"Noisy" Retinanet for building and damaged building detection - best model checkpoints, July 2021
Latest"Noisy" Retinanet for building and damaged building detection - best model checkpoints, July 2021
Two zipped folders containing model checkpoints (trained weights) for two instances of a custom "noisy" Retinanet for 1) building detection, and 2) damaged building detection
The building damage model is damage-scratch-val0.9-gamma5-alpha0.025-sigma0.3-modelcheckpoint.zip
: it used 90% of the data for validation, a gamma parameter of 5 (note this is high compared to the original Retinanet paper recommendations), an alpha of 0.025, and a 'sigma' (noise parameter, not in the original RetinaNet implementation) of 0.3
The building detector is scratch_val0.7_gamma4_alpha0.2_modelweights.zip
Both models trained on all 4 datasets (hurricanes Harvey, Michael, Matthew, and Florence)
- Florence: 3060 images and labels
- Harvey: 2880 images and labels
- Matthew: 2180 images and labels
- Michael: 3180 images and labels
- 11,300 images and labels in total