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Deep Regression Neural Networks for Proportion Judgment (CROSBI ID 307621)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Miličević, Mario ; Batoš, Vedran ; Lipovac, Adriana ; Car, Željka Deep Regression Neural Networks for Proportion Judgment // Future Internet, 14 (2022), 4; 100, 16. doi: 10.3390/fi14040100

Podaci o odgovornosti

Miličević, Mario ; Batoš, Vedran ; Lipovac, Adriana ; Car, Željka

engleski

Deep Regression Neural Networks for Proportion Judgment

Deep regression models are widely employed to solve computer vision tasks, such as human age or pose estimation, crowd counting, object detection, etc. Another possible area of application, which to our knowledge has not been systematically explored so far, is proportion judgment. As a prerequisite for successful decision making, individuals often have to use proportion judgment strategies, with which they estimate the magnitude of one stimulus relative to another (larger) stimulus. This makes this estimation problem interesting for the application of machine learning techniques. In regard to this, we proposed various deep regression architectures, which we tested on three original datasets of very different origin and composition. This is a novel approach, as the assumption is that the model can learn the concept of proportion without explicitly counting individual objects. With comprehensive experiments, we have demonstrated the effectiveness of the proposed models which can predict proportions on real-life datasets more reliably than human experts, considering the coefficient of determination (>0.95) and the amount of errors (MAE < 2, RMSE < 3). If there is no significant number of errors in determining the ground truth, with an appropriate size of the learning dataset, an additional reduction of MAE to 0.14 can be achieved. The used datasets will be publicly available to serve as reference data sources in similar projects.

deep learning ; deep regression ; computer vision ; convolutional neural networks ; proportion judgment

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Podaci o izdanju

14 (4)

2022.

100

16

objavljeno

1999-5903

10.3390/fi14040100

Trošak objave rada u otvorenom pristupu

APC

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Računarstvo

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