An effective algorithm for generation of crater gray image

Tingting Lv, Weiduo Hu, Zhi-na Jiang
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引用次数: 1

Abstract

Crater-based visual navigation method is a promising and precise method for future planetary landing missions. To develop and test the crater-based visual navigation algorithms, in this paper, we present an original and effective algorithm for generating the synthetic crater gray image. The presented crater gray image simulation algorithm is flexible and relies on the basic camera pinhole model and the Lambertian reflection model. First, the 3D terrain model of the planetary surface containing craters is established. Second, the intensity of each pixel in the image plane of the simulated camera, whose attitude and position are set in advance, is calculated by analyzing the intersections of the 3D terrain model with the optical line passing through the optical center and the given pixel. The experimental results demonstrate that the proposed algorithm is effective in simulating the crater gray image for developing and validating the algorithms of detecting craters and estimating the position and orientation of the spacecraft landing on the planetary surface.
一种有效的火山口灰度图像生成算法
基于陨石坑的视觉导航方法是未来行星着陆任务中一种很有前途的精确方法。为了开发和测试基于陨石坑的视觉导航算法,本文提出了一种新颖有效的合成陨石坑灰度图像生成算法。本文提出的弹坑灰度图像仿真算法基于基本的相机针孔模型和Lambertian反射模型,具有一定的灵活性。首先,建立含陨石坑的行星表面三维地形模型;其次,通过分析经过光学中心的光学线与给定像素点相交的三维地形模型,计算预先设定姿态和位置的模拟相机图像平面中每个像素点的强度;实验结果表明,该算法能够有效地模拟陨坑灰度图像,为陨坑探测算法的开发和验证以及航天器在行星表面着陆位置和方向的估计提供依据。
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