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import os | |
import glob | |
import gradio as gr | |
from predict_cheque_parser import parse_cheque_with_donut | |
##Create list of examples to be loaded | |
example_list = glob.glob("examples/cheque_parser/*") | |
example_list = list(map(lambda el:[el], example_list)) | |
demo = gr.Blocks() | |
with demo: | |
gr.Markdown("# **<p align='center'>ChequeEasy: Banking with Transformers </p>**") | |
gr.Markdown("ChequeEasy is a project that aims to simplify the process of approval of cheques and making it easier for both bank officials and customers. \ | |
This project leverages Donut model proposed in the paper <a href=\"https://arxiv.org/abs/2111.15664/\"> OCR-free Document Understanding Transformer </a> for the parsing of the required data from cheques." \ | |
"Donut is based on a very simple transformer encoder and decoder architecture. It's main USP is that it is an OCR-free approach to Visual Document Understanding (VDU) and can perform tasks like document classification, information extraction as well as VQA. \ | |
OCR based techniques come with several limitations such as requiring use of additional downstream models, lack of understanding about document structure, requiring use of hand crafted rules for information extraction,etc. \ | |
Donut helps you get rid of all of these OCR specific limitations. The model for the project has been trained using a subset of this <a href=\"https://www.kaggle.com/datasets/medali1992/cheque-images/\"> kaggle dataset </a>. The original dataset contains images of cheques of 10 different banks. \ | |
A filtered version of this dataset containing images of cheques from 4 banks that are more commonly found in the Indian Banking Sector was created with ground truth prepared in the format required for fine-tuning Donut. This <a href=\"https://huggingface.co/datasets/shivi/cheques_sample_data/\"> dataset </a> is available on the Hugging Face Hub for download.") | |
with gr.Tabs(): | |
with gr.TabItem("Cheque Parser"): | |
gr.Markdown("This module is used to extract details filled by a bank customer from cheques. At present the model is trained to extract details like - Payee Name, Amount in words, Amount in Figures, Bank Name and Cheque Date. \ | |
This model can be further trained to parse additional details like MICR Code, Cheque Number, Account Number, etc. \ | |
Additionally, the app compares if the extracted legal & courtesy amount are matching which is an important check done during approval process of cheques. \ | |
It also checks if the cheque is stale. A cheque is considered stale if it is presented to the bank 3 months after the date mentioned on the cheque.") | |
with gr.Box(): | |
gr.Markdown("**Upload Cheque**") | |
input_image_parse = gr.Image(type='filepath', label="Input Cheque") | |
with gr.Box(): | |
gr.Markdown("**Parsed Cheque Data**") | |
payee_name = gr.Textbox(label="Payee Name") | |
amt_in_words = gr.Textbox(label="Courtesy Amount") | |
amt_in_figures = gr.Textbox(label="Legal Amount") | |
cheque_date = gr.Textbox(label="Cheque Date") | |
bank_name = gr.Textbox(label="Bank Name") | |
amts_matching = gr.Checkbox(label="Legal & Courtesy Amount Matching") | |
stale_check = gr.Checkbox(label="Stale Cheque") | |
with gr.Box(): | |
gr.Markdown("**Predict**") | |
with gr.Row(): | |
parse_cheque = gr.Button("Call Donut π©") | |
with gr.Column(): | |
gr.Examples(example_list, [input_image_parse], | |
[payee_name,amt_in_words,amt_in_figures,cheque_date],parse_cheque_with_donut,cache_examples=False) | |
parse_cheque.click(parse_cheque_with_donut, inputs=input_image_parse, outputs=[payee_name,amt_in_words,amt_in_figures,bank_name,cheque_date,amts_matching,stale_check]) | |
gr.Markdown('\n Solution built by: <a href=\"https://twitter.com/singhshiviii/\">Shivalika Singh</a>') | |
demo.launch() |