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| Dataset Zoo | |
| ################## | |
| LAVIS inherently supports a wide variety of common language-vision datasets by providing automatic download scripts to help download and organize these datasets; | |
| and implements PyTorch datasets for these datasets. To view supported datasets, use the following code: | |
| .. code-block:: python | |
| from lavis.datasets.builders import dataset_zoo | |
| dataset_names = dataset_zoo.get_names() | |
| print(dataset_names) | |
| # ['aok_vqa', 'coco_caption', 'coco_retrieval', 'coco_vqa', 'conceptual_caption_12m', | |
| # 'conceptual_caption_3m', 'didemo_retrieval', 'flickr30k', 'imagenet', 'laion2B_multi', | |
| # 'msrvtt_caption', 'msrvtt_qa', 'msrvtt_retrieval', 'msvd_caption', 'msvd_qa', 'nlvr', | |
| # 'nocaps', 'ok_vqa', 'sbu_caption', 'snli_ve', 'vatex_caption', 'vg_caption', 'vg_vqa'] | |
| print(len(dataset_names)) | |
| # 23 | |
| Auto-Downloading and Loading Datasets | |
| ###################################### | |
| We now take COCO caption dataset as an example to demonstrate how to download and prepare the dataset. | |
| In ``lavis/datasets/download_scripts/``, we provide tools to download most common public language-vision datasets supported by LAVIS. | |
| The COCO caption dataset uses images from COCO dataset. Therefore, we first download COCO images via: | |
| .. code-block:: bash | |
| cd lavis/datasets/download_scripts/ && python download_coco.py | |
| This will automatically download and extract COCO images to the default LAVIS cache location. | |
| The default cache location is ``~/.cache/lavis``, defined in ``lavis/configs/default.yaml``. | |
| After downloading the images, we can use ``load_dataset()`` to obtain the dataset. On the first run, this will automatically download and cache annotation files. | |
| .. code-block:: python | |
| from lavis.datasets.builders import load_dataset | |
| coco_dataset = load_dataset("coco_caption") | |
| print(coco_dataset.keys()) | |
| # dict_keys(['train', 'val', 'test']) | |
| print(len(coco_dataset["train"])) | |
| # 566747 | |
| print(coco_dataset["train"][0]) | |
| # {'image': <PIL.Image.Image image mode=RGB size=640x480>, | |
| # 'text_input': 'A woman wearing a net on her head cutting a cake. ', | |
| # 'image_id': 0} | |
| If you already host a local copy of the dataset, you can pass in the ``vis_path`` argument to change the default location to load images. | |
| .. code-block:: python | |
| coco_dataset = load_dataset("coco_caption", vis_path=YOUR_LOCAL_PATH) | |
| Model Zoo | |
| #################################### | |
| LAVIS supports a growing list of pre-trained models for different tasks, | |
| datatsets and of varying sizes. Let's get started by viewing the supported models. | |
| .. code-block:: python | |
| from lavis.models import model_zoo | |
| print(model_zoo) | |
| # ================================================== | |
| # Architectures Types | |
| # ================================================== | |
| # albef_classification base, ve | |
| # albef_nlvr base | |
| # albef_pretrain base | |
| # albef_retrieval base, coco, flickr | |
| # albef_vqa base, vqav2 | |
| # alpro_qa base, msrvtt, msvd | |
| # alpro_retrieval base, msrvtt, didemo | |
| # blip_caption base, base_coco, large, large_coco | |
| # blip_classification base | |
| # blip_feature_extractor base | |
| # blip_nlvr base | |
| # blip_pretrain base | |
| # blip_retrieval base, coco, flickr | |
| # blip_vqa base, vqav2 | |
| # clip ViT-B-32, ViT-B-16, ViT-L-14, ViT-L-14-336, RN50 | |
| # show total number of support model variants | |
| len(model_zoo) | |
| # 33 | |
| Inference with Pre-trained Models | |
| #################################### | |
| Now let's see how to use models in LAVIS to perform inference on example data. We first | |
| load a sample image from local. | |
| .. code-block:: python | |
| from PIL import Image | |
| # setup device to use | |
| device = torch.device("cuda" if torch.cuda.is_available() else "cpu") | |
| # load sample image | |
| raw_image = Image.open("docs/_static/merlion.png").convert("RGB") | |
| This example image shows `Merlion park <https://en.wikipedia.org/wiki/Merlion>`_ (`image credit <https://theculturetrip.com/asia/singapore/articles/what-exactly-is-singapores-merlion-anyway/>`_), a landmark in Singapore. | |
| .. image:: _static/merlion.png | |
| Image Captioning | |
| ******************************* | |
| We now use the BLIP model to generate a caption for the image. To make inference even easier, we also associate each | |
| pre-trained model with its preprocessors (transforms), we use ``load_model_and_preprocess()`` with the following arguments: | |
| - ``name``: The name of the model to load. This could be a pre-trained model, task model, or feature extractor. See ``model_zoo`` for a full list of model names. | |
| - ``model_type``: Each architecture has variants trained on different datasets and at different scale. See Types column in ``model_zoo`` for a full list of model types. | |
| - ``is_eval``: if `True`, set the model to evaluation mode. This is desired for inference or feature extraction. | |
| - ``device``: device to load the model to. | |
| .. code-block:: python | |
