动态多帧视频序列图像的局部特征滤波方法

Dawei Zhang, D. Huang
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引用次数: 0

摘要

为了提高动态多帧视频序列图像的局部特征滤波质量,本研究旨在基于噪声构造去噪算法和像素点灰度直方图设计改进的非纹理类噪声滤波算法,然后设计基于纹理平滑处理和圆形梯度值的纹理噪声去噪算法。将这两种算法结合起来,提出了一种针对水平动态视频图像的综合滤波和去噪算法。实验测试结果表明,综合滤波去噪算法在训练效果收敛后的归一化相关系数、互信息量、峰值信噪比和信息熵分别为0.950、0.935、0.816和0.933,显著高于常用的中值去噪算法和卡尔曼去噪算法。然而,所提出的综合滤波去噪算法的计算时间要高于对比算法。实验结果表明,本研究设计的动态视频图像综合滤波算法在对处理结果时效性要求较低的应用场景下,能够取得较好的滤波和图像重建效果。
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Local Feature Filtering Method for Dynamic Multiframe Video Sequence Images
To improve the quality of local feature filtering for dynamic multiframe video sequence images, this study is aimed at designing an improved nontexture class noise filtering algorithm based on noise construction denoising algorithm and gray histogram of pixel points, and then designs a texture noise denoising algorithm based on texture smoothing processing and circular gradient values. The two algorithms are combined to propose a comprehensive filtering and denoising algorithm for horizontal dynamic video images. The experimental test results show that the normalized correlation coefficient, mutual information quantity, peak signal-to-noise ratio, and information entropy of the integrated filter denoising algorithm are 0.950, 0.935, 0.816, and 0.933 after convergence of the training effect, which are significantly higher than those of the commonly used median denoising algorithm and Kalman denoising algorithm. However, the computational time consumption of the proposed integrated filtering and denoising algorithm is higher than that of the comparison algorithms. The experimental results show that the integrated filtering algorithm for dynamic video images designed in this study can achieve better filtering and image reconstruction results in application scenarios with lower requirements for the timeliness of processing results.
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