학술논문

Research on feature point matching algorithm improvement using depth prediction
Document Type
article
Source
The Journal of Engineering (2019)
Subject
learning (artificial intelligence)
image matching
feature extraction
transforms
image registration
image colour analysis
red–green–blue images
feature-based image registration algorithms
visual simultaneous localisation
feature point matching
algorithm improvement
deep learning algorithm
depth prediction
novel mismatch removal algorithm
mismatch removing
mismatching feature points
feature matching
Engineering (General). Civil engineering (General)
TA1-2040
Language
English
ISSN
2051-3305
Abstract
Feature point matching plays an important role in feature-based image registration such as the scale-invariant feature transform algorithm. Feature-based image registration is widely used in visual simultaneous localisation and mapping, augmented reality, self-driving etc. The most meaningful study on feature matching is to improve the accuracy and efficiency and this study pays attention to improving the accuracy by removing the mismatching feature points. Since most of the existed feature-based image registration algorithms are not so strong and efficient enough in mismatch removing, in this study, the authors propose a novel mismatch removal algorithm by incorporating depth prediction into feature matching to improve the performance. In this approach, the depth maps are predicted in pixel-wise through the given red–green–blue images using a deep learning algorithm. Experimental results show that their method outperforms conventional ones in mismatch removing.