| from lavis.models import load_model_and_preprocess | |
| # loads BLIP caption base model, with finetuned checkpoints on MSCOCO captioning dataset. | |
| # this also loads the associated image processors | |
| model, vis_processors, _ = load_model_and_preprocess(name="blip_caption", model_type="base_coco", is_eval=True, device=device) | |
| # preprocess the image | |
| # vis_processors stores image transforms for "train" and "eval" (validation / testing / inference) | |
| image = vis_processors["eval"](raw_image).unsqueeze(0).to(device) | |
| # generate caption | |
| model.generate({"image": image}) | |
| # ['a large fountain spewing water into the air'] | |
| You may also load models and their preprocessors separately via ``load_model()`` and ``load_processor()``. | |
| In BLIP, you can also generate diverse captions by turning nucleus sampling on. | |
| .. code-block:: python | |
| from lavis.processors import load_processor | |
| from lavis.models import load_model | |
| # load image preprocesser used for BLIP | |
| vis_processor = load_processor("blip_image_eval").build(image_size=384) | |
| model = load_model(name="blip_caption", model_type="base_coco", is_eval=True, device=device) | |
| image = vis_processor(image).unsqueeze(0).to(device) | |
| model.generate({"image": raw_image}, use_nucleus_sampling=True) | |
| # one generated random sample: ['some very pretty buildings and some water jets'] | |
| Visual question answering (VQA) | |
| ******************************* | |
| BLIP model is able to answer free-form questions about images in natural language. | |
| To access the VQA model, simply replace the ``name`` and ``model_type`` arguments | |
| passed to ``load_model_and_preprocess()``. | |
| .. code-block:: python | |
| from lavis.models import load_model_and_preprocess | |
| model, vis_processors, txt_processors = load_model_and_preprocess(name="blip_vqa", model_type="vqav2", is_eval=True, device=device) | |
| # ask a random question. | |
| question = "Which city is this photo taken?" | |
| image = vis_processors["eval"](raw_image).unsqueeze(0).to(device) | |
| question = txt_processors["eval"](question) | |
| model.predict_answers(samples={"image": image, "text_input": question}, inference_method="generate") | |
| # ['singapore'] | |
| Unified Feature Extraction Interface | |
| #################################### | |
| LAVIS provides a unified interface to extract multimodal features from each architecture. | |
| To extract features, we load the feature extractor variants of each model. | |
| The multimodal feature can be used for multimodal classification. The low-dimensional unimodal features can be used to compute cross-modal similarity. | |
| .. code-block:: python | |
| from lavis.models import load_model_and_preprocess | |
| model, vis_processors, txt_processors = load_model_and_preprocess(name="blip_feature_extractor", model_type="base", is_eval=True, device=device) | |
| caption = "a large fountain spewing water into the air" | |
| image = vis_processors["eval"](raw_image).unsqueeze(0).to(device) | |
| text_input = txt_processors["eval"](caption) | |
| sample = {"image": image, "text_input": [text_input]} | |
| features_multimodal = model.extract_features(sample) | |
| print(features_multimodal.keys()) | |
| # odict_keys(['image_embeds', 'multimodal_embeds']) | |
| print(features_multimodal.multimodal_embeds.shape) | |
| # torch.Size([1, 12, 768]), use features_multimodal[:, 0, :] for multimodal classification tasks | |
| features_image = model.extract_features(sample, mode="image") | |
| print(features_image.keys()) | |
| # odict_keys(['image_embeds', 'image_embeds_proj']) | |
| print(features_image.image_embeds.shape) | |
| # torch.Size([1, 197, 768]) | |
| print(features_image.image_embeds_proj.shape) | |
| # torch.Size([1, 197, 256]) | |
| features_text = model.extract_features(sample, mode="text") | |
| print(features_text.keys()) | |
| # odict_keys(['text_embeds', 'text_embeds_proj']) | |
| print(features_text.text_embeds.shape) | |
| # torch.Size([1, 12, 768]) | |
| print(features_text.text_embeds_proj.shape) | |
| # torch.Size([1, 12, 256]) | |
| similarity = features_image.image_embeds_proj[:, 0, :] @ features_text.text_embeds_proj[:, 0, :].t() | |
| print(similarity) | |
| # tensor([[0.2622]]) | |
| Since LAVIS supports a unified feature extraction interface, minimal changes are necessary to use a different model as feature extractor. For example, | |
| to use ALBEF as the feature extractor, one only needs to change the following line: | |
| .. code-block:: python | |
| model, vis_processors, txt_processors = load_model_and_preprocess(name="albef_feature_extractor", model_type="base", is_eval=True, device=device) | |
| Similarly, to use CLIP as feature extractor: | |
| .. code-block:: python | |
| model, vis_processors, txt_processors = load_model_and_preprocess(name="clip_feature_extractor", model_type="base", is_eval=True, device=device) | |
| # model, vis_processors, txt_processors = load_model_and_preprocess(name="clip_feature_extractor", model_type="RN50", is_eval=True, device=device) | |
| # model, vis_processors, txt_processors = load_model_and_preprocess(name="clip_feature_extractor", model_type="ViT-L-14", is_eval=True, device=device) | |