首页> 外文会议>Proceedings of the conference on Visualization '04 >Vector Wavelet Thresholding for Vector Field Denoising
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Vector Wavelet Thresholding for Vector Field Denoising

机译:矢量场去噪的矢量小波阈值

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Noise reduction is an important preprocessing step for many visualization techniques that make use of feature extraction. We propose a method for denoising 2-D vector fields that are corrupted by additive noise. The method is based on the vector wavelet transform and wavelet coefficient thresholding. We compare our wavelet-based denoising method with Gaussian filtering, and test the effect of these methods on the signal-to-noise ratio (SNR) of the vector fields before and after denoising. We also study the effect on relevant details for visualization, such as vortex measures. The results show that for low SNR, Gaussian filtering with large kernels has a somewhat higher performance than the wavelet-based method in terms of SNR. For larger SNR, the wavelet-based method outperforms Gaussian filtering. This is mostly due to the fact that Gaussian filtering tends to remove small details, which are preserved by the wavelet-based method.
机译:对于使用特征提取的许多可视化技术,降噪是重要的预处理步骤。我们提出了一种对由附加噪声破坏的二维矢量场进行消噪的方法。该方法基于矢量小波变换和小波系数阈值。我们将基于小波的去噪方法与高斯滤波进行了比较,并测试了这些方法对去噪前后矢量场的信噪比(SNR)的影响。我们还研究了相关细节的可视化效果,例如涡旋测量。结果表明,对于低SNR,在SNR方面,具有大内核的高斯滤波比基于小波的方法具有更高的性能。对于较大的SNR,基于小波的方法优于高斯滤波。这主要是由于以下事实:高斯滤波趋向于删除小的细节,而这些细节被基于小波的方法保留了下来。

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