--- tags: - image-classification - timm library_name: timm license: cc-by-nc-4.0 datasets: - imagenet-1k --- # Model card for hiera_base_plus_224.mae_in1k_ft_in1k A Hiera image classification model. Pretrained on ImageNet-1k with Self-Supervised Masked Autoencoder (MAE) method and fine-tuned on ImageNet-1k. ## Model Details - **Model Type:** Image classification / feature backbone - **Model Stats:** - Params (M): 69.9 - GMACs: 12.7 - Activations (M): 38.0 - Image size: 224 x 224 - **Dataset:** ImageNet-1k - **Papers:** - Hiera: A Hierarchical Vision Transformer without the Bells-and-Whistles: https://arxiv.org/abs/2306.00989 - Masked Autoencoders Are Scalable Vision Learners: https://arxiv.org/abs/2111.06377 - **Original:** https://github.com/facebookresearch/hiera ## Model Usage ### Image Classification ```python from urllib.request import urlopen from PIL import Image import timm img = Image.open(urlopen( 'https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/beignets-task-guide.png' )) model = timm.create_model('hiera_base_plus_224.mae_in1k_ft_in1k', pretrained=True) model = model.eval() # get model specific transforms (normalization, resize) data_config = timm.data.resolve_model_data_config(model) transforms = timm.data.create_transform(**data_config, is_training=False) output = model(transforms(img).unsqueeze(0)) # unsqueeze single image into batch of 1 top5_probabilities, top5_class_indices = torch.topk(output.softmax(dim=1) * 100, k=5) ``` ### Feature Map Extraction ```python from urllib.request import urlopen from PIL import Image import timm img = Image.open(urlopen( 'https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/beignets-task-guide.png' )) model = timm.create_model( 'hiera_base_plus_224.mae_in1k_ft_in1k', pretrained=True, features_only=True, ) model = model.eval() # get model specific transforms (normalization, resize) data_config = timm.data.resolve_model_data_config(model) transforms = timm.data.create_transform(**data_config, is_training=False) output = model(transforms(img).unsqueeze(0)) # unsqueeze single image into batch of 1 for o in output: # print shape of each feature map in output # e.g.: # torch.Size([1, 112, 56, 56]) # torch.Size([1, 224, 28, 28]) # torch.Size([1, 448, 14, 14]) # torch.Size([1, 896, 7, 7]) print(o.shape) ``` ### Image Embeddings ```python from urllib.request import urlopen from PIL import Image import timm img = Image.open(urlopen( 'https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/beignets-task-guide.png' )) model = timm.create_model( 'hiera_base_plus_224.mae_in1k_ft_in1k', pretrained=True, num_classes=0, # remove classifier nn.Linear ) model = model.eval() # get model specific transforms (normalization, resize) data_config = timm.data.resolve_model_data_config(model) transforms = timm.data.create_transform(**data_config, is_training=False) output = model(transforms(img).unsqueeze(0)) # output is (batch_size, num_features) shaped tensor # or equivalently (without needing to set num_classes=0) output = model.forward_features(transforms(img).unsqueeze(0)) # output is unpooled, a (1, 49, 896) shaped tensor output = model.forward_head(output, pre_logits=True) # output is a (1, num_features) shaped tensor ``` ## Model Comparison ### By Top-1 |model |top1 |top1_err|top5 |top5_err|param_count| |---------------------------------|------|--------|------|--------|-----------| |hiera_huge_224.mae_in1k_ft_in1k |86.834|13.166 |98.01 |1.99 |672.78 | |hiera_large_224.mae_in1k_ft_in1k |86.042|13.958 |97.648|2.352 |213.74 | |hiera_base_plus_224.mae_in1k_ft_in1k|85.134|14.866 |97.158|2.842 |69.9 | |hiera_base_224.mae_in1k_ft_in1k |84.49 |15.51 |97.032|2.968 |51.52 | |hiera_small_224.mae_in1k_ft_in1k |83.884|16.116 |96.684|3.316 |35.01 | |hiera_tiny_224.mae_in1k_ft_in1k |82.786|17.214 |96.204|3.796 |27.91 | ## Citation ```bibtex @article{ryali2023hiera, title={Hiera: A Hierarchical Vision Transformer without the Bells-and-Whistles}, author={Ryali, Chaitanya and Hu, Yuan-Ting and Bolya, Daniel and Wei, Chen and Fan, Haoqi and Huang, Po-Yao and Aggarwal, Vaibhav and Chowdhury, Arkabandhu and Poursaeed, Omid and Hoffman, Judy and Malik, Jitendra and Li, Yanghao and Feichtenhofer, Christoph}, journal={ICML}, year={2023} } ``` ```bibtex @Article{MaskedAutoencoders2021, author = {Kaiming He and Xinlei Chen and Saining Xie and Yanghao Li and Piotr Doll{'a}r and Ross Girshick}, journal = {arXiv:2111.06377}, title = {Masked Autoencoders Are Scalable Vision Learners}, year = {2021}, } ```