metadata
license: cc-by-nc-4.0
datasets:
- allenai/objaverse
pipeline_tag: image-to-3d
language:
- ak
base_model:
- stepfun-ai/GOT-OCR2_0
new_version: rain1011/pyramid-flow-sd3
library_name: diffusers
---gs license: cc-by-nc-4.0 datasets: - allenai/objaverse pipeline_tag: image-to-3d
Model Card for OpenLRM V1.1
Overview
- This model card is for the OpenLRM project, which is an open-source implementation of the paper LRM.
- Information contained in this model card corresponds to Version 1.1.
Model Details
Training data
Model Training Data openlrm-obj-small-1.1 Objaverse openlrm-obj-base-1.1 Objaverse openlrm-obj-large-1.1 Objaverse openlrm-mix-small-1.1 Objaverse + MVImgNet openlrm-mix-base-1.1 Objaverse + MVImgNet openlrm-mix-large-1.1 Objaverse + MVImgNet Model architecture (version==1.1)
Type Layers Feat. Dim Attn. Heads Triplane Dim. Input Res. Image Encoder Size small 12 512 8 32 224 dinov2_vits14_reg 446M base 12 768 12 48 336 dinov2_vitb14_reg 1.04G large 16 1024 16 80 448 dinov2_vitb14_reg 1.81G Training settings
Type Rend. Res. Rend. Patch Ray Samples small 192 64 96 base 288 96 96 large 384 128 128
Notable Differences from the Original Paper
- We do not use the deferred back-propagation technique in the original paper.
- We used random background colors during training.
- The image encoder is based on the DINOv2 model with register tokens.
- The triplane decoder contains 4 layers in our implementation.
License
- The model weights are released under the Creative Commons Attribution-NonCommercial 4.0 International License.
- They are provided for research purposes only, and CANNOT be used commercially.
Disclaimer
This model is an open-source implementation and is NOT the official release of the original research paper. While it aims to reproduce the original results as faithfully as possible, there may be variations due to model implementation, training data, and other factors.
Ethical Considerations
- This model should be used responsibly and ethically, and should not be used for malicious purposes.
- Users should be aware of potential biases in the training data.
- The model should not be used under the circumstances that could lead to harm or unfair treatment of individuals or groups.
Usage Considerations
- The model is provided "as is" without warranty of any kind.
- Users are responsible for ensuring that their use complies with all relevant laws and regulations.
- The developers and contributors of this model are not liable for any damages or losses arising from the use of this model.
This model card is subject to updates and modifications. Users are advised to check for the latest version regularly.