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2D Finite Rate of Innovation Reconstruction Method for Step Edge and Polygon Signals in the Presence of Noise

机译:噪声存在下阶跃边缘和多边形信号的二维有限创新率重构方法

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摘要

The finite rate of innovation (FRI) principle is developed for sampling a class of non-bandlimited signals that have a finite number of degrees of freedom per unit of time, i.e., signals with FRI. This sampling scheme is later extended to three classes of sampling kernels with compact support and applied to the step edge reconstruction problem by treating the image row by row. In this paper, we regard step edges as 2D FRI signals and reconstruct them block by block. The step edge parameters are obtained from the 2D moments of a given image block. Experimentally, our technique can reconstruct the edge more precisely and track the Cramér–Rao bounds (CRBs) closely with a signal-to-noise ratio (SNR) larger than 4 dB on synthetic step edge images. Experiments on real images show that our proposed method can reconstruct the step edges under practical conditions, i.e., in the presence of various types of noise and using a real sampling kernel. The results on locating the corners of data matrix barcodes using our method also outperform some state-of-the-art barcode decoders.
机译:开发了有限创新率(FRI)原理,用于对一类非带限信号进行采样,这些信号在单位时间内具有有限的自由度,即具有FRI的信号。此采样方案后来扩展到具有紧凑支持的三类采样内核,并通过逐行处理图像而应用于步边缘重建问题。在本文中,我们将阶跃边缘视为2D FRI信号,并逐块进行重构。阶跃边缘参数是从给定图像块的2D矩获得的。在实验上,我们的技术可以更精确地重建边缘,并在合成阶跃边缘图像上以大于4 dB的信噪比(SNR)紧密跟踪Cramér-Rao边界(CRB)。在真实图像上的实验表明,我们提出的方法可以在实际条件下,即在存在各种类型的噪声并使用真实采样核的情况下,重建阶梯边缘。使用我们的方法定位数据矩阵条形码的角点的结果也优于某些最新的条形码解码器。

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