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HySIMU: An Open-Source Toolkit for Hyperspectral Remote Sensing Forward Modelling
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Hyperspectral remote sensing (HRS) is gaining widespread adoption within the geoscience and Earth observation communities. It fosters diverse applications, including precision agriculture, soil science, mineral exploration, and carbon detection, to name a few. Recent technological advancements facilitated a growing number of satellite missions as well as an increase in the availability of commercial sensors and platforms, such as drones. A significant challenge in deploying the varied platforms and sensors is the design and optimization of the hyperspectral surveys. Forward modelling simulators are valuable for optimizing mission parameters and estimating imaging performance. Limited accessibility of open-source simulators presents an obstacle for users who seek to benefit from such tools. To bridge this gap, HySIMU (Hyperspectral SIMUlator) was developed and described herein. It is an open-source, forward modelling toolkit that combines and integrates a primary processing pipeline with various open-source packages into a transparent and modular workflow. It offers a cost-effective approach to evaluating the performance of hyperspectral surveys. HySIMU is designed to simulate hyperspectral imagery based on user-defined targets, platforms, and sensor parameters. Features include (i) a ground truth data cube builder for customizable input parameters, (ii) a terrain-based solar and view geometry calculator for illumination modelling, (iii) integrated open-source radiative transfer models for incorporating atmospheric effects, and (iv) spatial resampling filters. In this manuscript, the initial framework for HySIMU is presented with some example applications, including two validation studies with real hyperspectral images. As remote sensing technologies advance, forward modelling toolkits such as HySIMU play a crucial role in refining mission designs and assessing survey feasibility. The scalability for arbitrary hyperspectral sensors, platforms, and spectral libraries ensures broad applicability. Of particular importance is support for parameter optimization for both scientific and commercial HRS campaigns.
Title: HySIMU: An Open-Source Toolkit for Hyperspectral Remote Sensing Forward Modelling
Description:
Hyperspectral remote sensing (HRS) is gaining widespread adoption within the geoscience and Earth observation communities.
It fosters diverse applications, including precision agriculture, soil science, mineral exploration, and carbon detection, to name a few.
Recent technological advancements facilitated a growing number of satellite missions as well as an increase in the availability of commercial sensors and platforms, such as drones.
A significant challenge in deploying the varied platforms and sensors is the design and optimization of the hyperspectral surveys.
Forward modelling simulators are valuable for optimizing mission parameters and estimating imaging performance.
Limited accessibility of open-source simulators presents an obstacle for users who seek to benefit from such tools.
To bridge this gap, HySIMU (Hyperspectral SIMUlator) was developed and described herein.
It is an open-source, forward modelling toolkit that combines and integrates a primary processing pipeline with various open-source packages into a transparent and modular workflow.
It offers a cost-effective approach to evaluating the performance of hyperspectral surveys.
HySIMU is designed to simulate hyperspectral imagery based on user-defined targets, platforms, and sensor parameters.
Features include (i) a ground truth data cube builder for customizable input parameters, (ii) a terrain-based solar and view geometry calculator for illumination modelling, (iii) integrated open-source radiative transfer models for incorporating atmospheric effects, and (iv) spatial resampling filters.
In this manuscript, the initial framework for HySIMU is presented with some example applications, including two validation studies with real hyperspectral images.
As remote sensing technologies advance, forward modelling toolkits such as HySIMU play a crucial role in refining mission designs and assessing survey feasibility.
The scalability for arbitrary hyperspectral sensors, platforms, and spectral libraries ensures broad applicability.
Of particular importance is support for parameter optimization for both scientific and commercial HRS campaigns.
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