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A Multi-Purpose Shallow Convolutional Neural Network for Chart Images (CROSBI ID 315110)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Bajić, Filip ; Orel, Ognjen ; Habijan, Marija A Multi-Purpose Shallow Convolutional Neural Network for Chart Images // Sensors, 22 (2022), 20; 7695, 27. doi: 10.3390/s22207695

Podaci o odgovornosti

Bajić, Filip ; Orel, Ognjen ; Habijan, Marija

engleski

A Multi-Purpose Shallow Convolutional Neural Network for Chart Images

Charts are often used for the graphical representation of tabular data. Due to their vast expansion in various fields, it is necessary to develop computer algorithms that can easily retrieve and process information from chart images in a helpful way. Convolutional neural networks (CNNs) have succeeded in various image processing and classification tasks. Nevertheless, the success of training neural networks in terms of result accuracy and computational requirements requires careful construction of the network layers’ and networks’ parameters. We propose a novel Shallow Convolutional Neural Network (SCNN) architecture for chart-type classification and image generation. We validate the proposed novel network by using it in three different models. The first use case is a traditional SCNN classifier where the model achieves average classification accuracy of 97.14%. The second use case consists of two previously introduced SCNN-based models in parallel, with the same configuration, shared weights, and parameters mirrored and updated in both models. The model achieves average classification accuracy of 100%. The third proposed use case consists of two distinct models, a generator and a discriminator, which are both trained simultaneously using an adversarial process. The generated chart images are plausible to the originals. Extensive experimental analysis end evaluation is provided for the classification task of seven chart classes. The results show that the proposed SCNN is a powerful tool for chart image classification and generation, comparable with Deep Convolutional Neural Networks (DCNNs) but with higher efficiency, reduced computational time, and space complexity.

chart classification ; data visualization ; convolutional neural network ; Siamese neural network ; shallow neural network ; generative adversarial network

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Podaci o izdanju

22 (20)

2022.

7695

27

objavljeno

1424-8220

10.3390/s22207695

Povezanost rada

Računarstvo

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