视频取证中增强分析的稀疏表示超分辨率方法

N. Zamani, A. D. M. Zahamdin, S. Abdullah, M. J. Nordin
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引用次数: 8

摘要

视频取证中的增强分析是用来增强视频证物视频帧的清晰度。这些视频帧的增强版本对于协助执法机构进行调查或在法庭上作为证据非常重要。在分析中发现的最重要的问题是视频中被探测物体的增强。在许多情况下,探头似乎是在低分辨率和退化的噪音,镜头模糊和压缩伪影。通过传统的去噪和调整尺寸的方法来增强这些低质量的探针,已经被证明会进一步降低探针的质量。本文的目标是提出一种基于超分辨率的增强分析算法。因此,我们提出了一种超分辨率的单帧解决方案。为此,我们提出的方法将稀疏编码与非负矩阵分解相结合,以改善视频中探针的幻觉。采用稀疏编码学习基于局部零件的子空间,该子空间相对于过完备的补丁字典合成了更高的分辨率。我们测试了我们提出的方法,并通过增强展览视频中的探针与最先进的方法即重采样和超分辨率方法进行了比较。我们使用峰值信噪比来测量图像质量。结果表明,在增强了展览视频中的探针后,我们提出的方法优于目前最先进的方法。
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Sparse representation super-resolution method for enhancement analysis in video forensics
The enhancement analysis in video forensics is used to enhance the clarity of video frames of a video exhibit. The enhanced version of these video frames is important as to assist law enforcement agency for investigation or to be tended as evidence in court. The most significant problem observed in the analysis is the enhancement of objects under probe in video. In many cases, the probes appeared to be in low-resolution and degraded with noise, lens blur and compression artifacts. The enhancement of these low quality probes via conventional method of denoising and resizing has proven to further degrade the quality of the prober The objective of this paper is to propose an enhancement analysis algorithm based on super-resolution. Hence, we present an solution which is a single-frame solution for super-resolution. For that purpose, our proposed method incorporates sparse coding with Non-Negative Matrix Factorization in order to improve hallucination of probes in video. Sparse coding is employed in learning a localized part-based subspace which synthesizes higher resolution with respect to overcomplete patch dictionaries. We test our proposed method and compare with state-of-the-art methods namely resampling and super-resolution method, by enhancing probes in exhibit videos. We measure the image quality using peak-signal-to-noise-ratio. The result shows that our proposed method outperforms state-of the-art methods after enhancing probes in exhibit videos.
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