Utilizing a Novel Deep Learning Method for Scene Categorization in Remote Sensing Data
Ghufran A. Omran, Wassan Saad Abduljabbar Hayale, Ahmad AbdulQadir AlRababah, Israa Ibraheem Al-Barazanchi, Ravi Sekhar, Pritesh Shah, Sushma Parihar, Harshavardhan Reddy Penubadi

TL;DR
This paper introduces the CO-BRNN, a novel deep learning approach for scene categorization in remote sensing images, achieving higher accuracy than existing methods by effectively handling noisy and diverse data.
Contribution
The study presents the innovative CO-BRNN model, outperforming current techniques in remote sensing scene classification with a 97% accuracy.
Findings
CO-BRNN achieved 97% accuracy in scene classification.
Compared models include MLP-CNN, CNN-LSTM, LSTM-CRF, with CO-BRNN outperforming them.
Physical confirmation is emphasized for satellite data efficiency.
Abstract
Scene categorization (SC) in remotely acquired images is an important subject with broad consequences in different fields, including catastrophe control, ecological observation, architecture for cities, and more. Nevertheless, its several apps, reaching a high degree of accuracy in SC from distant observation data has demonstrated to be difficult. This is because traditional conventional deep learning models require large databases with high variety and high levels of noise to capture important visual features. To address these problems, this investigation file introduces an innovative technique referred to as the Cuttlefish Optimized Bidirectional Recurrent Neural Network (CO- BRNN) for type of scenes in remote sensing data. The investigation compares the execution of CO-BRNN with current techniques, including Multilayer Perceptron- Convolutional Neural Network (MLP-CNN), Convolutional…
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