| # Big Transfer (BiT) |
|
|
| **Big Transfer (BiT)** is a type of pretraining recipe that pre-trains on a large supervised source dataset, and fine-tunes the weights on the target task. Models are trained on the JFT-300M dataset. The finetuned models contained in this collection are finetuned on ImageNet. |
|
|
| ## How do I use this model on an image? |
|
|
| To load a pretrained model: |
|
|
| ```py |
| >>> import timm |
| >>> model = timm.create_model('resnetv2_101x1_bitm', pretrained=True) |
| >>> model.eval() |
| ``` |
|
|
| To load and preprocess the image: |
|
|
| ```py |
| >>> import urllib |
| >>> from PIL import Image |
| >>> from timm.data import resolve_data_config |
| >>> from timm.data.transforms_factory import create_transform |
|
|
| >>> config = resolve_data_config({}, model=model) |
| >>> transform = create_transform(**config) |
|
|
| >>> url, filename = ("https://github.com/pytorch/hub/raw/master/images/dog.jpg", "dog.jpg") |
| >>> urllib.request.urlretrieve(url, filename) |
| >>> img = Image.open(filename).convert('RGB') |
| >>> tensor = transform(img).unsqueeze(0) |
| ``` |
|
|
| To get the model predictions: |
|
|
| ```py |
| >>> import torch |
| >>> with torch.no_grad(): |
| ... out = model(tensor) |
| >>> probabilities = torch.nn.functional.softmax(out[0], dim=0) |
| >>> print(probabilities.shape) |
| >>> |
| ``` |
|
|
| To get the top-5 predictions class names: |
|
|
| ```py |
| >>> |
| >>> url, filename = ("https://raw.githubusercontent.com/pytorch/hub/master/imagenet_classes.txt", "imagenet_classes.txt") |
| >>> urllib.request.urlretrieve(url, filename) |
| >>> with open("imagenet_classes.txt", "r") as f: |
| ... categories = [s.strip() for s in f.readlines()] |
|
|
| >>> |
| >>> top5_prob, top5_catid = torch.topk(probabilities, 5) |
| >>> for i in range(top5_prob.size(0)): |
| ... print(categories[top5_catid[i]], top5_prob[i].item()) |
| >>> |
| >>> |
| ``` |
|
|
| Replace the model name with the variant you want to use, e.g. `resnetv2_101x1_bitm`. You can find the IDs in the model summaries at the top of this page. |
|
|
| To extract image features with this model, follow the [timm feature extraction examples](../feature_extraction), just change the name of the model you want to use. |
|
|
| ## How do I finetune this model? |
|
|
| You can finetune any of the pre-trained models just by changing the classifier (the last layer). |
|
|
| ```py |
| >>> model = timm.create_model('resnetv2_101x1_bitm', pretrained=True, num_classes=NUM_FINETUNE_CLASSES) |
| ``` |
| To finetune on your own dataset, you have to write a training loop or adapt [timm's training |
| script](https://github.com/rwightman/pytorch-image-models/blob/master/train.py) to use your dataset. |
|
|
| ## How do I train this model? |
|
|
| You can follow the [timm recipe scripts](../training_script) for training a new model afresh. |
|
|
| ## Citation |
|
|
| ```BibTeX |
| @misc{kolesnikov2020big, |
| title={Big Transfer (BiT): General Visual Representation Learning}, |
| author={Alexander Kolesnikov and Lucas Beyer and Xiaohua Zhai and Joan Puigcerver and Jessica Yung and Sylvain Gelly and Neil Houlsby}, |
| year={2020}, |
| eprint={1912.11370}, |
| archivePrefix={arXiv}, |
| primaryClass={cs.CV} |
| } |
| ``` |
|
|
| <!-- |
| Type: model-index |
| Collections: |
| - Name: Big Transfer |
| Paper: |
| Title: 'Big Transfer (BiT): General Visual Representation Learning' |
| URL: https://paperswithcode.com/paper/large-scale-learning-of-general-visual |
| Models: |
| - Name: resnetv2_101x1_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 5330896 |
| Parameters: 44540000 |
| File Size: 178256468 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| Training Resources: Cloud TPUv3-512 |
| ID: resnetv2_101x1_bitm |
