Image-Registration-Based Local Noise Reduction for Noisy Video Sequences

Nan Jiang, J. Si, G. Abousleman
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引用次数: 1

Abstract

This paper presents a method for localizing noise-corrupted areas in quality degraded video frames, and for reducing the additive noise by utilizing the temporal redundancy in the video sequence. In the proposed algorithm, the local variance of each pixel is computed to obtain the spatial distribution of noise. After adaptive thresholding, region clustering, and merging, the corrupted areas of highest energy are detected. Due to the high temporal redundancy in the video sequence, the corrupted information can be compensated by overlapping the corrupted regions with the appropriate regions from adjacent video frames. The corresponding pixel locations in the adjacent frames are computed by using image registration and warping techniques. New pixel values are calculated based upon multi-frame stacking. Pixel values in the adjacent frames are weighted according to registration errors, whereas the values in the noisy frame are evaluated according to local variance. Knowing the location of the local noise enables the denoising process to be much more specific and accurate. Moreover, since only a portion of the frame is processed, as compared to standard denoising methods that operate on the entire frame, the details and features in other areas of the frame are preserved. The proposed scheme is applied to UAV video sequences, where the outstanding noise localization and reduction properties are demonstrated
基于图像配准的噪声视频序列局部降噪
本文提出了一种在质量下降的视频帧中定位噪声破坏区域的方法,并利用视频序列中的时间冗余来降低加性噪声。该算法通过计算每个像素点的局部方差来获得噪声的空间分布。通过自适应阈值分割、区域聚类和合并,检测出能量最高的损坏区域。由于视频序列的高时间冗余,可以通过将损坏区域与相邻视频帧的适当区域重叠来补偿损坏的信息。利用图像配准和扭曲技术计算相邻帧中相应像素的位置。基于多帧叠加计算新的像素值。相邻帧中的像素值根据配准误差进行加权,而噪声帧中的像素值根据局部方差进行评估。知道局部噪声的位置可以使去噪过程更加具体和准确。此外,由于仅处理帧的一部分,与对整个帧进行操作的标准去噪方法相比,保留了帧的其他区域的细节和特征。将该方法应用于无人机视频序列,结果表明该方法具有良好的噪声定位和降噪性能
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