Hyperspectral Imaging (HSI) has been extensively utilized in many real-life applications because it benefits from the detailed spectral information contained in each pixel. Notably, the complex characteristics i.e., the nonlinear relation among the captured spectral information and the corresponding object of HSI data make accurate classification challenging for traditional methods. In the last few years, Deep Learning (DL) has been substantiated as a powerful feature extractor that effectively addresses the nonlinear problems that appeared in a number of computer vision tasks. This prompts the deployment of DL for HSI classification (HSIC) which revealed good performance. This survey enlists a systematic overview of DL for HSIC and compared state-of-the-art strategies on the said topic. Primarily, we will encapsulate the main challenges of traditional machine learning for HSIC and then we will acquaint the superiority of DL to address these problems. This survey breakdown the state-of-the-art DL frameworks into spectral features, spatial features, and together spatial-spectral features to systematically analyze the achievements (future research directions as well) of these frameworks for HSIC. Moreover, we will consider the fact that DL requires a large number of labeled training examples whereas acquiring such a number for HSIC is challenging in terms of time and cost. Therefore, this survey discusses some strategies to improve the generalization performance of DL strategies which can provide some future guidelines.
翻译:超光谱成像(HSI)在许多实际应用中被广泛使用,因为它受益于每个像素所载的详细光谱信息。值得注意的是,复杂的特点,即所捕获的光谱信息之间的非线性关系和高光谱数据的相应对象,对传统方法提出了准确的分类挑战。在过去几年中,深学(DL)被证实为一种强大的特征提取器,有效地解决一些计算机愿景任务中出现的非线性问题。这促使为HSI分类(HSIC)部署DL,这显示了良好的绩效。这次调查对HSIC的DL进行了系统的概览,并比较了有关该主题的最新战略。我们首先将概括HSIC传统机器学习的主要挑战,然后我们将将DL的优势转化为解决这些问题的强大特征提取器。这项调查将最新水平的DL框架细分为光谱特征、空间特征,并将空间光谱特性一起用于系统分析这些框架的成就(前景研究方向也是良好的)。这项调查获得了HSIC的系统化研究方向,并比较了有关该主题的最新战略。我们还将从一个具有挑战性性的DL系统化的模型中,从而分析一些数据。