A Cost Function for the Uncertainty of Matching Point Distribution on Image Registration

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ID: 268246
2021
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Abstract
Computing the homography matrix using the known matching points is a key step in computer vision for image registration. In practice, the number, accuracy, and distribution of the known matching points can affect the uncertainty of the homography matrix. This study mainly focuses on the effect of matching point distribution on image registration. First, horizontal dilution of precision (HDOP) is derived to measure the influence of the distribution of known points on fixed point position accuracy on the image. The quantization function, which is the average of the center points’ HDOP* of the overlapping region, is then constructed to measure the uncertainty of matching distribution. Finally, the experiments in the field of image registration are performed to verify the proposed function. We test the consistency of the relationship between the proposed function and the average of symmetric transfer errors. Consequently, the proposed function is appropriate for measuring the uncertainty of matching point distribution on image registration.
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bian2021isprsa Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Yuxia Bian;Meizhen Wang;Yongbin Chu;Zhihong Liu;Jun Chen;Zhiye Xia;Shuhong Fang;Bian, Yuxia;Wang, Meizhen;Chu, Yongbin;Liu, Zhihong;Chen, Jun;Xia, Zhiye;Fang, Shuhong;
Journal isprs international journal of geo-information
Year 2021
DOI
10.3390/ijgi10070438
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