Abstract

This paper takes the advantageous ability of Kalman filter equation as a means to jointly realize the accurate and reliable extraction of 3D spatial information and carries out the research work from the extraction of 3D spatial position information from multisource remote sensing optical stereo image pairs, recovery of 3D spatial structure information, and joint extraction of 3D spatial information with optimal topological structure constraints, respectively. Taking advantage of the stronger effect capability of Wiener recovery and shorter computation time of Kalman filter recovery, Wiener recovery is combined with Kalman filter recovery (referred to as Wiener-Kalman filter recovery method), and the mean square error and peak signal-to-noise ratio of the recovered image of this method are comparable to those of Wiener recovery, but the subjective evaluation concludes that the recovered image obtained by the Wiener-Kalman filter recovery method is clearer. To address the problem that the Kalman filter recovery method has the advantage of short computation time but the recovery effect is not as good as the Wiener recovery method, an improved Kalman filter recovery algorithm is proposed, which overcomes the fact that the Kalman filter recovery only targets the rows and columns of the image matrix for noise reduction and cannot utilize the pixel point information among the neighboring rows and columns. The algorithm takes the first row of the matrix image as the initial parameter of the Kalman filter prediction equation and then takes the first row of the recovered image as the initial parameter of the second Kalman filter prediction equation. The algorithm does not need to estimate the degradation function of the degradation system based on the degraded image, and the recovered image presents the image edge detail information more clearly, while the recovery effect is comparable to that of the Wiener recovery and Wiener-Kalman filter recovery method, and the improved Kalman filter recovery method has stronger noise reduction ability compared with the Kalman filter recovery method. The problem that the remote sensing optical images are seriously affected by shadows and complex environment detail information when 3D spatial structure information is extracted and the data extraction feature edge is not precise enough and the structure information extraction is not stable enough is addressed. A global optimal planar segmentation method with graded energy minimization is proposed, which can realize the accurate and stable extraction of the topological structure of the top surface by combining the edge information of remote sensing optical images and ensure the accuracy and stability of the final extracted 3D spatial information.

Highlights

  • Due to the limitations of scientific and technological development, most of the data that people can obtain and process are two-dimensional data

  • In order to achieve the purpose of reducing the noise in the image, keeping the edge detail information of the image, and shortening the running time of the algorithm, this paper proposes an alternating Kalman filter image restoration algorithm, which is better than other methods through several experimental simulations

  • The alternating Kalman filter recovery method is compared with the Wiener recovery method, Kalman filter recovery method, Wiener-Kalman filter recovery method, and Wiener-alternating Kalman filter recovery method, and through multiple simulations, the images obtained by the alternating Kalman filter recovery method can clearly present the image edge detail information under the same noise, which is better than the joint Wiener recovery method and Wiener-Kalman filter recovery method for remote sensing

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Summary

Introduction

Due to the limitations of scientific and technological development, most of the data that people can obtain and process are two-dimensional data. The study of 3D reconstruction has academic significance and practical value It is a multidisciplinary intersection research field and has great importance in computer image processing. In order to achieve the purpose of reducing the noise in the image, keeping the edge detail information of the image, and shortening the running time of the algorithm, this paper proposes an alternating Kalman filter image restoration algorithm, which is better than other methods through several experimental simulations. The mathematical model of multisource remote sensing optical stereo image for 3D spatial position information extraction is analyzed in detail based on the Kalman filter equation model.

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