基于带间不变表示学习的无监督高光谱噪声估计与恢复

IF 7.5 1区 地球科学 Q1 Earth and Planetary Sciences International Journal of Applied Earth Observation and Geoinformation Pub Date : 2024-12-02 DOI:10.1016/j.jag.2024.104295
Zhaozhi Luo, Janne Heiskanen, Xinyu Wang, Yanfei Zhong, Petri Pellikka
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引用次数: 0

摘要

从不同的成像平台获取的高光谱图像不可避免地受到多种噪声的污染。然而,现有的基于监督学习的去噪方法由于合成训练数据与真实数据的差异,往往对复杂退化数据的泛化能力较差。虽然已经开发了一些无监督去噪器来学习真实数据的先验,但这些方法中的噪声假设或图像先验限制了它们的性能。本文提出了一种基于解纠缠表示学习的无监督噪声估计和恢复(UNER)框架,以在单个HSI中创建一个抗噪声的带间表示空间,即带间不变表示空间。根据噪声强度估计,真实的hsi内部分为噪声带和干净带。设计了带内和带间解纠缠重构来训练两个编码器-解码器模块学习带间不变表示。通过将噪声带转换到表示空间而不引入手工制作的先验,噪声模式从hsi中分离出来。然后将估计的噪声和干净的波段结合起来训练自监督带间信息恢复模块,从而利用频谱相关性,恢复具有高信息保真度的潜在无噪声数据。这样,UNER框架可以在没有干净数据的情况下从真实hsi中学习特定的先验,并应用于具有复杂噪声模式的各种场景。在分别代表城市、农业和林业地区的三个机载高光谱数据集上进行的降噪实验表明,所提出的UNER框架优于最先进的高光谱降噪方法。
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Unsupervised hyperspectral noise estimation and restoration via interband-invariant representation learning
Hyperspectral images (HSIs) acquired from different imaging platforms are inevitably contaminated by multiple types of noise. However, the existing supervised learning based denoising methods often show poor generalizability on data with complex degradation, due to the discrepancy between synthetic training data and real data. Although some unsupervised denoisers have been developed to learn priors on real data, the noise assumptions or image priors in these methods limit their performances. In this paper, an unsupervised noise estimation and restoration (UNER) framework is proposed based on disentangled representation learning, to create an interband representation space that is resistant to noise within a single HSI, i.e., an interband-invariant representation space. Real HSIs are categorized internally into noisy and clean bands by noise intensity estimation. Intraband and interband disentangled reconstruction are designed to train two encoder-decoder modules to learn the interband-invariant representation. Noise patterns are separated from HSIs by transforming noisy bands into the representation space without introducing hand-crafted priors. The estimated noise and clean bands are then combined to train the self-supervised interband information restoration module, thereby exploiting spectral correlation and restoring the latent noise-free data with high information fidelity. In this way, the UNER framework can learn specific priors from real HSIs without clean data and be applied to various scenarios with complicated noise patterns. Noise removal experiments conducted on three airborne hyperspectral datasets representing urban, agricultural, and forestry areas respectively demonstrate the superiority of the proposed UNER framework over the state-of-the-art hyperspectral denoising methods.
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来源期刊
CiteScore
10.20
自引率
8.00%
发文量
49
审稿时长
7.2 months
期刊介绍: The International Journal of Applied Earth Observation and Geoinformation publishes original papers that utilize earth observation data for natural resource and environmental inventory and management. These data primarily originate from remote sensing platforms, including satellites and aircraft, supplemented by surface and subsurface measurements. Addressing natural resources such as forests, agricultural land, soils, and water, as well as environmental concerns like biodiversity, land degradation, and hazards, the journal explores conceptual and data-driven approaches. It covers geoinformation themes like capturing, databasing, visualization, interpretation, data quality, and spatial uncertainty.
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