| Literature DB >> 35310575 |
Zixi Guan1, Raja Varma Pamba2, Bhuvaneswari Balachander3, Deepak Kumar Khare4, Nabamita Deb5, Rajasekhar Boddu6.
Abstract
This paper introduces the application and classification of an adaptive filtering algorithm in the image enhancement algorithm. And the filtering noise reduction impact is compared using MATLAB software for programming, image processing, LMS algorithm, RLS algorithm, histogram equalisation algorithm, and Wiener filtering method filtering noise reduction effect. To optimize the intelligent graphic image interaction system, the proposed nonlinear adaptive algorithm of intelligent graphic image interaction system research is based on the digital filter and adaptive filtering algorithm for simulation experiment. The experimental results of several noise index data filtering algorithms show that the fuzzy coefficient k of LMS index is 0.86, RLS index is 0.91, the histogram equalization index is 0.53, and the Wiener filtering index is 0.62. LMS index of quality index Q is 0.90, RLS index is 0.95, histogram equalization index is 0.58, Wiener filtering index is 0.65. According to the above results, comparing LMS with the RLS method and according to SNR, k, and Q values in the simulation results in the process of processing, it is found that the convergence speed of the RLS algorithm is obviously better than that of the LMS algorithm, and the stability is also good. Additionally, the differential imaging data can provide a strong reference for the clinical diagnosis and qualitative differentiation of TBP and CP, and MSCT is worthy of extensive application in the clinical diagnosis of peritonitis. The processing effect of the image with high similarity to the original image is greatly improved compared with the histogram equalization and Wiener filtering methods used in the simulation.Entities:
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Year: 2022 PMID: 35310575 PMCID: PMC8926464 DOI: 10.1155/2022/3502830
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Flowchart of adaptive algorithm.
Figure 2Block diagram of software implementation of adaptive filter.
Figure 3Time-domain diagram of input signal.
Comparison of noise reduction indexes of several filtering algorithms.
| Algorithm | LMS | RLS | Histogram equalization | Wiener filtering |
|---|---|---|---|---|
| SNR | 40.5 dB | 42.5 dB | 21.2 dB | 25.1 dB |
| Fuzzy system k | 0.86 | 0.91 | 0.53 | 0.62 |
| Quality index Q | 0.90 | 0.95 | 0.58 | 0.65 |