首页> 外文会议>Imaging a Sustainable Future >DETECTION AND CORRECTION OF CHANGES IN EXTERIOR AND INTERIOR ORIENTATIONS WHILE ESTIMATING 3-D OBJECT DEFORMATIONS FROM MULTIPLE IMAGES WITH WEAK OR STRONG IMAGING GEOMETRY
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DETECTION AND CORRECTION OF CHANGES IN EXTERIOR AND INTERIOR ORIENTATIONS WHILE ESTIMATING 3-D OBJECT DEFORMATIONS FROM MULTIPLE IMAGES WITH WEAK OR STRONG IMAGING GEOMETRY

机译:检测和校正外部和内部方向的变化,同时从具有弱或强成像几何形状的多个图像估计3-D对象变形

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The paper deals with estimation of 3-D object deformation from multiple images initially in fixed positions with weak or strong imaging geometry. A new method is proposed to detect automatically if the exterior or interior orientations (rotations, translations, focal length, principal point) of one or several images have changed and which image or images contain the error, when the object deforms at the same time. The method is based on comparing novel feature vectors computed for each image from changes in the image coordinates of the object points and from residuals derived from the collinearity equations. Bundle adjustment is performed to simultaneously estimate the deformation of the object and to correct the changed orientations of the images. The rigidity needed in the weak case is obtained by approximating the deformation by a novel shape function containing parameters the values of which are estimated during adjustment. Test results with synthetic data show that even rather small changes in one orientation parameter of one image can be detected with high confidence. Weak imaging geometry allows to detect smaller changes than the strong one. The closer an initial approximation of deformation is available, the higher is the probability of correct detection. Subsequent correction of changed orientations and estimation of deformation may provide a high accuracy of 1:140000 of the object dimensions for both weak and strong imaging geometries, when the noise level in the image measurements is 0.1 pixel. Experiments with real data illustrate the good performance of the methods.
机译:本文讨论了最初在具有弱或强成像几何形状的固定位置的多个图像的3-D对象变形。如果一个或多个图像的外部或内部取向(旋转,转换,焦距,主点)发生变化,并且当物体同时变形时,将自动检测(旋转,翻译,焦距,主点)自动检测。该方法基于从对象点的图像坐标的变化以及来自来自共线性方程的群体的图像坐标的改变来进行比较的新颖特征向量。执行捆绑调整以同时估计对象的变形并校正图像的改变方向。通过近似于包含参数的新颖形状函数来获得弱箱中所需的刚度,其值在调整期间估计。具有合成数据的测试结果表明,即使是一个图像的一个方向参数的变化也可以以高信任检测。弱成像几何形状允许检测比强度更小的变化。变形的初始近似越近,正确检测的概率越高。当图像测量中的噪声水平为0.1像素时,随后的改变方向和变形估计的校正可以提供弱和强成像几何形状的对象尺寸的1:140000的高精度。实验实验说明了方法的良好性能。

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