A multi-attention residual integrated network with enhanced fireworks algorithm for remote sensing image classification

Josephine Anitha Antony, Gladis Dennis
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Abstract

This research examines a multi-attention residual integrated network with an enhanced fireworks algorithm for remote sensing image classification. Remote sensing (RS) picture classification is important for land cover mapping, environmental monitoring, and urban planning. Remote sensing image classification is important in earth observation since the military and commercial sectors have focused on it. Due to RS data's high complexity and limited labelled examples, classifying RS pictures is difficult. Deep Learning (DL) techniques have made great strides in RS image categorization, expanding this field's potential. This research introduces Multi-Attention Residual Integrated Network with Enhanced Fireworks Algorithm (MAR-EFA) to improve hyper spectral image identification. MARIN-EFA improves feature fusion and removes unneeded features to overcome technique constraints. The suggested method weights features using different attention models. These characteristics are then carefully extracted and integrated using a residual network. Final contextual semantic integration on deeply fused features is done with a Bi-LSTM network. Our population-based Enhanced Fireworks Algorithm (EFA) is inspired by fireworks' explosive performance and optimises MARIN parameters. Attention techniques and an improved optimisation algorithm improve performance over current systems. Numerous Eurosat dataset studies were assessed using various performance indicators. The simulation results show that MARIN-EFA outperforms current methods. The suggested technique shows promise for improving RS picture classification and allowing more accurate and reliable data categorization.
用于遥感图像分类的多注意残差集成网络与增强型烟花算法
本研究探讨了一种采用增强型烟花算法的多注意力残差集成网络,用于遥感图像分类。遥感(RS)图像分类对于土地覆被制图、环境监测和城市规划非常重要。遥感图像分类在地球观测领域非常重要,因为军事和商业部门都非常关注它。由于遥感数据的高复杂性和有限的标记示例,对遥感图片进行分类十分困难。深度学习(DL)技术在 RS 图像分类方面取得了长足进步,拓展了这一领域的潜力。本研究引入了具有增强焰火算法(MAR-EFA)的多注意残留集成网络,以改进超光谱图像识别。MARIN-EFA 改进了特征融合,删除了不需要的特征,从而克服了技术限制。建议的方法使用不同的注意力模型对特征进行加权。然后使用残差网络仔细提取和整合这些特征。最后,使用 Bi-LSTM 网络对深度融合的特征进行上下文语义整合。我们基于群体的增强焰火算法(EFA)的灵感来源于焰火的爆炸性能,并优化了 MARIN 参数。与现有系统相比,注意力技术和改进的优化算法提高了性能。使用各种性能指标对大量欧洲卫星数据集研究进行了评估。模拟结果表明,MARIN-EFA 的性能优于现有方法。所建议的技术有望改善 RS 图像分类,使数据分类更加准确可靠。
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