# -*- coding: utf-8 -*- """Gradio with DocFormer Automatically generated by Colaboratory. Original file is located at https://colab.research.google.com/drive/1_XBurG-8jYF4eJJK5VoCJ2Y1v6RV9iAW """ ## Requirements.txt import os os.system('pip install pyyaml==5.1') ## install PyTesseract os.system('pip install -q pytesseract') os.environ["TOKENIZERS_PARALLELISM"] = "false" ## Importing the functions from the DocFormer Repo from dataset import create_features from modeling import DocFormerEncoder,ResNetFeatureExtractor,DocFormerEmbeddings,LanguageFeatureExtractor from transformers import BertTokenizerFast from utils import DocFormer ## Hyperparameters import torch seed = 42 target_size = (500, 384) max_len = 128 ## Setting some hyperparameters device = 'cuda' if torch.cuda.is_available() else 'cpu' config = { "coordinate_size": 96, ## (768/8), 8 for each of the 8 coordinates of x, y "hidden_dropout_prob": 0.1, "hidden_size": 768, "image_feature_pool_shape": [7, 7, 256], "intermediate_ff_size_factor": 4, "max_2d_position_embeddings": 1024, "max_position_embeddings": 128, "max_relative_positions": 8, "num_attention_heads": 12, "num_hidden_layers": 12, "pad_token_id": 0, "shape_size": 96, "vocab_size": 30522, "layer_norm_eps": 1e-12, } ## Defining the tokenizer tokenizer = BertTokenizerFast.from_pretrained("bert-base-uncased") docformer = DocFormer(config) # path_to_weights = 'drive/MyDrive/docformer_rvl_checkpoint/docformer_v1.ckpt' url = 'https://www.kaggleusercontent.com/kf/97691030/eyJhbGciOiJkaXIiLCJlbmMiOiJBMTI4Q0JDLUhTMjU2In0..ztbnfHUlYK1kHw0jKXt1QA.DfJGkOgL9TBiATpTSuKwMoaKfApiVDyncy5kMQb-8FeayksRYddv3tummbzYjPOe9bYuSf1ZSqtcfMY4t1-HenQwnxWZ9HektDmQbcuQaGN7lPwxIzIIjUk3zOkDH6UIcmAeUrPpIbMQ9ZHRIGY9LVAWx1lDctT-9QEfEpdHceS4bNTTrftxi-GBCqd4aLACNz_veXM6YqsplQulb7D9ARZYDOxgpAYl3bDL2-KwduLgCusostp7-uzCTkBeJRQ8LpdmHdRY6FmWcf47vFBcTpG9Qoeml3Sr4EUXEcBKfPKMbDbwIbknoV9TuxGLtKHAu4kyWyRCvLb_20FJ4oZSoQHko0joTeIwOHVPeKpAadT0R3soXGXs7jbcEezdoCz48NFKLU_1lkzeg43ExAgf47iE4_4ErEoi_Hs0deINAY1TunkELGjAO8AuVI4z8fctJgIq_u6rg_-_zcQPDRGqCnoe3M4jtmRWSPFsnOGznezr87jg1bb3hTF1g8RIWWyqmpzUccpMqw27x_ZUkm3UZSQ3Axg7SdqH4XuhtqcujUlH4p51UP7Iv0NlLYMcMpWEFJ630e-kcx8IpKycMVg484Pm8SzI0rTUU6FqA-csBWX1GGAOJwDQR4VYiLTMkd35zNp7byO56uXd5cLXrmcOZdxetrXN8IHAw3GxmlEmi8u-iuZlBwbdWhTx_W3hnwWT.XyPnjS0IQxQ_QlNUd36QVQ/models/epoch=0-step=753.ckpt' try: docformer.load_from_checkpoint(url) except: pass id2label = ['scientific_report', 'resume', 'memo', 'file_folder', 'specification', 'news_article', 'letter', 'form', 'budget', 'handwritten', 'email', 'invoice', 'presentation', 'scientific_publication', 'questionnaire', 'advertisement'] import gradio as gr ## Taken from LayoutLMV2 space image = gr.inputs.Image(type="pil") label = gr.outputs.Label(num_top_classes=5) examples = [['00093726.png'], ['00866042.png']] title = "Interactive demo: DocFormer for Image Classification" description = "Demo for classifying document images with DocFormer model. To use it, \ simply upload an image or use the example images below and click 'submit' to let the model predict the 5 most probable Document classes. \ Results will show up in a few seconds." def classify_image(image): image.save('sample_img.png') final_encoding = create_features( './sample_img.png', tokenizer, add_batch_dim=True, target_size=target_size, max_seq_length=max_len, path_to_save=None, save_to_disk=False, apply_mask_for_mlm=False, extras_for_debugging=False, use_ocr = True ) keys_to_reshape = ['x_features', 'y_features', 'resized_and_aligned_bounding_boxes'] for key in keys_to_reshape: final_encoding[key] = final_encoding[key][:, :max_len] from torchvision import transforms # ## Normalization to these mean and std (I have seen some tutorials used this, and also in image reconstruction, so used it) transform = transforms.Normalize((0.5, 0.5, 0.5), (0.5, 0.5, 0.5)) final_encoding['resized_scaled_img'] = transform(final_encoding['resized_scaled_img']) output = docformer.forward(final_encoding) output = output[0].softmax(axis = -1) final_pred = {} for i, score in enumerate(output): score = output[i] final_pred[id2label[i]] = score.detach().cpu().tolist() return final_pred gr.Interface(fn=classify_image, inputs=image, outputs=label, title=title, description=description, examples=examples, enable_queue=True).launch(debug=True)