Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

On-Orbit Real-Time Wildfire Detection Under On-Board Constraints

About

We present a deployed system for on-orbit wildfire detection aboard a nine-satellite commercial thermal infrared constellation, operating under demanding joint constraints: sub-megabyte model footprint, sub-150 ms per-batch TensorRT FP16 inference on an NVIDIA Jetson Xavier NX, and an end-to-end alert pipeline targeting under 10 minutes from satellite overpass to fire event communication. The system operates on uncalibrated mid-wave infrared (MWIR) single-band imagery at 200 m ground sampling distance, where fires frequently appear as sub-pixel or single-pixel thermal anomalies under extreme class imbalance -- challenges not addressed by the contextual thermal-thresholding pipelines (MODIS, VIIRS) that currently dominate operational fire monitoring. We present an empirical study of lightweight dense representation learning for this regime using a proprietary nine-satellite MWIR dataset. We compare dense masked autoencoding (DenseMAE) and a hybrid DenseMAE+EMA (exponential moving average) distillation variant, and evaluate representations via linear probing and full-distribution pixel-level average precision (AP) under extreme class imbalance. DenseMAE pretraining enables compact downstream models on the latency-accuracy Pareto frontier: our fastest SSL-pretrained model achieves 0.640 test AP and 0.69 event-level Fire-F1 with 65.34 ms latency per batch and a 0.52 MB engine, without pruning or compression. The best configuration reaches 0.699 AP and 0.744 Fire-F1 below 1 MB, outperforming a supervised baseline (0.650 AP) under comparable constraints.

Matthias R\"otzer, Veronika P\"ortge, Martin Ickerott, Jayendra Praveen Kumar Chorapalli, Dimitri Scheftelowitsch, Max Bereczky, Dmitry Rashkovetsky, Sai Manoj Appalla, Julia Gottfriedsen• 2026

Related benchmarks

TaskDatasetResultRank
Wildfire SegmentationWildfire Dataset (test)
Latency (ms)65.34
9
Showing 1 of 1 rows

Other info

Follow for update