Department of Computer Science (D-INFK), ETH Zurich, 8092 Zurich, Switzerland.
J Struct Biol. 2010 Aug;171(2):163-73. doi: 10.1016/j.jsb.2010.04.012. Epub 2010 May 5.
In electron microscopy, a large field of view is commonly captured by taking several images of a sample region and then by stitching these images together. Non-linear lens distortions induced by the electromagnetic lenses of the microscope render a seamless stitching with linear transformations impossible. This problem is aggravated by large CCD cameras, as they are commonly in use nowadays. We propose a new calibration method based on ridge regression that compensates non-linear lens distortions, while ensuring that the geometry of the image is preserved. Our method estimates the distortion correction from overlapping image areas using automatically extracted correspondence points. Therefore, the estimation of the correction transform does not require any special calibration samples. We evaluate our method on simulated ground truth data as well as on real electron microscopy data. Our experiments demonstrate that the lens calibration robustly corrects large distortions with an average stitching error exceeding 10 pixels to sub-pixel accuracy within two iteration steps.
在电子显微镜中,通常通过拍摄样品区域的几张图像,然后将这些图像拼接在一起来获取大视场。显微镜的电磁透镜引起的非线性透镜变形使得无缝拼接与线性变换不可能。由于现在普遍使用大型 CCD 相机,这个问题更加严重。我们提出了一种基于脊回归的新校准方法,该方法可以补偿非线性透镜变形,同时确保图像的几何形状得以保留。我们的方法使用自动提取的对应点从重叠图像区域估计失真校正。因此,校正变换的估计不需要任何特殊的校准样本。我们在模拟的真实数据和真实的电子显微镜数据上评估了我们的方法。我们的实验表明,透镜校准可以稳健地校正大的变形,平均拼接误差超过 10 像素,在两个迭代步骤内达到亚像素精度。