Paolo-Fraccaro
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Update README.md
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README.md
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### Pre-training
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The model was pre-trained with NASA's HLS2 L30 product (30m granularity) from Continental United States. The bands that were used are the following:
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### Code
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The model follows the [original mae repo](https://github.com/facebookresearch/mae) with some modifications including:
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1. replace 2D patch embed with 3D patch embed;
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2. replace 2D positional embed with 3D positional embed;
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3. replace 2D patchify and unpatchify with 3D.
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### Pre-training
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The model was pre-trained with NASA's HLS2 L30 product (30m granularity) from Continental United States. The bands that were used are the following:
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1. Blue
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2. Green
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3. Red
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4. Narrow NIR
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5. SWIR 1
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6. SWIR 2
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### Code
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The model follows the [original mae repo](https://github.com/facebookresearch/mae) with some modifications including:
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1. replace 2D patch embed with 3D patch embed;
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2. replace 2D positional embed with 3D positional embed;
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3. replace 2D patchify and unpatchify with 3D.
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### Finetuning examples
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Two examples of finetuning the model for image segmentation (i.e. flood detection and burn scars detection) using the mmsegmentation library are available through [github](https://github.com/NASA-IMPACT/hls-foundation-os/tree/main/fine-tuning-examples).
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