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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >Distortion Rectification From Static to Dynamic: A Distortion Sequence Construction Perspective
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Distortion Rectification From Static to Dynamic: A Distortion Sequence Construction Perspective

机译:从静态到动态的失真整理:失真序列施工视角

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摘要

Distortion rectification is a fundamental task in the field of computer vision and image processing. Nevertheless, previous methods have regarded distortion rectification as a static problem that learns a mapping function and corrects the distorted image to a unique state. However, this state is generally not the optimal solution, as it would result in an under-rectified or over-rectified structure. In this study, we revisit the classical distortion rectification task with a new perspective and redesign the algorithm, inspired by video processing techniques. Specifically, we regard distortion rectification as a dynamic problem that can be extended to a sequence of different distortion states: the input distorted image (t), under-rectified image (t+1), ideal-rectified image (t+2), and over-rectified image (t+3). We first estimate the residual distortion map (RDM) between the input distorted image and the coarse-rectified (t+1 or t+3) image. Here, RDM indicates the motion difference between two distorted images. Subsequently, the RDM is used to guide the refinement rectification process, aiming to convert the coarse-rectified state into the ideal-rectified state. In addition, the flexible implementation of the proposed refinement process with RDM to improve the rectification results of any method is appealing. The experimental results demonstrate that our method outperforms the state-of-the-art schemes by a significant margin, revealing approximately 40% improvement through quantitative evaluation.
机译:失真整流是计算机视觉和图像处理领域的基本任务。然而,以前的方法将失真校正视为学习映射函数并将扭曲图像校正到唯一状态的静态问题。然而,这种状态通常不是最佳解决方案,因为它将导致整流或过整的结构。在本研究中,我们通过新的视角来重新审视经典失真校正任务并重新设计算法,受到视频处理技术的启发。具体地,我们将失真整理视为动态问题,该动态问题可以扩展到不同失真状态的序列:输入失真图像(t),整流图像(t + 1),理想整流图像(t + 2),和过校正的图像(t + 3)。首先估计输入失真图像和粗校正(T + 1或T + 3)图像之间的残余失真图(RDM)。这里,RDM表示两个扭曲图像之间的运动差异。随后,RDM用于引导细化整流过程,旨在将粗校正的状态转换为理想整流状态。此外,具有RDM的拟议细化过程的灵活实现,以改善任何方法的整流结果是吸引人的。实验结果表明,我们的方法优于最先进的方案,通过定量评估显示大约40%的改善。

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