One-dimensional signal denoising and enhancement method based on nonlocal similarity
A non-local similarity, denoising enhancement technology, applied in special data processing applications, complex mathematical operations, instruments, etc., can solve problems such as difficult to determine the number of hidden layer nodes in the network, and there is no better solution
- Summary
- Abstract
- Description
- Claims
- Application Information
AI Technical Summary
Problems solved by technology
Method used
Image
Examples
Embodiment Construction
[0060] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.
[0061] The present invention is a one-dimensional signal denoising enhancement method based on non-local similarity, which is specifically implemented according to the following steps:
[0062] Step 1: Denoise the observed signal f to obtain a denoised signal
[0063] Suppose the observed signal f=[f(1),f(2),…,f(k),…,f(N)]
[0064] Among them, f(k)=s(k)+n(k)k=0,1,2,...,N-1
[0065] f(k) is the observed signal, s(k) is the original signal, v(k) is the noise signal, k is the time, 1≤k≤N, and N is the signal length.
[0066] Select an existing denoising method, such as mean filtering, median filtering, Gaussian filtering, wavelet denoising, principal component analysis denoising, sparse representation denoising, etc., and perform denoising processing to obtain a denoising signal Take the wavelet threshold denoising method as an example to ...
PUM
Login to View More Abstract
Description
Claims
Application Information
Login to View More 


