论文标题
非规范采样视频数据的递归频率选择性重建
Recursive Frequency Selective Reconstruction of Non-Regularly Sampled Video Data
论文作者
论文摘要
可以使用非规范采样传感器来获取高分辨率图像,该采样传感器由一个基本的低分辨率传感器组成,该传感器被非规范采样掩码覆盖。然后在后处理过程中获得重建的高分辨率图像。最近,已经表明,可以利用相邻帧之间的时间相关性,以提高非规范采样视频数据的重建质量。在本文中,提出了一种新的递归多帧重建方法,以进一步提高重建质量。通过使用新的参考顺序,可以将先前重建的帧用于随后的运动估计,并且新的加权函数允许合并投影到同一位置上的多个像素。通过新的递归多帧方法,可以实现最先进的单帧重建方法,PSNR的视觉平均增益高达1.13 dB。与现有的多帧方法相比,增益为0.31 dB。 SSIM结果显示出与PSNR结果相同的行为。此外,可以避免现有多帧方法的重建前步骤,并且通常可以实时处理新算法。
High resolution images can be acquired using a non-regular sampling sensor which consists of an underlying low resolution sensor that is covered with a non-regular sampling mask. The reconstructed high resolution image is then obtained during post-processing. Recently, it has been shown that the temporal correlation between neighboring frames can be exploited in order to enhance the reconstruction quality of non-regularly sampled video data. In this paper, a new recursive multi-frame reconstruction approach is proposed in order to further increase the reconstruction quality. By using a new reference order, previously reconstructed frames can be used for the subsequent motion estimation and a new weighting function allows for the incorporation of multiple pixels projected onto the same position. With the new recursive multi-frame approach, a visually noticeable average gain in PSNR of up to 1.13 dB with respect to a state-of-the-art single-frame reconstruction approach can be achieved. Compared to the existing multi-frame approach, a gain of 0.31 dB is possible. SSIM results show the same behavior as PSNR results. Additionally, the pre-reconstruction step of the existing multi-frame approach can be avoided and the new algorithm is, in general, capable of real-time processing.