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- Title
航空滤光片阵列多光谱图像曲面拟合双阈值配准.
- Authors
李, 铜哨; 孙, 文邦; 岳, 广; 顾, 子侣
- Abstract
Aerial filter array multispectral images and their high precision registrations are important for guaranteeing subsequent image processing and application. In the process of image registration, the position accuracy of matching points is important in determining the accuracy of image registration. However, objects of different strips in the same band image are acquired at different moments, the image displacement between single-band images is large, and the difference in geometric errors of matching points between topographic undulating areas and flat areas in the image is obvious. Additionally, false matching points cannot be accurately eliminated by the global matrix. The difficulty of eliminating mismatched points in multispectral images of aerial filter arrays must be addressed because of the displacement of image points between spectral segments. Thus, a new method of double-threshold elimination based on matching point position difference surface fitting is proposed in this study. First, the intermediate band image of the filter array multispectral images was selected as the reference image, and the matching points in the reference image and the image to be registered were extracted by the subpixel-level SIFT algorithm. Second, the difference in the positions of the matching points of the two bands was calculated point by point at the matching points of the benchmark image, and the Delaunay triangulation network of matching points in the reference image was constructed. The position difference surface was smoothed, the position differences between the matching points of the reference image and the corresponding matching points of the image requiring registration were calculated point by point, and a certain tolerance range was shifted upward and downward to form a 3D position difference threshold space. Finally, accurate matching points were selected using the 3D threshold space of the position difference to complete the registration. The three-band composite image of the algorithm-registered image in this study presented clear features and well-defined details and met the requirements of subsequent data processing and application. The effectiveness of the proposed algorithm was illustrated by registering two datasets of filter array multispectral images, from which qualitative and quantitative perspectives were verified. Regarding false color, the composite image processed by the proposed algorithm did not show obvious pseudoedges, and the features were clear. However, pseudoedges were obvious in the comparison algorithm and difference image grayscale histograms. Among the experiments of the two datasets, the difference image histogram curve of the proposed algorithm presented the largest shift to the left. The image registered by the proposed algorithm had the smallest difference from the reference image and the best registration effect. Theoretical analysis and experimental results show that the dual-threshold pointing algorithm based on matching point difference fitting of curved surfaces can screen high-precision matching points in aerial filter array multispectral images and effectively improve the accuracy of image registration. Surface fitting to the position difference of matching points can help reveal the trend of image point displacement in each region. This scheme can also effectively eliminate false matching points around the correct matching points, especially since the image displace.
- Subjects
IMAGE registration; MULTISPECTRAL imaging; CURVED surfaces; IMAGE processing; GRAYSCALE model; ELECTRONIC data processing
- Publication
Journal of Remote Sensing, 2024, Vol 28, Issue 4, p1076
- ISSN
1007-4619
- Publication type
Article
- DOI
10.11834/jrs.20211432