论文标题
使用基于物理的分散模型进行高光谱脉的可区分编程
Differentiable Programming for Hyperspectral Unmixing using a Physics-based Dispersion Model
论文作者
论文摘要
高光谱脉络混合是一项重要的遥感任务,其应用程序包括材料识别和分析。特征光谱特征使许多纯材料可以从其可见的边缘光谱中识别出来,但是由于非线性和变异因素,量化它们在混合物中的存在是一项艰巨的任务。在本文中,从基于物理的方法中考虑了光谱变化,并通过可区分的编程将其纳入端到端的光谱构成算法。引入色散模型以模拟逼真的光谱变化,并提出了一种有效的拟合参数的方法。然后,该分散模型被用作分析频谱中的分析算法中的生成模型。此外,引入了使用卷积神经网络进行反向渲染的技术来预测生成模型的参数,以提高训练数据时的性能和速度。结果可以在红外线和可见的 - 北领域(VNIR)数据集上实现最新,并在未来基于物理的模型与深度良好的深度学习之间的协同作用显示出希望。
Hyperspectral unmixing is an important remote sensing task with applications including material identification and analysis. Characteristic spectral features make many pure materials identifiable from their visible-to-infrared spectra, but quantifying their presence within a mixture is a challenging task due to nonlinearities and factors of variation. In this paper, spectral variation is considered from a physics-based approach and incorporated into an end-to-end spectral unmixing algorithm via differentiable programming. The dispersion model is introduced to simulate realistic spectral variation, and an efficient method to fit the parameters is presented. Then, this dispersion model is utilized as a generative model within an analysis-by-synthesis spectral unmixing algorithm. Further, a technique for inverse rendering using a convolutional neural network to predict parameters of the generative model is introduced to enhance performance and speed when training data is available. Results achieve state-of-the-art on both infrared and visible-to-near-infrared (VNIR) datasets, and show promise for the synergy between physics-based models and deep learning in hyperspectral unmixing in the future.