Comparative Analysis of CNN-Based Smart Pre-Trained Models for Object Detection on DOTA

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Keywords: Remote Sensing Images, CNN, R-CNN, Transfer Learning, Object Detection

Abstract

In this paper, we proposed comparative research on the classification of various objects in satellite images using some pre-trained models of CNN (VGG-16, Inception-V3, ResNet-50, EfficientNet-B7) and R-CNN. In this research work, we have used the DOTA dataset, which combines data from 14 classes. We have implemented above mentioned pre-trained models of CNN, and R-CNN to achieve optimal results for accuracy as well as productivity. To detect objects like ships, tennis courts, swimming pools, vehicles, and harbors from remotely accessed images. In this study, we have used a convolutional neural network (CNN) as the base model. The transfer learning mechanism is employed to speed up the results and for complex computations. We have discovered with the help of experimental analysis that R-CNN and Inception-V3 are performing best out of the five pre-trained models.

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Published
04.06.2024
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Articles

How to Cite

Hashmi, H., Kumar Dwivedi, R. ., & Kumar, A. . (2024). Comparative Analysis of CNN-Based Smart Pre-Trained Models for Object Detection on DOTA. Journal of Automation, Mobile Robotics and Intelligent Systems, 18(2), 31-45. https://doi.org/10.14313/JAMRIS/2-2024/11