ocr-recognition
Here are 29 public repositories matching this topic...
An Application to extract text from image
-
Updated
May 18, 2024 - HTML
This is the minor project submitted to college. This is a web application developed using Flask for managing student assignments, providing feedback, and facilitating communication between students and teachers.
-
Updated
Apr 21, 2024 - HTML
#image_to_text_converter
-
Updated
Apr 18, 2024 - HTML
Use OCR to extract text from an image of an invoice and store the data in a database.
-
Updated
Jan 23, 2024 - HTML
Optical Character Recognition (OCR) is the process that converts an image of text into a machine-readable text format.
-
Updated
Sep 23, 2023 - HTML
This project is a web application that uses YOLOv5 and InceptionResNetV2 models for license plate detection and Optical Character Recognition (OCR) text extraction. The web applications were built using streamlit and flask
-
Updated
Aug 15, 2023 - HTML
This library is built to support optical character recognition (OCR) from images provided as urls. The core is based on Tesseract, supporting over 100 national languages worldwide.
-
Updated
Jun 28, 2023 - HTML
CSE204 Machine Learning Final project at Ecole Polytechnique
-
Updated
Jun 7, 2023 - HTML
2nd runnerup in UPES student chapter hackathon 2.0 solving the problem statement Optical Character Reading, Tumor Segmentation, Cancer Detection, and Classification
-
Updated
May 8, 2023 - HTML
-
Updated
Mar 3, 2023 - HTML
Recognize text from image in javascript | Optical Character Recognition | OCR
-
Updated
Jan 3, 2023 - HTML
stanford surgery survey
-
Updated
Dec 11, 2022 - HTML
Flask website integrated with Tesseract-OCR for reading multiple images, extracting text from them, and saving to Word, PDF, or txt file 🖼🡆🆎 [finished]
-
Updated
Jul 10, 2022 - HTML
A complete end-to-end tool to process, store and visualize scanned documents.
-
Updated
May 9, 2022 - HTML
Image to text conversion using tesserocr
-
Updated
Mar 2, 2022 - HTML
Mémoire de stage et annexes pour le Master 2 Technologies numériques appliquées à l'histoire (TNAH) de l'École nationale des chartes.
-
Updated
Jul 20, 2021 - HTML
This system is totally based on providing text-based functionalities on a single platform. It is developed using NLTK, Python, Django, HTML, CSS, Bootstrap, OCR.
-
Updated
Mar 26, 2021 - HTML
Improve this page
Add a description, image, and links to the ocr-recognition topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the ocr-recognition topic, visit your repo's landing page and select "manage topics."