Releases: mapbox/robosat
v1.2.0
This release brings incredible new features and improvements from the
community accumulated over the last months. We recommend to upgrade.
The pre-built docker images are the recommended way of using robosat:
Changes
-
rs train
: state of the art losses and metrics. Lovasz loss as default,
many many more small features and fixes in training and related tools.
Thanks https://github.com/ocourtin -
rs extract
: fully automatated road training dataset creation
Thanks https://github.com/DragonEmperorG -
rs extract
: batch feature extraction for datasets too big for memory
Thanks http://github.com/daniel-j-h -
rs rasterize
: batch rasterization for datasets too big for memory
Thanks http://github.com/daniel-j-h -
Infrastructure: improved docker images, pre-trained weights in images,
upgrades to CUDA 10.1, cudnn 7, and pytorch 1.1.
Thanks http://github.com/daniel-j-h
v1.1.0
Changes
-
rs train
: new--checkpoint
argument to re-start training (fine-tune)
from a trained model checkpoint. Thanks https://github.com/ocourtin -
rs train
: memory usage reduction during validation by disabling
expensive gradient computation. Thanks https://github.com/Jesse-jApps -
rs train
,rs predict
: speedups using multiple workers and
doing metric calculation on GPU. Thanks https://github.com/ocourtin -
rs merge
: polygon orientation fixes to respect the GeoJSON
specification (right-hand rule). Thanks https://github.com/marsbroshok
You can find automatically built Docker images as usual at https://hub.docker.com/r/mapbox/robosat/