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Update README.md (#7)
Browse files- Update README.md (9c786effaedbf8f8dea96bc4f43337bdfec9a9ed)
Co-authored-by: bob chesebrough <[email protected]>
README.md
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# DPT (large-sized model) fine-tuned on ADE20k
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## Model description
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![model image](https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/dpt_architecture.jpg)
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## Intended uses & limitations
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You can use the raw model for semantic segmentation. See the [model hub](https://huggingface.co/models?search=dpt) to look for
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from PIL import Image
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import requests
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url = "http://images.cocodataset.org/val2017/
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image = Image.open(requests.get(url, stream=True).raw)
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feature_extractor =
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model = DPTForSemanticSegmentation.from_pretrained("Intel/dpt-large-ade")
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inputs = feature_extractor(images=image, return_tensors="pt")
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outputs = model(**inputs)
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logits = outputs.logits
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```
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For more code examples, we refer to the [documentation](https://huggingface.co/docs/transformers/master/en/model_doc/dpt).
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# DPT (large-sized model) fine-tuned on ADE20k
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The model is used for semantic segmentation of input images such as seen in the table below:
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| Input Image | Output Segmented Image |
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| --- | --- |
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| ![input image](https://cdn-uploads.huggingface.co/production/uploads/641bd18baebaa27e0753f2c9/cG0alacJ4MeSL18CneD2u.png) | ![Segmented image](https://cdn-uploads.huggingface.co/production/uploads/641bd18baebaa27e0753f2c9/G3g6Bsuti60-bCYzgbt5o.png)|
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## Model description
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The Midas 3.0 nbased Dense Prediction Transformer (DPT) model was trained on ADE20k for semantic segmentation. It was introduced in the paper
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[Vision Transformers for Dense Prediction](https://arxiv.org/abs/2103.13413) by Ranftl et al. and first released in [this repository](https://github.com/isl-org/DPT).
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The MiDaS v3.0 DPT uses the Vision Transformer (ViT) as backbone and adds a neck + head on top for semantic segmentation.
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![model image](https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/dpt_architecture.jpg)
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Disclaimer: The team releasing DPT did not write a model card for this model so this model card has been written by the Hugging Face and the Intel AI Community team.
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## Results:
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According to the authors, at the time of publication, when applied to semantic segmentation, dense vision transformers set a new state of the art on
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**ADE20K with 49.02% mIoU.**
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We further show that the architecture can be fine-tuned on smaller datasets such as NYUv2, KITTI, and Pascal Context where it also sets the new state of the art. Our models are available at
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[Intel DPT GItHub Repository](https://github.com/intel-isl/DPT).
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## Intended uses & limitations
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You can use the raw model for semantic segmentation. See the [model hub](https://huggingface.co/models?search=dpt) to look for
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from PIL import Image
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import requests
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url = "http://images.cocodataset.org/val2017/000000026204.jpg"
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image = Image.open(requests.get(url, stream=True).raw)
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feature_extractor = DPTImageProcessor .from_pretrained("Intel/dpt-large-ade")
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model = DPTForSemanticSegmentation.from_pretrained("Intel/dpt-large-ade")
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inputs = feature_extractor(images=image, return_tensors="pt")
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outputs = model(**inputs)
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logits = outputs.logits
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print(logits.shape)
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logits
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prediction = torch.nn.functional.interpolate(
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logits,
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size=image.size[::-1], # Reverse the size of the original image (width, height)
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mode="bicubic",
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align_corners=False
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)
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# Convert logits to class predictions
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prediction = torch.argmax(prediction, dim=1) + 1
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# Squeeze the prediction tensor to remove dimensions
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prediction = prediction.squeeze()
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# Move the prediction tensor to the CPU and convert it to a numpy array
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prediction = prediction.cpu().numpy()
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# Convert the prediction array to an image
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predicted_seg = Image.fromarray(prediction.squeeze().astype('uint8'))
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# Define the ADE20K palette
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adepallete = [0,0,0,120,120,120,180,120,120,6,230,230,80,50,50,4,200,3,120,120,80,140,140,140,204,5,255,230,230,230,4,250,7,224,5,255,235,255,7,150,5,61,120,120,70,8,255,51,255,6,82,143,255,140,204,255,4,255,51,7,204,70,3,0,102,200,61,230,250,255,6,51,11,102,255,255,7,71,255,9,224,9,7,230,220,220,220,255,9,92,112,9,255,8,255,214,7,255,224,255,184,6,10,255,71,255,41,10,7,255,255,224,255,8,102,8,255,255,61,6,255,194,7,255,122,8,0,255,20,255,8,41,255,5,153,6,51,255,235,12,255,160,150,20,0,163,255,140,140,140,250,10,15,20,255,0,31,255,0,255,31,0,255,224,0,153,255,0,0,0,255,255,71,0,0,235,255,0,173,255,31,0,255,11,200,200,255,82,0,0,255,245,0,61,255,0,255,112,0,255,133,255,0,0,255,163,0,255,102,0,194,255,0,0,143,255,51,255,0,0,82,255,0,255,41,0,255,173,10,0,255,173,255,0,0,255,153,255,92,0,255,0,255,255,0,245,255,0,102,255,173,0,255,0,20,255,184,184,0,31,255,0,255,61,0,71,255,255,0,204,0,255,194,0,255,82,0,10,255,0,112,255,51,0,255,0,194,255,0,122,255,0,255,163,255,153,0,0,255,10,255,112,0,143,255,0,82,0,255,163,255,0,255,235,0,8,184,170,133,0,255,0,255,92,184,0,255,255,0,31,0,184,255,0,214,255,255,0,112,92,255,0,0,224,255,112,224,255,70,184,160,163,0,255,153,0,255,71,255,0,255,0,163,255,204,0,255,0,143,0,255,235,133,255,0,255,0,235,245,0,255,255,0,122,255,245,0,10,190,212,214,255,0,0,204,255,20,0,255,255,255,0,0,153,255,0,41,255,0,255,204,41,0,255,41,255,0,173,0,255,0,245,255,71,0,255,122,0,255,0,255,184,0,92,255,184,255,0,0,133,255,255,214,0,25,194,194,102,255,0,92,0,255]
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# Apply the color map to the predicted segmentation image
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predicted_seg.putpalette(adepallete)
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# Blend the original image and the predicted segmentation image
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out = Image.blend(image, predicted_seg.convert("RGB"), alpha=0.5)
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out
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```
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For more code examples, we refer to the [documentation](https://huggingface.co/docs/transformers/master/en/model_doc/dpt).
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