Establishment and Test Effect of Artificial Intelligence Optimization Model Based on Convolutional Neural Network

IF 0.7 Q2 MATHEMATICS Muenster Journal of Mathematics Pub Date : 2023-05-19 DOI:10.1155/2023/4216012
Chunrong Zhou, Zhenghong Jiang
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Abstract

Convolutional neural networks (CNNs) are often used in tasks involving vision processing, and unclear images can hinder the performance of convolutional neural networks and increase its computational time. Furthermore, artificial intelligence (AI) and machine learning (ML) are related technologies, which are considered a branch of computer science, which are used to simulate and enhance human intelligence. In e-healthcare, AI and ML can be used to optimize the workflow, automatically process large amounts of medical data, and provide effective medical decision support. In this paper, the authors take several mainstream artificial intelligence models currently open on the market for reference. In this paper, the optimized model (AL-CNN) is tested for noise image recognition, and the AL-CNN model is established by using activation functions, matrix operations, and feature recognition methods, and the noisy images are processed after custom configuration. Not only does this model require no prior preparation when processing images, but it also improves the accuracy of dealing with noise in convolutional neural networks. In the AL-CNN in this paper, the architecture of the convolutional neural network includes a noise layer and a layer that can be automatically resized. After the comparison of the recognition experiments, the accuracy rate of AL-CNN is 20% higher than that of MatConvNet-moderate, and the accuracy rate is 40% higher than that of MatConvNet-chronic. In the second set of experiments, the accuracy exceeds MXNet and TensorFlow by 50% and 70%, respectively. In addition, the authors optimized the convolutional layer, pooling layer, and loss function of AL-CNN in different parameters, which improved the stability of noise processing, respectively. After customizing the two configuration optimizations, the authors found that the second optimized AL-CNN has higher recognition accuracy, and after the optimization test, the error rate can be continuously decreased as the number of recognition increases in a very short number of times.
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基于卷积神经网络的人工智能优化模型的建立及测试效果
卷积神经网络(cnn)经常用于涉及视觉处理的任务中,不清晰的图像会影响卷积神经网络的性能并增加其计算时间。此外,人工智能(AI)和机器学习(ML)是相关的技术,被认为是计算机科学的一个分支,用于模拟和增强人类智能。在电子医疗保健中,AI和ML可用于优化工作流程,自动处理大量医疗数据,并提供有效的医疗决策支持。在本文中,作者参考了目前市场上开放的几种主流人工智能模型。本文对优化后的模型(AL-CNN)进行了噪声图像识别测试,并利用激活函数、矩阵运算和特征识别等方法建立了AL-CNN模型,对噪声图像进行自定义配置后处理。该模型不仅在处理图像时不需要事先准备,而且提高了卷积神经网络处理噪声的精度。在本文的AL-CNN中,卷积神经网络的结构包括一个噪声层和一个可以自动调整大小的层。经过识别实验对比,AL-CNN的准确率比MatConvNet-moderate高20%,比MatConvNet-chronic高40%。在第二组实验中,准确率分别超过MXNet和TensorFlow的50%和70%。此外,作者在不同参数下对AL-CNN的卷积层、池化层和损失函数进行了优化,分别提高了噪声处理的稳定性。自定义两种配置优化后,作者发现,第二种优化后的AL-CNN具有更高的识别精度,并且经过优化测试,在很短的次数内,随着识别次数的增加,错误率可以不断降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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