Digital image denoising by partial differential equation based on P-M model and its fuzzy evaluation method system

Jingying Liu, Yang Hu
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引用次数: 0

Abstract

Aiming at the problems of storage, batch migration and centralized processing of visual digital images of infrared imaging products, this paper takes digital image noise reduction as the main research object and starts with the concept of image partial differential equation processing. Based on the development history, advantages, practicability and operability of digital image processing by partial differential equation, it is concluded that digital image processing technology based on P-M model method is more suitable for modern image processing, and also broadens and improves the basic algorithm of digital image processing in the past. On this basis, the image quality is evaluated by using the fuzzy comprehensive evaluation theory based on analytic hierarchy process. The results show that the optimized processing system can screen the advantages and disadvantages of visual digital images of infrared imaging products and provide technical support.
基于P-M模型的偏微分方程数字图像去噪及其模糊评价方法体系
针对红外成像产品中视觉数字图像的存储、批量迁移和集中处理等问题,本文以数字图像降噪为主要研究对象,从图像偏微分方程处理的概念入手。基于偏微分方程数字图像处理的发展历史、优势、实用性和可操作性,得出基于P-M模型方法的数字图像处理技术更适合现代图像处理的结论,并对过去数字图像处理的基本算法进行了拓宽和改进。在此基础上,采用基于层次分析法的模糊综合评价理论对图像质量进行评价。结果表明,优化后的处理系统可以筛选红外成像产品的视觉数字图像的优缺点,并提供技术支持。
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