Ant Colony Optimized AmoebaNet-A Algorithm for Hyperspectral Image Classification

S. Srinivasan, K. Rajakumar
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Abstract

Hyperspectral imaging is one of the most widely used imaging techniques in numerous real-time applications. The detailed spectral information provided by hyperspectral imaging (HSI) is one of its main advantages. Each pixel has spectral information, and it can be effectively analyzed from hyperspectral images.The relationship among the high-resolution and object groups is carefully incorporated into the classification.Classifying hyperspectral images through conventional classification techniques is quite complex. Recently, deep learning techniques and their substantial potential in feature extraction have been proven in numerous research studies. Various non-linear problems are effectively solved through deep learning techniques. Conventional deep learning models based HSI classification approaches lags in performance, Thus, an efficient deep learning model, AmoebaNet-A, is presented in this research work for HSI classification. Additionally, nature inspired ant colony model is incorporated for network parameter optimization. Simulation analysis of the presented approach validates the improved performance using two data sets like the Indian Pines (IP) dataset and Italy's University of Pavia dataset (UP). Comparative analysis with existing approaches like optimized Self-organized map, EN-B4-SRO validates the higher performances of proposed model using the metrics like average accuracy, kappa coefficient and overall accuracy.
蚁群优化的AmoebaNet-A算法用于高光谱图像分类
高光谱成像是众多实时应用中应用最广泛的成像技术之一。高光谱成像(HSI)提供的详细光谱信息是其主要优势之一。每个像元都有光谱信息,可以有效地从高光谱图像中进行分析。高分辨率和目标组之间的关系被仔细地纳入分类中。通过传统的分类技术对高光谱图像进行分类是非常复杂的。近年来,深度学习技术及其在特征提取方面的巨大潜力已在众多研究中得到证实。通过深度学习技术有效地解决了各种非线性问题。传统的基于深度学习模型的HSI分类方法存在性能滞后的问题,因此,本文提出了一种高效的深度学习模型AmoebaNet-A用于HSI分类。此外,采用自然启发蚁群模型进行网络参数优化。使用两个数据集,如Indian Pines (IP)数据集和意大利Pavia大学数据集(UP),对所提出的方法进行了仿真分析,验证了改进的性能。通过与优化自组织地图、EN-B4-SRO等现有方法的对比分析,通过平均精度、kappa系数和总体精度等指标验证了所提出模型的更高性能。
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