首页> 外文会议>Conference on image processing: Algorithms and systems VII; 20090119-20, 22; San Jose, CA(US) >Texture Preservation in De-Noising UAV Surveillance Video through Multi-Frame Sampling
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Texture Preservation in De-Noising UAV Surveillance Video through Multi-Frame Sampling

机译:通过多帧采样对无声无人机监控视频进行纹理保留

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摘要

Image de-noising is a widely-used technology in modern real-world surveillance systems. Methods can seldom do both de-noising and texture preservation very well without a direct knowledge of the noise model. Most of the neighborhood fusion-based de-noising methods tend to over-smooth the images, which causes a significant loss of detail. Recently, a new non-local means method has been developed, which is based on the similarities among the different pixels. This technique results in good preservation of the textures; however, it also causes some artifacts. In this paper, we utilize the scale-invariant feature transform (SIFT) [1] method to find the corresponding region between different images, and then reconstruct the de-noised images by a weighted sum of these corresponding regions. Both hard and soft criteria are chosen in order to minimize the artifacts. Experiments applied to real unmanned aerial vehicle thermal infrared surveillance video show that our method is superior to popular methods in the literature.
机译:图像降噪是现代现实监控系统中广泛使用的技术。在没有直接了解噪声模型的情况下,方法很少能很好地进行降噪和纹理保留。大多数基于邻域融合的降噪方法都倾向于使图像过度平滑,从而导致大量细节损失。最近,基于不同像素之间的相似性,开发了一种新的非局部均值方法。这种技术可以很好地保留纹理。但是,它也会引起一些伪像。在本文中,我们利用尺度不变特征变换(SIFT)[1]方法来找到不同图像之间的对应区域,然后通过对这些对应区域进行加权求和来重建去噪图像。硬标准和软标准都被选择以便最小化伪像。在真实的无人机热红外监视视频上进行的实验表明,我们的方法优于文献中常用的方法。

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