Back to Search Start Over

Reconstruction of 3D structural semantic points based on multiple camera views

Authors :
Binbin Yan
Xunbo Yu
Yangguang Li
Kuiru Wang
Duo Chen
Peng Wang
Xinzhu Sang
Chongxiu Yu
Source :
AOPC 2019: Display Technology and Optical Storage.
Publication Year :
2019
Publisher :
SPIE, 2019.

Abstract

Multi-view can provide more object information than single view and are less susceptible to noise interference. But in the feature matching process, excessive parallax in multi-view can lead to mismatches. And it is difficult to extract features for weakly textured area, which will causes the reconstructed model contain holes. Here, the method for the reconstruction of 3D structural semantic points with multiple camera views is presented. We take the advantage of the multi-view method and 3D feature points to reduce mismatching in the feature matching process. The constraints that provided by structure semantics points are related to object and restrict the distribution of points around object, which can improve the reconstructed model. Besides, the model with 3D feature points can be optimized using semantics and distance information to fill holes and remove noise. The experiment uses eight cameras to test method. The results show that our method can be effective for mismatching and holes. The experiment results prove that our method is effective.

Details

Database :
OpenAIRE
Journal :
AOPC 2019: Display Technology and Optical Storage
Accession number :
edsair.doi...........6afd2a79c7ae54c3c8f110ebbe7be974
Full Text :
https://doi.org/10.1117/12.2547999