Metadata-Version: 2.1
Name: patta
Version: 0.0.2
Summary: Images test time augmentation with Paddle.
Home-page: UNKNOWN
License: MIT
Platform: UNKNOWN
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: Implementation :: CPython
Classifier: Programming Language :: Python :: Implementation :: PyPy
Requires-Python: >=3.0.0
Description-Content-Type: text/markdown
Provides-Extra: test
Requires-Dist: pytest ; extra == 'test'


# Patta
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Image Test Time Augmentation with Paddle2.0!

```
           Input
             |           # input batch of images 
        / / /|\ \ \      # apply augmentations (flips, rotation, scale, etc.)
       | | | | | | |     # pass augmented batches through model
       | | | | | | |     # reverse transformations for each batch of masks/labels
        \ \ \ / / /      # merge predictions (mean, max, gmean, etc.)
             |           # output batch of masks/labels
           Output
```
## Table of Contents
1. [Quick Start](#quick-start)
- [Test](#Test)
- [Predict](#Predict)
- [Use Tools](#Use-Tools)
2. [Transforms](#Advanced-Examples (DIY Transforms))
3. [Aliases](#Aliases (Combos))
4. [Merge modes](#Merge-modes)
5. [Installation](#installation)

## Quick start (Default Transforms)

#### Test
We support that you can use the following to test after defining the network.

#####  Segmentation model wrapping [[docstring](patta/wrappers.py#L8)]:
```python
import patta as tta
tta_model = tta.SegmentationTTAWrapper(model, tta.aliases.d4_transform(), merge_mode='mean')
```
#####  Classification model wrapping [[docstring](patta/wrappers.py#L52)]:
```python
tta_model = tta.ClassificationTTAWrapper(model, tta.aliases.five_crop_transform())
```
#####  Keypoints model wrapping [[docstring](patta/wrappers.py#L96)]:
```python
tta_model = tta.KeypointsTTAWrapper(model, tta.aliases.flip_transform(), scaled=True)
```
**Note**: the model must return keypoints in the format `Tensor([x1, y1, ..., xn, yn])`

#### Predict
We support that you can use the following to test when you have the static model: `*.pdmodel`、`*.pdiparams`、`*.pdiparams.info`.

#####  Load model [[docstring](patta/load_model.py#L3)]:
```python
import patta as tta
model = tta.load_model(path='output/model')
```
#####  Segmentation model wrapping [[docstring](patta/wrappers.py#L8)]:
```python
tta_model = tta.SegmentationTTAWrapper(model, tta.aliases.d4_transform(), merge_mode='mean')
```
#####  Classification model wrapping [[docstring](patta/wrappers.py#L52)]:
```python
tta_model = tta.ClassificationTTAWrapper(model, tta.aliases.five_crop_transform())
```
#####  Keypoints model wrapping [[docstring](patta/wrappers.py#L96)]:
```python
tta_model = tta.KeypointsTTAWrapper(model, tta.aliases.flip_transform(), scaled=True)
```

#### Use-Tools
#####  Segmentation model [[docstring](tools/seg.py)]:
We recommend modifying the file `seg.py` according to your own model.
```python
python seg.py --model_path='output/model' \
                 --batch_size=16 \
                 --test_dataset='test.txt'
```
**Note**: Related to [paddleseg](https://github.com/PaddlePaddle/Paddleseg)

## Advanced-Examples (DIY Transforms)
#####  Custom transform:
```python
# defined 2 * 2 * 3 * 3 = 36 augmentations !
transforms = tta.Compose(
    [
        tta.HorizontalFlip(),
        tta.Rotate90(angles=[0, 180]),
        tta.Scale(scales=[1, 2, 4]),
        tta.Multiply(factors=[0.9, 1, 1.1]),        
    ]
)

tta_model = tta.SegmentationTTAWrapper(model, transforms)
```
##### Custom model (multi-input / multi-output)
```python
# Example how to process ONE batch on images with TTA
# Here `image`/`mask` are 4D tensors (B, C, H, W), `label` is 2D tensor (B, N)

for transformer in transforms: # custom transforms or e.g. tta.aliases.d4_transform() 

    # augment image
    augmented_image = transformer.augment_image(image)

    # pass to model
    model_output = model(augmented_image, another_input_data)

    # reverse augmentation for mask and label
    deaug_mask = transformer.deaugment_mask(model_output['mask'])
    deaug_label = transformer.deaugment_label(model_output['label'])

    # save results
    labels.append(deaug_mask)
    masks.append(deaug_label)

# reduce results as you want, e.g mean/max/min
label = mean(labels)
mask = mean(masks)
```

## Optional Transforms

| Transform      | Parameters                | Values                            |
|----------------|:-------------------------:|:---------------------------------:|
| HorizontalFlip | -                         | -                                 |
| VerticalFlip   | -                         | -                                 |
| Rotate90       | angles                    | List\[0, 90, 180, 270]            |
| Scale          | scales<br>interpolation   | List\[float]<br>"nearest"/"linear"|
| Resize         | sizes<br>original_size<br>interpolation   | List\[Tuple\[int, int]]<br>Tuple\[int,int]<br>"nearest"/"linear"|
| Add            | values                    | List\[float]                      |
| Multiply       | factors                   | List\[float]                      |
| FiveCrops      | crop_height<br>crop_width | int<br>int                        |

## Aliases (Combos)

  - flip_transform (horizontal + vertical flips)
  - hflip_transform (horizontal flip)
  - d4_transform (flips + rotation 0, 90, 180, 270)
  - multiscale_transform (scale transform, take scales as input parameter)
  - five_crop_transform (corner crops + center crop)
  - ten_crop_transform (five crops + five crops on horizontal flip)

## Merge-modes
 - mean
 - gmean (geometric mean)
 - sum
 - max
 - min
 - tsharpen ([temperature sharpen](https://www.kaggle.com/c/severstal-steel-defect-detection/discussion/107716#latest-624046) with t=0.5)

## Installation
PyPI:
```bash
# Use pip install PaTTA
$ pip install patta
```
or
```bash
# After downloading the whole dir
$ git clone https://github.com/AgentMaker/PaTTA.git
$ pip install PaTTA/

```

## Run tests

```bash
# run test_transforms.py and test_base.py for test
python test/test_transforms.py
python test/test_base.py
```


