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Volumetric image registration from invariant keypoints

机译:来自不变关键点的体积图像配准

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摘要

We present a method for image registration based on 3D scale- and rotation-invariant keypoints. The method extends the Scale Invariant Feature Transform (SIFT) to arbitrary dimensions by making key modifications to orientation assignment and gradient histograms. Rotation invariance is proven mathematically. Additional modifications are made to extrema detection and keypoint matching based on the demands of image registration. Our experiments suggest that the choice of neighborhood in discrete extrema detection has a strong impact on image registration accuracy. In head MR images, the brain is registered to a labeled atlas with an average Dice coefficient of 92%, outperforming registration from mutual information as well as an existing 3D SIFT implementation. In abdominal CT images, the spine is registered with an average error of 4.82 mm. Furthermore, keypoints are matched with high precision in simulated head MR images exhibiting lesions from multiple sclerosis. These results were achieved using only affine transforms, and with no change in parameters across a wide variety of medical images. This work is freely available as a cross-platform software library.
机译:我们提出了一种基于3D缩放和旋转不变关键点的图像配准方法。该方法通过对方向分配和梯度直方图进行关键修改,将尺度不变特征变换(SIFT)扩展到任意维度。旋转不变性在数学上得到了证明。根据图像配准的要求,对极端检测和关键点匹配进行了其他修改。我们的实验表明,离散极值检测中邻域的选择对图像配准精度有很大影响。在头部MR图像中,大脑被注册到带有平均Dice系数为92%的标记地图集,其性能优于通过互信息以及现有3D SIFT实现进行的注册。在腹部CT图像中,脊柱被记录,平均误差为4.82毫米。此外,关键点在显示出多发性硬化病变的模拟头部MR图像中具有很高的匹配度。仅使用仿射变换即可获得这些结果,并且在各种医学图像中参数都没有变化。这项工作可以作为跨平台软件库免费获得。

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