Graphical User Interface for the Development of Probabilistic Convolutional Neural Networks

Signals Pub Date : 2023-04-20 DOI:10.3390/signals4020016
Aníbal Chaves, Fábio Mendonça, Sheikh Shanawaz Mostafa, F. Morgado‐Dias
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Abstract

Through the development of artificial intelligence, some capabilities of human beings have been replicated in computers. Among the developed models, convolutional neural networks stand out considerably because they make it possible for systems to have the inherent capabilities of humans, such as pattern recognition in images and signals. However, conventional methods are based on deterministic models, which cannot express the epistemic uncertainty of their predictions. The alternative consists of probabilistic models, although these are considerably more difficult to develop. To address the problems related to the development of probabilistic networks and the choice of network architecture, this article proposes the development of an application that allows the user to choose the desired architecture with the trained model for the given data. This application, named “Graphical User Interface for Probabilistic Neural Networks”, allows the user to develop or to use a standard convolutional neural network for the provided data, with networks already adapted to implement a probabilistic model. Contrary to the existing models for generic use, which are deterministic and already pre-trained on databases to be used in transfer learning, the approach followed in this work creates the network layer by layer, with training performed on the provided data, originating a specific model for the data in question.
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概率卷积神经网络开发的图形用户界面
通过人工智能的发展,人类的一些能力已经在计算机中复制。在已开发的模型中,卷积神经网络非常突出,因为它们使系统有可能具有人类的固有能力,例如图像和信号中的模式识别。然而,传统的方法是基于确定性模型的,无法表达其预测的认知不确定性。备选方案包括概率模型,尽管这些模型的开发难度要大得多。为了解决与概率网络的开发和网络架构的选择相关的问题,本文提出了一种应用程序的开发,该应用程序允许用户使用给定数据的训练模型来选择所需的架构。该应用程序名为“概率神经网络的图形用户界面”,允许用户为所提供的数据开发或使用标准卷积神经网络,其中网络已经适用于实现概率模型。现有的通用模型是确定性的,并且已经在迁移学习中使用的数据库上进行了预训练,与此相反,本工作中采用的方法逐层创建网络,对所提供的数据进行训练,为所讨论的数据创建特定的模型。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊最新文献
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