A library to apply some data augmentations in semantic segmentation problems
Reason this release was yanked:
old release
Project description
semantic_segmentation_augmentations
Data augmentation is a regularisation technique that generates new training samples from the original dataset by applying colour or geometric transformations. Although this technique has been applied in other computer vision fields, such as image classification or object detection, the application of this technique in semantic segmentation is not yet widespread.
This library groups some data augmentation techniques for semantic augmentation, such as CutOut or CutMix.
Install
To install the library, run:
pip install semantic_segmentation_augmentations
How it works
This data augmentation techniques are defined as fastai
callbacks
.
Given this fact, you need to train your models using fastai
’s API to
use them.
As these techniques modifies the input image changing some pixels
regions for something else, those callbacks have been defined as the
union of two subcomponents: the
HoleMakerTechnique
,
that defines how to make the hole (how to select the region to replace)
and the
HolesFilling
,
that defines how to fill the region defined below (the way to fill the
region gives the name to the technique used).
The
HoleMakerTechnique
can be replaced in order to change the behavior of the selection of the
region to replace. Doing so, you can use a CutOut technique that select
the region randomly or based on the information bounded in that region.
You can also define your custom techniques defining how to fill a hole.
You just need to extend the
HolesFilling
class and define the before_bacth
(remember: we are using callbacks
from fastai
) abstract method. You will have two methods to simplify
the process: the make_hole
function, that uses the selected
HoleMakerTechnique
to make the hole and returns two slices (the region boundaries) and the
fill_hole
function, that fills the hole with something.
How to use it
In order to use these techniques, you just need to define the Learner
from fastai
with the Callbacks
that represents the techniques that
you want to use.
For example, if you want to create an U-net
Leaner
with resnet18
backbone and use the CutOut technique with
HoleMakerRandom
as region selection techinique (which is the default one), you just need
to to add to your learner:
learner = unet_learner(dls, resnet18, cbs = CutOutRandom(hole_maker = HoleMakerRandom()))
In the next sections we explain all the details of those components.
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