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Tracking mentions began in Dec 2020.
Transcribe music sheet photo into MusicXML (OMR)
2 projects | reddit.com/r/Python | 17 Dec 2021
oemer2 projects | reddit.com/r/Python | 17 Dec 2021
Yes, sure. There is a simple demo website. You can find it from the description of the Github repo. You can also try it on colab, which you only need to press the start button one-by-one, and you can test any input image you want.
What are some alternatives?
Face-Mask-Detection - Face Mask Detection system based on computer vision and deep learning using OpenCV and Tensorflow/Keras
vqgan-clip-generator - Implements VQGAN+CLIP for image and video generation, and style transfers, based on text and image prompts. Emphasis on ease-of-use, documentation, and smooth video creation.
Orchestra - Orchestra is a sheet music reader (optical music recognition (OMR) system) that converts sheet music to a machine-readable version.
OMRChecker - Read OMRs fast and accurately using a scanner 🖨 or your phone 🤳.
neural-style-transfer - :paintbrush: This repository contains, well-structured Python library and runnable fully prepared Python notebook of the "Neural Style Transfer" algorithm
OAD - Collection of tools and scripts useful to automate microscopy workflows in ZEN Blue using Python and Open Application Development tools and AI tools.
Multi-Type-TD-TSR - Extracting Tables from Document Images using a Multi-stage Pipeline for Table Detection and Table Structure Recognition:
computervision-recipes - Best Practices, code samples, and documentation for Computer Vision.