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Region-based image registration for remote sensing imagery

机译:基于区域的遥感影像配准

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摘要

We propose an automatic region-based registration method for remote sensing imagery. In this method, we aim to register two images by matching region properties to address possible errors caused by local feature estimators. We apply automated image segmentation to identify the regions and calculate regional Fourier descriptors and standardized regional intensity descriptors for each region. We define a joint matching cost, as a linear combination of Euclidean distances, to establish and extract correspondences between regions. The segmentation technique utilizes kernel density estimators for edge localization, followed by morphological reconstruction and the watershed transform. We evaluated the registration performance of our method on synthetic and real datasets. We measured the registration accuracy by calculating the root-mean-squared error (RMSE) between the estimated transformation and the ground truth transformation. The results obtained using the joint intensity-Fourier descriptor were compared to the results obtained using Harris, Minimum eigenvalue, Features accelerated segment test (FAST), speeded-up robust features (SURF), binary robust invariant scalable keypoints (BRISK) and KAZE keypoint descriptors. The joint intensity-Fourier descriptor yielded average RMSE of 0.446 +/- 0.359 pixels and 1.152 +/- 0.488 pixels on two satellite imagery datasets consisting of 35 image pairs in total. These results indicate the capacity of the proposed technique for high accuracy. Our method also produces a lower registration error than the compared feature-based methods.
机译:我们提出了一种基于区域的自动遥感影像配准方法。在这种方法中,我们旨在通过匹配区域属性来注册两个图像,以解决由局部特征估计器引起的可能错误。我们应用自动图像分割来识别区域,并为每个区域计算区域傅里叶描述符和标准化区域强度描述符。我们将联合匹配成本定义为欧几里得距离的线性组合,以建立和提取区域之间的对应关系。分割技术利用核密度估计器进行边缘定位,然后进行形态重建和分水岭变换。我们评估了我们的方法在合成和真实数据集上的注册性能。我们通过计算估计的变换和基本事实变换之间的均方根误差(RMSE)来测量配准精度。将使用联合强度傅立叶描述符获得的结果与使用Harris,最小特征值,特征加速线段测试(FAST),加速鲁棒特征(SURF),二进制鲁棒不变可扩展关键点(BRISK)和KAZE关键点获得的结果进行比较描述符。联合强度傅立叶描述符在总共35个图像对的两个卫星图像数据集上产生了0.446 +/- 0.359像素和1.152 +/- 0.488像素的平均RMSE。这些结果表明所提出的技术具有很高的准确性。与基于特征的方法相比,我们的方法产生的注册误差也更低。

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