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---
library_name: keras-hub
tags:
- image-segmentation
- keras
---
## Model Overview
A Keras model implementing the MixTransformer architecture to be used as a backbone for the SegFormer architecture. This model is supported in both KerasCV and KerasHub. KerasCV will no longer be actively developed, so please try to use KerasHub.
References:
- [SegFormer: Simple and Efficient Design for Semantic Segmentation with Transformers](https://arxiv.org/abs/2105.15203) # noqa: E501
- [Based on the TensorFlow implementation from DeepVision](https://github.com/DavidLandup0/deepvision/tree/main/deepvision/models/classification/mix_transformer) # noqa: E501
## Links
* [MiT Quickstart Notebook: coming soon]()
* [MiT API Documentation: coming soon]()
## Installation
Keras and KerasHub can be installed with:
```
pip install -U -q keras-Hub
pip install -U -q keras>=3
```
Jax, TensorFlow, and Torch come preinstalled in Kaggle Notebooks. For instructions on installing them in another environment see the [Keras Getting Started](https://keras.io/getting_started/) page.
## Presets
The following model checkpoints are provided by the Keras team. Weights have been ported from https://dl.fbaipublicfiles.com/segment_anything/. Full code examples for each are available below.
Here's the table formatted similarly to the given pattern:
Here's the updated table with the input resolutions included in the descriptions:
| Preset name | Parameters | Description |
|--------------------------|------------|--------------------------------------------------------------------------------------------------|
| mit_b0_ade20k_512 | 3.32M | MiT (MixTransformer) model with 8 transformer blocks, trained on the ADE20K dataset with an input resolution of 512x512 pixels. |
| mit_b1_ade20k_512 | 13.16M | MiT (MixTransformer) model with 8 transformer blocks, trained on the ADE20K dataset with an input resolution of 512x512 pixels. |
| mit_b2_ade20k_512 | 24.20M | MiT (MixTransformer) model with 16 transformer blocks, trained on the ADE20K dataset with an input resolution of 512x512 pixels. |
| mit_b3_ade20k_512 | 44.08M | MiT (MixTransformer) model with 28 transformer blocks, trained on the ADE20K dataset with an input resolution of 512x512 pixels. |
| mit_b4_ade20k_512 | 60.85M | MiT (MixTransformer) model with 41 transformer blocks, trained on the ADE20K dataset with an input resolution of 512x512 pixels. |
| mit_b5_ade20k_640 | 81.45M | MiT (MixTransformer) model with 52 transformer blocks, trained on the ADE20K dataset with an input resolution of 640x640 pixels. |
| mit_b0_cityscapes_1024 | 3.32M | MiT (MixTransformer) model with 8 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
| mit_b1_cityscapes_1024 | 13.16M | MiT (MixTransformer) model with 8 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
| mit_b2_cityscapes_1024 | 24.20M | MiT (MixTransformer) model with 16 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
| mit_b3_cityscapes_1024 | 44.08M | MiT (MixTransformer) model with 28 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
| mit_b4_cityscapes_1024 | 60.85M | MiT (MixTransformer) model with 41 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
| mit_b5_cityscapes_1024 | 81.45M | MiT (MixTransformer) model with 52 transformer blocks, trained on the Cityscapes dataset with an input resolution of 1024x1024 pixels. |
## Example Usage
Using the class with a `backbone`:
```
import tensorflow as tf
import keras_cv
import numpy as np
images = np.ones(shape=(1, 96, 96, 3))
labels = np.zeros(shape=(1, 96, 96, 1))
backbone = keras_cv.models.MiTBackbone.from_preset("mit_b1_cityscapes_1024")
# Evaluate model
model(images)
# Train model
model.compile(
optimizer="adam",
loss=keras.losses.BinaryCrossentropy(from_logits=False),
metrics=["accuracy"],
)
model.fit(images, labels, epochs=3)
```
## Example Usage with Hugging Face URI
Using the class with a `backbone`:
```
import tensorflow as tf
import keras_cv
import numpy as np
images = np.ones(shape=(1, 96, 96, 3))
labels = np.zeros(shape=(1, 96, 96, 1))
backbone = keras_cv.models.MiTBackbone.from_preset("hf://keras/mit_b1_cityscapes_1024")
# Evaluate model
model(images)
# Train model
model.compile(
optimizer="adam",
loss=keras.losses.BinaryCrossentropy(from_logits=False),
metrics=["accuracy"],
)
model.fit(images, labels, epochs=3)
``` |