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Super-resolution reconstruction of real infrared images acquired with unmanned aerial vehicle

机译:用无人空中车辆获取的真正红外图像的超分辨率重建

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Super-resolution (SR) technology provides a far promising computational imaging approach in obtaining a high-resolution (HR) image (or image sequences) from observed multiple low-resolution (LR) images by incorporating complementary information. In this paper, a three-stage SR method is proposed to generate a HR image from infrared (IR) LR Images acquired with Unmanned Aerial Vehicle (UAV). The proposed method integrates a high-level image capturing process and a low-level SR process. In this integrated process, we incorporate UAV path optimization, sub-pixel image registration, and sparseness constraint into a computational imaging framework of a region of interest (ROI). To refine ROI complementary feathers, we design an optimal flight control scheme to acquire adequate image sequences from multi-angles. In particular, a phase correlation approach achieving reliable sub-pixel image feature matching is adapted, on the basis of which an effective sparseness regularization model is built to enhance the fine structures of the IR image. Unlike most traditional multiple-frame SR algorithms that mainly focus on signal processing and achieve good performances when using standard test datasets, the performed experiments with real-life IR sequences indicate the three-stage SR method can also deal with practical LR IR image sequences collected by UAVs. The experimental results demonstrate that the proposed method is capable of generating HR images with good performance in terms of edge preservation and detail enhancement.
机译:超分辨率(SR)技术通过结合互补信息,提供来自从观察到的多个低分辨率(LR)图像的高分辨率(HR)图像(或图像序列)提供了远见的计算成像方法。在本文中,提出了一种三阶段SR方法,用于从用无人机(UAV)获取的红外(IR)LR图像的HR图像。该方法集成了高级图像捕获过程和低级SR过程。在该集成过程中,我们将UAV路径优化,子像素图像配准和稀疏约束纳入感兴趣区域(ROI)的计算成像框架中。为了改进ROI互补羽毛,我们设计了最佳的飞行控制方案,以从多角度获取足够的图像序列。特别地,基于该实现有效的稀疏性正则化模型来调整实现可靠的子像素图像特征匹配的相位相关方法以增强IR图像的精细结构。与主要专注于信号处理的最传统的多帧SR算法并在使用标准测试数据集时实现良好的性能,所执行的实际IR序列的实验表明,三阶段SR方法也可以处理收集的实用LR IR图像序列通过无人机。实验结果表明,所提出的方法能够在边缘保存和细节增强方面产生具有良好性能的HR图像。

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