Laser & Optoelectronics Progress, Volume. 57, Issue 4, 041017(2020)

Fundamental Matrix Estimation Based on Multiple Kernel Learning-Density Peak Clustering

Jianfeng Wang1、*, Hongwei Wang1,2、**, and Xueqin Yan1、***
Author Affiliations
  • 1School of Electrical Engineering, Xinjiang University, Urumqi, Xinjiang 830047, China
  • 2School of Control Science and Engineering, Dalian University of Technology, Dalian, Liaoning 116024, China
  • show less

    Existing robust estimation methods of the fundamental matrix possess some limitations such as low accuracy. This study presents a fundamental matrix estimation method that uses multi-kernel learning to improve density peak clustering. First, from the viewpoint of the shortcomings in the density peak algorithm, such as the need to select parameters and inability to automatically cluster, multi-kernel learning and γ distribution map are introduced. Second, with the feature of epipolar distance, the proposed method eliminates the anomaly of the matching dataset to obtain a better internal point set. Finally, the M estimation method is used to exclude the positioning noise error, conduct further optimization processing on the internal idea set, and estimate the final base matrix. The INRIA dataset is used to validate and analyze the proposed method. Results show that the calculation accuracy and correctness of the fundamental matrix are improved using the proposed method.

    Tools

    Get Citation

    Copy Citation Text

    Jianfeng Wang, Hongwei Wang, Xueqin Yan. Fundamental Matrix Estimation Based on Multiple Kernel Learning-Density Peak Clustering[J]. Laser & Optoelectronics Progress, 2020, 57(4): 041017

    Download Citation

    EndNote(RIS)BibTexPlain Text
    Save article for my favorites
    Paper Information

    Category: Image Processing

    Received: Jul. 4, 2019

    Accepted: Aug. 16, 2019

    Published Online: Feb. 20, 2020

    The Author Email: Wang Jianfeng (291460700@qq.com), Wang Hongwei (3120759204@qq.com), Yan Xueqin (775456158@qq.com)

    DOI:10.3788/LOP57.041017

    Topics