-
dc.format.extent10981976 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subject딥러닝-
dc.subject컴퓨터 비전-
dc.subject컴퓨터 그래픽스-
dc.subject.ddc621.3-
dc.titleIndoor Image Surface Normal Estimation Using Convolutional Neural Network-
dc.title.alternative합성곱 신경망을 이용한 실내 이미지에서의 표면 노말 추정-
dc.typeThesis-
dc.contributor.AlternativeAuthorWonjun Lee-
dc.description.degreeMaster-
dc.contributor.affiliation공과대학 전기·정보공학부-
dc.date.awarded2018-02-
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