| LR: 0.03 |
| Epochs: 90 |
| Layers: 101 |
| Crop Pct: '1.0' |
| Momentum: 0.9 |
| Batch Size: 4096 |
| Image Size: '480' |
| Weight Decay: 0.0001 |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L444 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R101x1-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 82.21% |
| Top 5 Accuracy: 96.47% |
| - Name: resnetv2_101x3_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 15988688 |
| Parameters: 387930000 |
| File Size: 1551830100 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| Training Resources: Cloud TPUv3-512 |
| ID: resnetv2_101x3_bitm |
| LR: 0.03 |
| Epochs: 90 |
| Layers: 101 |
| Crop Pct: '1.0' |
| Momentum: 0.9 |
| Batch Size: 4096 |
| Image Size: '480' |
| Weight Decay: 0.0001 |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L451 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R101x3-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 84.38% |
| Top 5 Accuracy: 97.37% |
| - Name: resnetv2_152x2_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 10659792 |
| Parameters: 236340000 |
| File Size: 945476668 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| ID: resnetv2_152x2_bitm |
| Crop Pct: '1.0' |
| Image Size: '480' |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L458 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R152x2-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 84.4% |
| Top 5 Accuracy: 97.43% |
| - Name: resnetv2_152x4_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 21317584 |
| Parameters: 936530000 |
| File Size: 3746270104 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| Training Resources: Cloud TPUv3-512 |
| ID: resnetv2_152x4_bitm |
| Crop Pct: '1.0' |
| Image Size: '480' |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L465 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R152x4-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 84.95% |
| Top 5 Accuracy: 97.45% |
| - Name: resnetv2_50x1_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 5330896 |
| Parameters: 25550000 |
| File Size: 102242668 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| Training Resources: Cloud TPUv3-512 |
| ID: resnetv2_50x1_bitm |
| LR: 0.03 |
| Epochs: 90 |
| Layers: 50 |
| Crop Pct: '1.0' |
| Momentum: 0.9 |
| Batch Size: 4096 |
| Image Size: '480' |
| Weight Decay: 0.0001 |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L430 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R50x1-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 80.19% |
| Top 5 Accuracy: 95.63% |
| - Name: resnetv2_50x3_bitm |
| In Collection: Big Transfer |
| Metadata: |
| FLOPs: 15988688 |
| Parameters: 217320000 |
| File Size: 869321580 |
| Architecture: |
| - 1x1 Convolution |
| - Bottleneck Residual Block |
| - Convolution |
| - Global Average Pooling |
| - Group Normalization |
| - Max Pooling |
| - ReLU |
| - Residual Block |
| - Residual Connection |
| - Softmax |
| - Weight Standardization |
| Tasks: |
| - Image Classification |
| Training Techniques: |
| - Mixup |
| - SGD with Momentum |
| - Weight Decay |
| Training Data: |
| - ImageNet |
| - JFT-300M |
| Training Resources: Cloud TPUv3-512 |
| ID: resnetv2_50x3_bitm |
| LR: 0.03 |
| Epochs: 90 |
| Layers: 50 |
| Crop Pct: '1.0' |
| Momentum: 0.9 |
| Batch Size: 4096 |
| Image Size: '480' |
| Weight Decay: 0.0001 |
| Interpolation: bilinear |
| Code: https://github.com/rwightman/pytorch-image-models/blob/b9843f954b0457af2db4f9dea41a8538f51f5d78/timm/models/resnetv2.py#L437 |
| Weights: https://storage.googleapis.com/bit_models/BiT-M-R50x3-ILSVRC2012.npz |
| Results: |
| - Task: Image Classification |
| Dataset: ImageNet |
| Metrics: |
| Top 1 Accuracy: 83.75% |
| Top 5 Accuracy: 97.12% |
| --> |