Image Classification
mlx-image
Safetensors
MLX
vision
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vit_base_patch14_518.dinov2

A Vision Transformer image classification model trained on ImageNet-1k dataset with DINOv2.

The model was trained in self-supervised fashion on ImageNet-1k dataset. No classification head was trained, only the backbone.

Disclaimer: This is a porting of the torch model weights to Apple MLX Framework.

DINO illustration

How to use

pip install mlx-image

Here is how to use this model for image classification:

from mlxim.model import create_model
from mlxim.io import read_rgb
from mlxim.transform import ImageNetTransform

transform = ImageNetTransform(train=False, img_size=518)
x = transform(read_rgb("cat.png"))
x = mx.expand_dims(x, 0)

model = create_model("vit_base_patch14_518.dinov2")
model.eval()

logits, attn_masks = model(x, attn_masks=True)

You can also use the embeds from layer before head:

from mlxim.model import create_model
from mlxim.io import read_rgb
from mlxim.transform import ImageNetTransform

transform = ImageNetTransform(train=False, img_size=512)
x = transform(read_rgb("cat.png"))
x = mx.expand_dims(x, 0)

# first option
model = create_model("vit_base_patch14_518.dinov2", num_classes=0)
model.eval()

embeds = model(x)

# second option
model = create_model("vit_base_patch14_518.dinov2")
model.eval()

embeds, attn_masks = model.get_features(x)

Attention maps

You can visualize the attention maps using the attn_masks returned by the model. Go check the mlx-image notebook.

Attention Map
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Inference Examples
Inference API (serverless) does not yet support mlx-image models for this pipeline type.

Dataset used to train mlx-vision/vit_base_patch14_518.dinov2-mlxim