Thermal Anomaly Detection using Physics Aware Neuromorphic Networks: Comparison between Raw and L1C Sentinel-2 Data

arXiv cs.AI / 4/22/2026

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Key Points

  • The paper addresses the need for fast thermal anomaly early warning by proposing onboard thermal anomaly detection directly from decompressed Sentinel-2 Level-0 (L0) sensor data while reducing reliance on costly preprocessing chains.
  • It introduces a Physics-Aware Neuromorphic Network (PANN) designed to mitigate issues such as domain shift, sensor drift, radiometric inconsistencies, and limited labeled training data.
  • In experiments on Sentinel-2 datasets, PANN reaches an MCC of 0.809 on raw (decompressed L0 with metadata) measurements, compared with 0.875 on ground-processed Level-1C (L1C).
  • The approach achieves real-time feasibility, with mean processing latency per L0 granule of 2.44±0.09 s (below the 3.6 s acquisition time) and an estimated neuromorphic hardware execution time of 0.1290±0.0002 s.
  • It also reports onboard resource practicality, keeping memory requirements within realistic constraints for both software and estimated neuromorphic hardware deployments.

Abstract

Damage caused by bushfires and volcanic eruptions escalates rapidly when detection is delayed, making fast and reliable early warning capabilities essential. Recent Earth Observation (EO) approaches have shown that thermal anomaly detection can be performed directly on decompressed Level-0 (L0) sensor data, avoiding computationally expensive preprocessing chains. However, direct exploitation of raw data remains challenging due to domain shift, sensor drift, radiometric inconsistencies, and the scarcity of labelled training samples. To address these challenges, this work proposes a Physics-Aware Neuromorphic Network (PANN) framework for onboard thermal anomaly detection. The proposed lightweight architecture, inspired by physical neural network principles and neuromorphic computing paradigms, is evaluated using two Sentinel-2 datasets: decompressed L0 with additional metadata (i.e. raw) and Level-1C (L1C). The PANN achieves a Matthews Correlation Coefficient (MCC) of 0.809 on raw measurements, compared to 0.875 when using ground-processed L1C products. The mean processing latency per L0 granule is 2.44 \pm 0.09~\mathrm{s}, which is below the Sentinel-2 acquisition time of 3.6~\mathrm{s}, demonstrating the feasibility of real-time, onboard processing. Furthermore, the projected execution time for the corresponding neuromorphic hardware instantiation is substantially lower at 0.1290 \pm 0.0002~\mathrm{s}. Memory usage, including all necessary programs and packages, remains within realistic onboard constraints, with requirements of 0.673 \pm 0.007~\mathrm{Gb} for the software PANN and 0.393 \pm 0.004~\mathrm{Gb} for the estimated hardware realisation. Overall, these results indicate that PANN offers a promising pathway toward low-latency and resource-efficient onboard EO processing for thermal event detection.