A Survey on Neural and Non-Neural Network Based Approaches to Classify Images and Signals

N. B. Noor, Opy Das
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引用次数: 0

Abstract

The classification of signals and images using machine learning and artificial intelligence is a rapidly growing field with various applications across various industries. It is used in diverse areas of life, from medical science to security and transportation to entertainment. The ability to classify and analyze signals and images using ML and AI techniques allows for improved automation, decision-making, and predictions in many fields. This research examines the classification of signals and images using various neural and non-neural network-based algorithms. The focus is on the application of Convolutional Neural Networks (CNN) on image and signal datasets, specifically in the medical field. The classification of EEG signals is used to identify epileptic seizure disease, while food image datasets are used to classify seven different categories of food. Additionally, five pre-trained CNN models were applied to the food dataset using transfer learning techniques, with the VGG19 model achieving the highest accuracy of 94%. The classification of EEG signals using a publicly available dataset resulted in an accuracy of 98%. This study highlights the potential of machine learning in the analysis and classification of medical images and signals and the ability of CNNs to classify such data effectively.
基于神经网络和非神经网络的图像和信号分类方法综述
使用机器学习和人工智能对信号和图像进行分类是一个快速发展的领域,在各个行业都有各种应用。它被用于生活的各个领域,从医学到安全、交通到娱乐。使用ML和AI技术对信号和图像进行分类和分析的能力可以提高许多领域的自动化,决策和预测。本研究探讨了使用各种基于神经和非神经网络的算法对信号和图像进行分类。重点是卷积神经网络(CNN)在图像和信号数据集上的应用,特别是在医疗领域。脑电信号的分类用于识别癫痫发作疾病,而食物图像数据集用于对七种不同类别的食物进行分类。此外,使用迁移学习技术将5个预训练的CNN模型应用于食品数据集,其中VGG19模型达到了94%的最高准确率。使用公开可用的数据集对EEG信号进行分类,准确率达到98%。这项研究突出了机器学习在医学图像和信号分析和分类方面的潜力,以及cnn有效分类此类数据的能力。
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