IR Surface Reflectance Estimation and Material Type Recognition using Two-stream Net and Kinect Camera

Authors
SeokYeong LeeHwasup LimAhn, Sang ChulSeungKyu Lee
Issue Date
2019-07
Publisher
SIGGRAPH
Citation
SIGGRAPH '19: Special Interest Group on Computer Graphics and Interactive Techniques Conference
Abstract
Recently, material type recognition using color or light field camera has been studied. However, visual pattern based approaches for material type recognition without direct acquisition of surface reflectance show limited performance. In this work, we propose IR surface reflectance estimation using off-the-shelf ToF (Time-of-Flight) active sensor such as Kinect and perform surface material type recognition based on both color and reflectance clues. Two stream deep neural network consists of convolutional neural network encoding visual clue and recurrent neural network encoding reflectance characteristic is proposed for material classification. Estimated IR surface reflectance and material type recognition evaluation on our Color-IR Material Data set show promising performance compared to prior approaches.
ISSN
-
URI
https://pubs.kist.re.kr/handle/201004/78511
DOI
10.1145/3306214.3338557
Appears in Collections:
KIST Conference Paper > 2019
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