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Fast registration of UAV aerial images based on improved optical-flow model combined with feature-point matching

机译:基于改进的光流模型结合特征点匹配的无人机航拍图像快速配准

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摘要

With a large number of registration algorithms proposed, image registration techniques have achieved rapid development. However, there still exist many deficiencies in aerial images registration where high speed and accuracy are difficult to simultaneously achieve for real-time processing. In order to achieve large-scale and high-precision image registration for unmanned aerial vehicle(UAV) aerial images, a novel and fast sub-pixel image registration algorithm based on improved optical-flow model combined with feature-point matching is proposed in this paper. Firstly, the coarse selection at the feature level is achieved by using the feature-point model, which reduces the number of non-feature points so as to speed up the coarse registration process. Then, the improved pyramid optical-flow model is adopted in the neighborhood of the coarse point, and the sub-pixel fast location is achieved by the bidirectional search strategy. Simulation experiment results show that compared with common image registration based LK optical-flow or feature-point matching, our proposed algorithm will greatly reduce space complexity and time complexity without losing accuracy.
机译:随着提出的大量配准算法,图像配准技术得到了快速发展。然而,航空图像配准中仍然存在许多缺陷,其中难以同时实现高速和高精度以进行实时处理。为了实现UAV航拍图像的大规模,高精度图像配准,提出了一种基于改进的光流模型结合特征点匹配的新颖,快速的亚像素图像配准算法。纸。首先,通过使用特征点模型在特征级别上进行粗略选择,减少了非特征点的数量,从而加快了粗注册过程。然后,在粗糙点附近采用改进的金字塔光流模型,并通过双向搜索策略实现亚像素快速定位。仿真实验结果表明,与基于普通图像配准的LK光流或特征点匹配相比,该算法在不损失精度的情况下,将大大降低空间复杂度和时间复杂度。

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