Indoor/Outdoor Deep Learning Based Image Classification for Object Recognition Applications

Main Article Content

Omar Abdullatif Jassim
https://orcid.org/0009-0004-1607-2778
Mohammed Jawad Abed
Zenah Hadi Saied

Abstract

With the rapid development of smart devices, people's lives have become easier, especially for visually disabled or special-needs people. The new achievements in the fields of machine learning and deep learning let people identify and recognise the surrounding environment. In this study, the efficiency and high performance of deep learning architecture are used to build an image classification system in both indoor and outdoor environments. The proposed methodology starts with collecting two datasets (indoor and outdoor) from different separate datasets. In the second step, the collected dataset is split into training, validation, and test sets. The pre-trained GoogleNet and MobileNet-V2 models are trained using the indoor and outdoor sets, resulting in four trained models. The test sets are used to evaluate the trained models using many evaluation metrics (accuracy, TPR, FNR, PPR, FDR). Results of Google Net model indicate the high performance of the designed models with 99.34% and 99.76% accuracies for indoor and outdoor datasets, respectively. For Mobile Net models, the result accuracies are 99.27% and 99.68% for indoor and outdoor sets, respectively. The proposed methodology is compared with similar ones in the field of object recognition and image classification, and the comparative study proves the transcendence of the propsed system.

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1.
Indoor/Outdoor Deep Learning Based Image Classification for Object Recognition Applications. Baghdad Sci.J [Internet]. 2023 Dec. 5 [cited 2024 Apr. 27];20(6(Suppl.):2540. Available from: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/8177
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article

How to Cite

1.
Indoor/Outdoor Deep Learning Based Image Classification for Object Recognition Applications. Baghdad Sci.J [Internet]. 2023 Dec. 5 [cited 2024 Apr. 27];20(6(Suppl.):2540. Available from: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/8177

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