基于误差伪影识别的超分辨率运动估计

Ana Stojkovic, Z. Ivanovski
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引用次数: 0

摘要

提出了一种有效的超分辨率亚像素运动估计方法。目标是通过增加SR程序中使用的运动矢量的精度来提高估计SR图像的质量。运动矢量的校正是基于SR图像中由于配准错误而引入的误差伪影的出现。首先,利用全搜索块匹配算法(FS-BMA)获得的全像素精度运动向量进行SR。然后,将基于机器学习的方法应用于生成的图像,以检测和分类由于运动矢量的亚像素分量缺失而引入的伪影。分类的结果是运动向量的亚像素分量。在最后一步,使用修正的(亚像素精度)运动矢量重复SR过程。
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Motion estimation for Super-resolution based on recognition of error artifacts
The work presents an effective approach for subpixel motion estimation for Super-resolution (SR). The objective is to improve the quality of the estimated SR image by increasing the accuracy of the motion vectors used in the SR procedure. The correction of the motion vectors is based on appearance of error artifacts in the SR image, introduced due to registration errors. First, SR is performed using full pixel accuracy motion vectors obtained using full search block matching algorithm (FS-BMA). Then, machine learning based method is applied on the resulting images in order to detect and classify artifacts introduced due to missing subpixel components of the motion vectors. The outcome of the classification is a subpixel component of the motion vector. In the final step, SR process is repeated using the corrected (subpixel accuracy) motion vectors.
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