Background
Phenological correction of pre- and post-fire imagery is used to improve remotely sensed burn severity evaluations. Unburned offset values standardize greenness between image pairs; however, efficacy across diverse scenarios remains underexplored.
Aims
We evaluated the impact of phenological offset correction methods to support analyst decision-making across fire-prone environments.
Methods
We generated burn severity spectral index values for a dataset of Composite Burn Index (CBI) field plots across the conterminous US. The effectiveness of offset corrections was tested across image selection techniques, spectral indices, offset generation methods and burn perimeter sources. We assessed the influence of offset corrections on the modeled relationship with CBI, agreement between burn severity thresholds and potential bias.
Key results
Applying offset corrections consistently improved the modeled relationship with CBI by addressing extreme outlier severity values. However, automated offset corrections had the potential to introduce bias, systematically lowering severity values and reducing correspondence with observed burn severity categories.
Conclusions
Offset corrections offer benefits but also present trade-offs to accurately representing remotely sensed burn severity.
Implications
The utility of offset corrections depends on the environment, methods and scale of analysis. We propose a decision-tree framework for analysts to consider when employing offset corrections given their study scope.
Menick CE, Vanderhoof MK, Picotte JJ, Reiner AL, Chastain RA. (2025) Offsetting the noise: a framework for applying phenological offset corrections in remotely sensed burn severity assessments. International Journal of Wildland Fire 34, WF25066. https://doi.org/10.1071/WF25066