Zhao Zheng, Zhou Guangyao, Wang Qixiong, Feng Jiaqi, Jiang Hongxiang, Zhang Guangyun, Zhang Yu
School of Astronautics, Beihang University, Beijing, China.
Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, China.
Front Plant Sci. 2024 Dec 23;15:1515403. doi: 10.3389/fpls.2024.1515403. eCollection 2024.
Hyperspectral image classification in remote sensing often encounters challenges due to limited annotated data. Semi-supervised learning methods present a promising solution. However, their performance is heavily influenced by the quality of pseudo labels. This limitation is particularly pronounced during the early stages of training, when the model lacks adequate prior knowledge. In this paper, we propose an Iterative Pseudo Label Generation (IPG) framework based on the Segment Anything Model (SAM) to harness structural prior information for semi-supervised hyperspectral image classification. We begin by using a small number of annotated labels as SAM point prompts to generate initial segmentation masks. Next, we introduce a spectral voting strategy that aggregates segmentation masks from multiple spectral bands into a unified mask. To ensure the reliability of pseudo labels, we design a spatial-information-consistency-driven loss function that optimizes IPG to adaptively select the most dependable pseudo labels from the unified mask. These selected pseudo labels serve as iterative point prompts for SAM. Following a suitable number of iterations, the resultant pseudo labels can be employed to enrich the training data for the classification model. Experiments conducted on the Indian Pines and Pavia University datasets demonstrate that even a simple 2D CNN based classification model trained with our generated pseudo labels significantly outperforms eight state-of-the-art hyperspectral image classification methods.
由于标注数据有限,遥感中的高光谱图像分类常常面临挑战。半监督学习方法提供了一种很有前景的解决方案。然而,它们的性能很大程度上受到伪标签质量的影响。在训练的早期阶段,当模型缺乏足够的先验知识时,这种限制尤为明显。在本文中,我们提出了一种基于分割一切模型(SAM)的迭代伪标签生成(IPG)框架,以利用结构先验信息进行半监督高光谱图像分类。我们首先使用少量标注标签作为SAM点提示来生成初始分割掩码。接下来,我们引入一种光谱投票策略,将多个光谱波段的分割掩码聚合为一个统一的掩码。为确保伪标签的可靠性,我们设计了一种空间信息一致性驱动的损失函数,该函数优化IPG以从统一掩码中自适应地选择最可靠的伪标签。这些选定的伪标签用作SAM的迭代点提示。经过适当次数的迭代后,所得的伪标签可用于丰富分类模型的训练数据。在印第安纳松树和帕维亚大学数据集上进行的实验表明,即使是使用我们生成的伪标签训练的简单基于二维卷积神经网络的分类模型,也显著优于八种先进的高光谱图像分类方法。