import os os.environ["TOKENIZERS_PARALLELISM"] = "false" from PIL import ImageDraw import streamlit as st from st_clickable_images import clickable_images st.set_page_config(layout="wide") import torch from docquery.pipeline import get_pipeline from docquery.document import load_bytes, load_document def ensure_list(x): if isinstance(x, list): return x else: return [x] CHECKPOINTS = { "LayoutLMv1 🦉": "impira/layoutlm-document-qa", "Donut 🍩": "naver-clova-ix/donut-base-finetuned-docvqa", } @st.experimental_singleton(show_spinner=False) def construct_pipeline(model): device = "cuda" if torch.cuda.is_available() else "cpu" ret = get_pipeline(checkpoint=CHECKPOINTS[model], device=device) return ret @st.cache(show_spinner=False) def run_pipeline(model, question, document, top_k): pipeline = construct_pipeline(model) return pipeline(question=question, **document.context, top_k=top_k) # TODO: Move into docquery # TODO: Support words past the first page (or window?) def lift_word_boxes(document): return document.context["image"][0][1] def expand_bbox(word_boxes): if len(word_boxes) == 0: return None min_x, min_y, max_x, max_y = zip(*[x[1] for x in word_boxes]) return [min(min_x), min(min_y), max(max_x), max(max_y)] # LayoutLM boxes are normalized to 0, 1000 def normalize_bbox(box, width, height): pct = [c / 1000 for c in box] return [pct[0] * width, pct[1] * height, pct[2] * width, pct[3] * height] st.markdown("# DocQuery: Query Documents w/ NLP") if "document" not in st.session_state: st.session_state["document"] = None if "last_clicked" not in st.session_state: st.session_state["last_clicked"] = None input_col, model_col = st.columns(2) with input_col: input_type = st.radio( "Pick an input type", ["Upload", "URL", "Examples"], horizontal=True ) with model_col: model_type = st.radio("Pick a model", list(CHECKPOINTS.keys()), horizontal=True) def load_file_cb(): if st.session_state.file_input is None: return file = st.session_state.file_input with loading_placeholder: with st.spinner("Processing..."): document = load_bytes(file, file.name) _ = document.context st.session_state.document = document def load_url_cb(): if st.session_state.url_input is None: return url = st.session_state.url_input with loading_placeholder: with st.spinner("Downloading..."): document = load_document(url) with st.spinner("Processing..."): _ = document.context st.session_state.document = document examples = [ ( "https://templates.invoicehome.com/invoice-template-us-neat-750px.png", "What is the invoice number?", ), ( "https://miro.medium.com/max/787/1*iECQRIiOGTmEFLdWkVIH2g.jpeg", "What is the purchase amount?", ), ( "https://www.accountingcoach.com/wp-content/uploads/2013/10/income-statement-example@2x.png", "What are net sales for 2020?", ), ] imgs_clicked = [] if input_type == "Upload": file = st.file_uploader( "Upload a PDF or Image document", key="file_input", on_change=load_file_cb ) elif input_type == "URL": url = st.text_input("URL", "", key="url_input", on_change=load_url_cb) elif input_type == "Examples": example_cols = st.columns(len(examples)) for (i, (path, question)) in enumerate(examples): with example_cols[i]: imgs_clicked.append( clickable_images( [path], div_style={ "display": "flex", "justify-content": "center", "flex-wrap": "wrap", "cursor": "pointer", }, img_style={"margin": "5px", "height": "200px"}, ) ) st.markdown( f"

{question}

", unsafe_allow_html=True, ) print(imgs_clicked) imgs_clicked = [-1] * len(imgs_clicked) # clicked = clickable_images( # [x[0] for x in examples], # titles=[x[1] for x in examples], # div_style={"display": "flex", "justify-content": "center", "flex-wrap": "wrap"}, # img_style={"margin": "5px", "height": "200px"}, # ) # # st.markdown(f"Image #{clicked} clicked" if clicked > -1 else "No image clicked") question = st.text_input("QUESTION", "", key="question") document = st.session_state.document loading_placeholder = st.empty() if document is not None: col1, col2 = st.columns(2) image = document.preview question = st.session_state.question colors = ["blue", "red", "green"] if document is not None and question is not None and len(question) > 0: col2.header(f"Answers ({model_type})") with col2: answers_placeholder = st.container() answers_loading_placeholder = st.container() with answers_loading_placeholder: # Run this (one-time) expensive operation outside of the processing # question placeholder with st.spinner("Constructing pipeline..."): construct_pipeline(model_type) with st.spinner("Processing question..."): predictions = run_pipeline( model=model_type, question=question, document=document, top_k=1 ) with answers_placeholder: image = image.copy() draw = ImageDraw.Draw(image) for i, p in enumerate(ensure_list(predictions)): col2.markdown(f"#### { p['answer'] }: ({round(p['score'] * 100, 1)}%)") if "start" in p and "end" in p: x1, y1, x2, y2 = normalize_bbox( expand_bbox( lift_word_boxes(document)[p["start"] : p["end"] + 1] ), image.width, image.height, ) draw.rectangle(((x1, y1), (x2, y2)), outline=colors[i], width=3) if document is not None: col1.image(image, use_column_width="auto") "DocQuery uses LayoutLMv1 fine-tuned on DocVQA, a document visual question answering dataset, as well as SQuAD, which boosts its English-language comprehension. To use it, simply upload an image or PDF, type a question, and click 'submit', or click one of the examples to load them." "[Github Repo](https://github.com/impira/docquery)"