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An Adaptive Artificial Immune Network for Supervised Classification of Multi-/Hyperspectral Remote Sensing Imagery

机译:用于多/高光谱遥感影像监督分类的自适应人工免疫网络

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The artificial immune network (AIN), a computational intelligence model based on artificial immune systems inspired by the vertebrate immune system, has been widely utilized for pattern recognition and data analysis. However, due to the inherent complexity of current AIN models, their application to multi-/hyperspectral remote sensing image classification has been severely restricted. This paper presents a novel supervised AIN—namely, the artificial antibody network (ABNet), based on immune network theory—aimed at performing multi-/hyperspectral image classification. To construct the ABNet, the artificial antibody population (AB) model was utilized. AB is the set of antibodies where each antibody $(ab)$ has two attributes—its center vector and recognizing radius—thus each $ab$ can recognize all antigens within its recognizing radius. In contrast to the traditional AIN model, ABNet can adaptively obtain these two parameters by evolving the antigens without relying on user-defined parameters in the training step. During the process of training, to enlarge the recognizing range, the immune operators (such as clone, mutation, and selection) were used to enhance the AB model to find better antibody in the feature space, which may recognize as much antigen as possible. After the training process, the trained ABNet was utilized to classify the remote sensing image, exhibiting superior learning abilities. Three experiments with different types of images were performed to evaluate the performance of the proposed algorithm in comparison to other supervised classification algorithms: minimum distance, Gaussian maximum likelihood, back-propagation neural network, and our previously developed artificial immune classifiers—resource-limited classification of remote sensing image and multiple-valued immune netw-nrk classifier. The experimental results demonstrate that ABNet has remarkable recognizing accuracy and ability to provide effective classification for multi-/hyperspectral remote sensing imagery, superior to other methods.
机译:人工免疫网络(AIN)是一种基于脊椎动物免疫系统启发的基于人工免疫系统的计算智能模型,已被广泛用于模式识别和数据分析。但是,由于当前AIN模型固有的复杂性,它们在多光谱/高光谱遥感图像分类中的应用受到了严格限制。本文提出了一种新型的监督性AIN,即基于免疫网络理论的人工抗体网络(ABNet),旨在进行多光谱/高光谱图像分类。为了构建ABNet,使用了人工抗体种群(AB)模型。 AB是一组抗体,其中每个抗体$(ab)$具有两个属性-中心向量和识别半径-因此每个$ ab $都可以识别其识别半径内的所有抗原。与传统的AIN模型相反,ABNet可以通过进化抗原来自适应地获得这两个参数,而无需在训练步骤中依赖用户定义的参数。在训练过程中,为了扩大识别范围,使用了免疫操作员(例如克隆,突变和选择)来增强AB模型,以便在特征空间中找到更好的抗体,从而可以识别尽可能多的抗原。在训练过程之后,训练有素的ABNet被用于对遥感图像进行分类,展现出卓越的学习能力。与其他监督分类算法相比,进行了三种不同类型图像的实验,以评估该算法的性能:最小距离,高斯最大似然,反向传播神经网络以及我们先前开发的人工免疫分类器-资源受限分类图像和多值免疫网络分类器的比较实验结果表明,与其他方法相比,ABNet具有出色的识别准确性和能够为多/高光谱遥感影像提供有效的分类。

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