4.4 Article

Fast Matching Method of UAV Aerial Photography Enhanced Low Illumination Image

期刊

出版社

HINDAWI LTD
DOI: 10.1155/2022/9543893

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资金

  1. National Natural Science Foundation of China [51909245, 51775518]
  2. Open Foundation of Key Laboratory of Submarine Geosciences, MNR [KLSG2003]
  3. Natural Science Foundation of Shanxi Province [201901D211244]
  4. High-level Talents Scientific Research of North University of China [304/11012305]
  5. Scientific and Technological Innovation Programs of Higher Education Institutions in Shanxi [2020L0272, 2020L0292]
  6. Natural Science Foundation of North University of China [XJJ201908]

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This study proposes a real-time matching method for UAV aerial images in low illumination environments. By applying a new image enhancement algorithm and an improved ORB algorithm, the accuracy and visibility of image matching are improved, providing a fast and effective method for UAV image matching in different low illumination environments.
Aiming at the problems of insufficient image contrast in three-dimensional reconstruction of UAV in low illumination environment and the unstable iteration times of the RANSAC algorithm in the feature matching process, real-time matching method of UAV aerial image is proposed. First, a new image enhancement algorithm is applied to the image to enhance its quality and visibility. Second, the enhanced fast algorithm in ORB extracts the feature points from the preprocessed image, and cross-matching performs rough matching. Finally, the PROSAC algorithm solves the homography matrix by selecting the highest quality interior points from the extracted feature points. To improve the matching accuracy, some exterior points that do not conform to the geometric characteristics of the image are removed based on the homography matrix and the set mismatch threshold. The results show that the improved ORB algorithm is applied to the low illumination environment of UAV aerial photography, the image matching accuracy in 3D reconstruction is improved, and the correct matching rate tends to 97.24-99.39%. The relevant research findings and conclusions provide a fast and effective method for UAV image matching in different low illumination environments.

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