RepConv: A novel architecture for image scene classification on Intel scenes dataset

Soudy, Mohamed; Afify, Yasmine M.; Badr, Nagwa;

Abstract


Image understanding and scene classification are keystone tasks in computer vision. The
advancement of technology and the abundance of available datasets in the field of image
classification and recognition study provide plenty of attempts for advancement. In the scene
classification problem, transfer learning is commonly utilized as a branch of machine learning.
Despite existing machine learning models' superior performance in image interpretation and scene
classification, there are still challenges to overcome. The weights and current models aren't suitable
in most circumstances. Instead of using the weights of data-dependent models, in this work, a novel
machine learning model for the scene classification task is provided that converges rapidly. The
proposed model has been tested on the Intel scenes dataset for a comprehensive evaluation of our
model. The proposed model RepConv over-performed four existing benchmark models in a low
number of epochs and training parameters, and it achieved 93.55 ± 0.11, 75.54 ± 0.14 accuracies for
training and validation data respectively. Furthermore, re-categorization of the data set is performed
for a new classification problem that is not previously reported in the literature (natural scenes; real
scenes). The accuracy of the proposed model on the binary model was 98.08 ± 0.05 on training data
and 92.70 ± 0.08 on validation data which is not reported previously in any other publication.


Other data

Title RepConv: A novel architecture for image scene classification on Intel scenes dataset
Authors Soudy, Mohamed; Afify, Yasmine M. ; Badr, Nagwa 
Keywords Image scene classification;Intel scene classification;Machine learning;Deep learning
Issue Date 1-May-2022
Journal International Journal of Intelligent Computing and Information Sciences 
Volume 22
Issue 2
Start page 63
End page 73
ISSN 2535-1710
DOI 10.21608/ijicis.2022.118834.1163

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