Abstract
Visualization of multispectral images through band selection methods determines an information loss that in utmost cases proves to be critical for the adequate understanding of the represented scene. The R–G–B representation obtained by mapping the visual bands to the R, G, and B channels is highly used due to its great resemblance with the natural color one and aspects perceivable by the human eye. However, despite the similarity in terms of color code, ambiguities between classes such as water and vegetation or atmospheric phenomena like fog, clouds, and smoke that have been penetrated by other bands, remain visible and hinder the process of visualization of the Earth surface. This article presents a set of five different methods to offset the effects caused by ambiguities, fog, light clouds, and smoke by transferring relevant information between bands in order to visually reconstitute those parts of the image affected by atmospheric phenomena. The general concept shared by these methods implies a stacked autoencoder that successfully encompasses the information from all spectral bands into a latent representation used for visualization. Each proposed method is defined by different combination of input and error function formula. Spectral and polar coordinates features represent the possible options for the input, while formulas based on mean squared error or angular spectral distances determine the potential choices in terms of error function definition. The property of angular spectral distance and polar coordinates transformation to obtain illuminant invariant features determined their use in three out of five methods. We evaluate the methods through spectral signature graphical comparison and visual comparison related to the R–G–B representation. We conduct experiments on multiple Sentinel 2 full images.
Highlights
Multispectral Earth Observation (EO) images are records of sunlight reflected by Earth surface made using optical sensors
Mihai Datcu is with the Research Center for Spatial Information, University Politehnica of Bucharest, 061071 Bucharest, Romania, and with the Remote Sensing Technology Institute, German Aerospace Center, 82234 Oberpfaffenhofen, Germany
He is a representative of Romanian in the ESA Earth Observation Program Board (EO-PB) (e-mail: mihai.datcu@dlr.de)
Summary
Multispectral Earth Observation (EO) images are records of sunlight reflected by Earth surface made using optical sensors. The second line represents a scene of an ongoing fire where details about surface are hidden in the R – G – B representation, but would be very useful for image analysis Taking all these aspects into consideration, we propose a set of methods to improve visual analysis through embedding all the information contained by all the spectral bands into a latent representation of three values using a SAE. These values are mapped to the R – G – B channels for visualization. Our principal objective is to improve visualization by reducing the ambiguities and obstructions generated by the lack of information in the image displayed compared to all spectral bands in the multispectral product. The following four main scenarios are considered: clear, smoky, foggy and cloudy images
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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