A Comparative Study of Artificial Intelligence Algorithms Used for an Accurate Image Geometric Dimensions Recognition

Mahmoud Mohamed Hamoud Kaid, Muawia Mohamed Ahmed Mahmoud
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Abstract

The process of distinguishing objects in digital images and recognizing them is a basic process in AI, in order to distinguish the object and determine its features. It has many uses in various engineering and medical fields. There is a great difficulty in recognizing digital images and distinguishing objects in them. This paper discusses some basic artificial intelligence techniques based on the geometric dimensions of the object in the image in order to recognize these objects and distinguish them from the background of the image. Where there is great difficulty in separating the object from its background, this paper presents the most accurate methods of programmatic application using Matlab environment to identify components in the image, its distinction, and its characteristics. The paper provides a comparison between these AI methods and chooses the most accurate one. AI recognition methods use various algorithms including algorithms based on color density and algorithms that depend on geometric dimensions such as Hue moment algorithms, Haralik features algorithms, and Zernike moment algorithms. In this paper these algorithms were applied to a group of images to extract the features of the object and the best one will be chosen with the aid of Matlab. The most accurate recognition process is chosen through building a digital library that contains many pictures and training the program on these images to recognize and distinguish the object in the image.
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用于精确图像几何尺寸识别的人工智能算法的比较研究
对数字图像中的物体进行区分和识别的过程是人工智能的一个基本过程,目的是区分物体并确定其特征。它在各种工程和医学领域有许多用途。数字图像的识别和物体的识别存在很大的困难。本文讨论了基于图像中物体几何尺寸的一些基本人工智能技术,以识别这些物体并将其与图像背景区分开来。针对目标与背景分离难度较大的问题,本文介绍了利用Matlab环境进行图像中组件识别的最准确的编程应用方法,以及它们的区别和特征。本文对这些人工智能方法进行了比较,并选择了最准确的方法。人工智能识别方法使用各种算法,包括基于颜色密度的算法和依赖几何维度的算法,如Hue矩算法、Haralik特征算法和Zernike矩算法。本文将这些算法应用于一组图像中提取目标的特征,并借助Matlab软件选择出最优的特征。通过构建包含大量图像的数字库,并在这些图像上训练程序来识别和区分图像中的物体,从而选择最准确的识别过程。
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