REKONSTRUKCJA NIEKOMPLETNYCH OBRAZÓW ZA POMOCĄ METOD APROKSYMACJI MODELAMI NISKIEGO RZĘDU

T. Sadowski, Rafał Zdunek
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Abstract

. The paper is concerned with the task of reconstructing missing pixels in images perturbed with impulse noise in a transmission channel. Such a task can be formulated in the context of image interpolation on an irregular grid or by approximating an incomplete image by low-rank factor decomposition models. We compared four algorithms that are based on the low-rank decomposition model: SVT, SmNMF-MC , FCSA-TC and SPC-QV. The numerical experiments are carried out for various cases of incomplete images, obtained by removing random pixels or regular grid lines from test images. The best performance is obtained if nonnegativity and smoothing constraints are imposed onto the estimated low-rank factors.
. 研究了在传输信道中受脉冲噪声干扰的图像中缺失像素的重建问题。这样的任务可以在不规则网格上的图像插值或通过低秩因子分解模型近似不完整图像的背景下制定。我们比较了四种基于低秩分解模型的算法:SVT、SmNMF-MC、ffcsa - tc和SPC-QV。对各种不完全图像进行了数值实验,这些不完全图像是通过从测试图像中去除随机像素或规则网格线获得的。如果对估计的低秩因子施加非负性和平滑约束,则可以获得最佳性能。
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