Applied Sciences (Dec 2021)

Line Segment Matching Fusing Local Gradient Order and Non-Local Structure Information

  • Weibo Cai,
  • Jintao Cheng,
  • Juncan Deng,
  • Yubin Zhou,
  • Hua Xiao,
  • Jian Zhang,
  • Kaiqing Luo

DOI
https://doi.org/10.3390/app12010127
Journal volume & issue
Vol. 12, no. 1
p. 127

Abstract

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Line segment matching is essential for industrial applications such as scene reconstruction, pattern recognition, and VSLAM. To achieve good performance under the scene with illumination changes, we propose a line segment matching method fusing local gradient order and non-local structure information. This method begins with intensity histogram multiple averaging being utilized for adaptive partitioning. After that, the line support region is divided into several sub-regions, and the whole image is divided into a few intervals. Then the sub-regions are encoded by local gradient order, and the intervals are encoded by non-local structure information of the relationship between the sampled points and the anchor points. Finally, two histograms of the encoded vectors are, respectively, normalized and cascaded. The proposed method was tested on the public datasets and compared with previous methods, which are the line-junction-line (LJL), the mean-standard deviation line descriptor (MSLD) and the line-point invariant (LPI). Experiments show that our approach has better performance than the representative methods in various scenes. Therefore, a tentative conclusion can be drawn that this method is robust and suitable for various illumination changes scenes.

Keywords