With the rapid development of deep learning technology and improvement in computing capability, deep learning has been widely used in the field of hyperspectral image (HSI) classification. In general, deep learning models often contain many trainable parameters and require a massive number of labeled samples to achieve optimal performance. However, in regard to HSI classification, a large number of labeled samples is generally difficult to acquire due to the difficulty and time-consuming nature of manual labeling. Therefore, many research works focus on building a deep learning model for HSI classification with few labeled samples. In this article, we concentrate on this topic and provide a systematic review of the relevant literature. Specifically, the contributions of this paper are twofold. First, the research progress of related methods is categorized according to the learning paradigm, including transfer learning, active learning and few-shot learning. Second, a number of experiments with various state-of-the-art approaches has been carried out, and the results are summarized to reveal the potential research directions. More importantly, it is notable that although there is a vast gap between deep learning models (that usually need sufficient labeled samples) and the HSI scenario with few labeled samples, the issues of small-sample sets can be well characterized by fusion of deep learning methods and related techniques, such as transfer learning and a lightweight model. For reproducibility, the source codes of the methods assessed in the paper can be found at https://github.com/ShuGuoJ/HSI-Classification.git.
翻译:随着深层学习技术的迅速发展和计算能力的改进,深层学习被广泛用于超光谱图像(HSI)分类领域,一般而言,深层学习模式往往包含许多可训练的参数,需要大量贴标签的样本才能达到最佳性能,然而,在高光谱分类方面,由于手工标签的难度和耗时性质,大量贴标签的样本通常难以获得,因此,许多研究工作的重点是为高光谱图像(HSI)分类建立深厚的学习模式,只有很少的标签样本,对相关文献进行系统审查。具体地说,本文的贡献是双重的。首先,相关方法的研究进展根据学习模式分类,包括转移学习、积极学习和几张短镜头学习。第二,利用各种最先进的方法进行了大量试验,并总结结果,以揭示潜在的研究方向。更重要的是,尽管深光深学习模型(通常需要足够的标签样本)与高光度的HSI设想情景之间存在巨大差距,在很少的标签/高光度样本中,因此,在低光度的深度学习方法中,以光度/光度的样本和光度方法进行。