A Unified Super-Resolution Framework of Remote-Sensing Satellite Images Classification Based on Information Fusion of Novel Deep Convolutional Neural Network Architectures

被引:4
作者
Albarakati, Hussain Mubarak [1 ]
Rehman, Shams Ur [2 ]
Khan, Muhammad Attique [3 ]
Hamza, Ameer [4 ]
Aftab, Junaid [2 ]
Alasiry, Areej [5 ]
Marzougui, Mehrez [5 ]
Nappi, Michele [6 ]
Nam, Yunyoung [7 ]
机构
[1] Umm Al Qura Univ, Coll Comp, Comp & Network Engn Dept, Mecca 24382, Saudi Arabia
[2] NUTECH Univ, Rawalpindi 44000, Pakistan
[3] Prince Mohammad Bin Fahd Univ, Coll Comp Engn & Sci, Dept Artificial Intelligenc, Al Khobar 34754, Saudi Arabia
[4] HITEC Univ, Dept Comp Sci, Taxila 47080, Pakistan
[5] King Khalid Univ, Coll Comp Sci, Abha 61413, Saudi Arabia
[6] Univ Salerno, Dept Comp Sci, I-84084 Salerno, Italy
[7] Soonchunhyang Univ, Dept ICT Convergence, Asan 31538, South Korea
基金
新加坡国家研究基金会;
关键词
Augmentation; classification; custom deep model; features fusion; land cover; optimization; remote sensing; LAND-COVER;
D O I
10.1109/JSTARS.2024.3427392
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Land-use and land-cover (LULC) classification is an active research challenge in the area of remotely sensed satellite images due to critical applications, such as resource management and agriculture. Deep learning has recently shown a significant improvement in LULC classification using satellite images; however, complex and similar patterns of the images make the classification process more challenging. This article proposes a new information-fused framework for LULC classification from the remotely sensed imaging data. The proposed framework consists of two phases: training and testing. An augmentation process was conducted in the training phase to resolve the imbalance issue. In the next step, two novel convolutional neural network architectures are proposed based on six residual blocks named ResSAN6 and six inverted blocks named RS-IRSAN. The designed models are trained from scratch, whereas the hyperparameters are initialized using the Bayesian optimization algorithm. In the next phase, testing has been performed on the trained models. Testing set images were employed, and deep features from the self-attention layer were extracted. A novel mutual information-based serial fusion approach is proposed that combines both models' features. Also, the variation in the features is removed using median normalization. Furthermore, the feature fusion's computational time and precision rates are improved, which is further optimized using an arithmetic optimization (AO) algorithm. The best information features are selected and finally classified using a shallow wide neural network by employing AOrk. The experimental process of the proposed framework has been performed on three datasets, such as RSI-CB128, WHU-RS19, and NWPU_RESISC45, and achieved an accuracy of 95.7, 97.5, and 92.0%, respectively. Comparing the results with recent related works, the proposed framework shows improved accuracy and precision rates.
引用
收藏
页码:14421 / 14436
页数:16
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