More model checkpoints
TensorFlow Model Checkpoints for models trained on DHS data.
Model Category | Naming Scheme |
---|---|
out-of-country (OOC) | DHS_OOC_{fold}_{bands}_{init}_b{batch}_fc{reg}_conv{reg}_lr{lr} |
in-country | DHS_Incountry_{fold}_{bands}_{init}_b{batch}_fc{reg}_conv{reg}_lr{lr} |
transfer learning | transfer_nlcenter_{bands}_b{batch}_fc{reg}_conv{reg}_lr{lr} |
{fold}
: the fold that the model was tested on{bands}
: one of MS, NL, or RGB{init}
: the weights initialization strategy used{batch}
: batch size{reg}
: the L2 regularization coefficient is0.{reg}
if{reg}
does not include a period.
, or{reg}
otherwise{lr}
: the initial learning rate is0.{lr}
if{lr}
does not include a period.
, or{lr}
otherwise
Changes from v1.0 to v1.0.1:
- Model checkpoint zip files no longer have nested folders.
- Each zip file now includes a params.json file which includes the parameters used to train the model.
- Added checkpoints for DHS OOC NL and RGB models. Note: the model weights for the DHS OOC MS models are unchanged.
- Added checkpoints for DHS Incountry MS and NL models.
- Added checkpoints for transfer learning models.
- Added ImageNet pretrained weights (imagenet_resnet18_tensorpack.npz)