import numpy as np import torch from thingsvision import get_extractor from thingsvision.utils.storing import save_features from thingsvision.utils.data import ImageDataset, DataLoader source = 'custom' device = 'cuda' if torch.cuda.is_available() else 'cpu' model_name = 'clip' model_parameters = { 'variant': 'ViT-B/32' # This model creates 512 length vectors } # This model is more accurate but takes longer to run and not sure we need it for the demo # model_name = 'OpenCLIP' # model_parameters = { # 'variant': 'ViT-H-14', # 'dataset': 'laion2b_s32b_b79k' # # This model create 1024 length vectors # } extractor = get_extractor( model_name=model_name, source=source, device=device, pretrained=True, model_parameters=model_parameters, ) root='../images_000/' # (e.g., './images/) batch_size = 32 dataset = ImageDataset( root=root, out_path='../test_vectors', backend=extractor.get_backend(), # backend framework of model transforms=extractor.get_transformations(resize_dim=256, crop_dim=224) # set the input dimensionality to whichever values are required for your pretrained model ) batches = DataLoader( dataset=dataset, batch_size=batch_size, backend=extractor.get_backend() # backend framework of model ) module_name = 'visual' def get_features(): # we are creating 512 length vectors features = extractor.extract_features( batches=batches, module_name=module_name, flatten_acts=True, output_type="ndarray", # or "tensor" (only applicable to PyTorch models of which CLIP is one!) ) # WE ARE NOT DOING THIS append the file names to the front of the vector matrix. We turn the file names into a 40 x 1 # np array #full_data = np.hstack((np.array(dataset.file_names).reshape(-1,1), features)) # The model returns the vectors in alphbetical order for the filenames. Our other code just reads through the directory # without a sort. Therefore this needs to be a dict so we can do lookups # save_features(features, out_path='../test_vectors', file_format='txt') # file_format can be set to "npy", "txt", "mat", "pt", or "hdf5" vectors = {} for i in range(len(dataset.file_names)): vectors[dataset.file_names[i][0:16]] = features[i] return vectors if __name__ == '__main__': result = get_features() print(str(len(result)))