核心概念
This work presents a novel methodology to automate the creation of datasets for the detection of thermal hotspots, such as wildfires and volcanic eruptions, directly from Sentinel-2 raw multispectral data. The proposed approach leverages existing algorithms designed for processed Level-1C data to efficiently identify and annotate the corresponding raw data granules.
摘要
The paper addresses the limited availability of raw multispectral imagery datasets for onboard Artificial Intelligence (AI) applications on Earth Observation (EO) satellites. It presents a methodology to automate the creation of datasets containing thermal hotspot events, such as wildfires and volcanic eruptions, directly from Sentinel-2 raw data.
The key steps of the methodology are:
- Procuring a list of thermal hotspot events from existing databases and online sources.
- Downloading the corresponding Sentinel-2 raw data granules and related Level-1C products.
- Applying a lightweight Coarse Spatial Coregistration (CSC) and Coarse Georeferencing (CG) approach to the raw data to enable the identification and annotation of the thermal hotspot events.
- Leveraging state-of-the-art algorithms designed for Level-1C data to detect the thermal hotspots on the cropped and mosaicked Level-1C tiles, and then projecting the annotations back onto the corresponding raw data granules.
The authors showcase the application of this methodology to create the THRawS (Thermal Hotspots in raw Sentinel-2 data) dataset, which includes 1090 samples of thermal hotspots and 33,335 event-free acquisitions. The dataset and associated toolkits provide the community with a valuable resource to speed up future research on energy-efficient pre-processing algorithms and AI-based end-to-end processing systems for onboard EO applications.
統計資料
The THRawS dataset contains a total of 1090 thermal hotspot samples and 33,335 event-free acquisitions.
引述
"To fill this gap, this work presents a novel methodology to automate the creation of datasets for the detection of target events (e.g., warm thermal hotspots) or objects (e.g., vessels) from Sentinel-2 raw data and other multispectral EO pushbroom raw imagery."
"The presented approach first processes the raw data by applying a pipeline consisting of a spatial band registration and georeferencing of the raw data pixels. Then, it detects the target events by leveraging event-specific state-of-the-art algorithms on the Level-1C products, which are mosaicked and cropped on the georeferenced correspondent raw granule area. The detected events are, finally, re-projected back on the corresponding raw images."