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An automatic satellite image registration technique based on Harris corner detection and Random Sample Consensus (RANSAC) outlier rejection model

机译:基于哈里斯角点检测和随机样本共识(RANSAC)离群值拒绝模型的自动卫星图像配准技术

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Automatic satellite image registration is a challenging task of overlaying two images for geometric conformity aligning common features by establishing a transformation model using distinguishable feature points collected simultaneously in both the images in a completely un assisted manner. Remote sensed images capture terrain features in a natural condition subjected to seasonal changes, sun illumination conditions, and cloud presence. The critical steps in image registration are collection of feature points and estimating a spatial transformation especially when outliers are present besides feature matching and resampling the slave image to the master image geometry. In this paper, the details and merit of employing automatic Harris corner detection and building a transformation model using Random Sample Consensus (RANSAC) algorithm is brought out while registering a pair of LISS-3 or AWIFS images from Indian Remote Sensing Satellite (IRS) platform. Potential available with this approach for performing large scale image registration tasks such as time series processing are highlighted.
机译:自动卫星图像配准是一项具有挑战性的任务,即通过使用完全无辅助方式同时在两幅图像中收集的可区分特征点建立转换模型来重叠两幅图像以进行几何整合以对齐共同特征。遥感图像捕获了受季节变化,日照条件和云层影响的自然条件下的地形特征。图像配准中的关键步骤是特征点的收集和估计空间变换,尤其是当存在离群值时,除了特征匹配并将从图像重新采样到主图像几何形状外。本文介绍了在从印度遥感卫星(IRS)平台注册一对LISS-3或AWIFS图像的同时,采用自动哈里斯角点检测并使用随机样本共识(RANSAC)算法构建转换模型的细节和优点。 。突出显示了这种方法可用于执行大规模图像配准任务(例如时间序列处理)的潜力。

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