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Using an Improved PSO-SVM Model to Recognize and Classify the Image Signals

机译:使用改进的PSO-SVM模型来识别和分类图像信号

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摘要

Image recognition is an important field of artificial intelligence. Its basic idea is to use computers to automatically classify different scenes in the acquired images, instead of traditional manual classification tasks. In this paper, through the analysis of rough set theory and artificial intelligence network, as well as the role of the two in image recognition, the rough set theory and artificial intelligence network are organically combined, and a network based on rough set theory and artificial intelligence network is proposed. Using BP artificial intelligence network model, improved BP artificial intelligence network model, and improved PSO-SVM model to identify and classify the extracted characteristic signals and compare the results, all reached 85% correct rate. The PCA and SVM are combined and applied to the MNIST handwritten digit collection for recognition and classification. At the data level, dimensionality reduction is performed on high-dimensional image data to compress the data. This greatly improves the performance of the algorithm, the recognition accuracy rate is as high as 98%, and the running time is shortened by about 90%. The model first preprocesses the original image data and then uses rough set theory to select features, which reduces the input dimension of the artificial intelligence network, improves the learning and recognition speed of the artificial intelligence network, and further improves the accuracy of recognition. The paper applies the model to handwritten digital image recognition, and the experimental results show that the model is effective and feasible. The system has the characteristics of easy deployment and easy maintenance and integration. Experiments show that the system has good time characteristics in the process of multialgorithm parallel image fusion processing.
机译:图像识别是人工智能的重要领域。其基本思想是使用计算机自动对所获取的图像中的不同场景进行分类,而不是传统的手动分类任务。本文通过分析粗糙集理论和人工智能网络,以及两者在图像识别中的作用,粗糙集理论和人工智能网络是有机组合的,基于粗糙集理论和人工网络的网络智能网络是提出的。使用BP人工智能网络模型,改进的BP人工智能网络模型,改进了PSO-SVM模型来识别和分类提取的特征信号并比较结果,所有达到85%的正确速率。组合PCA和SVM并应用于MNIST手写的数字集合,以进行识别和分类。在数据级别,对高维图像数据执行维数减少以压缩数据。这大大提高了算法的性能,识别精度率高达98%,运行时间缩短约90%。该模型首先预处理原始图像数据,然后使用粗糙集理论来选择特征,从而降低人工智能网络的输入维度,提高了人工智能网络的学习和识别速度,并进一步提高了识别的准确性。本文将模型应用于手写数字图像识别,实验结果表明该模型是有效可行的。该系统具有轻松部署的特点和易于维护和集成。实验表明,该系统在多级天然图像融合处理过程中具有良好的时光特性。

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