Face Recognition
yoga-pose-estimation
Face Recognition | yoga-pose-estimation | |
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34 | 1 | |
52,167 | 31 | |
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0.0 | 0.0 | |
16 days ago | over 4 years ago | |
Python | Jupyter Notebook | |
MIT License | - |
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Face Recognition
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Security Image Recognition
Camera connected to a PI? Something like this could run locally: https://github.com/ageitgey/face_recognition
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Facial recognition software/API for face-blind teacher?
Have you tried this repo: github
- GitHub - ageitgey/face_recognition: The world's simplest facial recognition api for Python and the command line
- The simplest facial recognition API for Python
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Every thing you need to know about Machine Learning Pipeline
One of the most common challenges is the black-box problem, when the pipeline becomes too complex to understand it would happen. This can make it difficult to identify issues with the system or to understand why it isn't working as we expected or make accurate predictions that saiwa company find out the solution for Face Recognition. Another challenge is the time required for organizations to deploy a machine learning model, which is increasing and make real-time computing difficult . To overcome these challenges, it's important to have an efficient and rigorous ML pipeline . ML level 0 involves a manual process with its own set of challenges, while ML level 1 involves ML pipeline automation and additional components . A well-defined machine learning pipeline can help to abstract the complex process into a series of steps, allowing each team to work independently on specific tasks such as data collection, data preparation, model training, model evaluation, and model deployment.
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Reverse image search / facial recognition
Second link is an easy to implement python library is you want to build it yourself https://github.com/ageitgey/face_recognition
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Made a easy to use face recognition library
It is similar to https://github.com/ageitgey/face_recognition, except that Ageitgey's cli only compares the first face found in the image to the first one found the the second.
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Salisbury council meeting minutes addressing conspiracy theorist councillors
You'd have alot more luck with something like DLIB or an open source implementation such as: https://github.com/ageitgey/face_recognition
- Face comparison in Stable Diffusion
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Understanding different Algorithms for Facial Recognition
To know more about face_recognition module https://github.com/ageitgey/face_recognition
yoga-pose-estimation
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How to run PoseNet model and save data points for multiple images?
Or OpenPose yoga pose classifier, though I prefer OpenPifPaf because it deploys quicker and easier.
What are some alternatives?
insightface - State-of-the-art 2D and 3D Face Analysis Project
yoga-pose-CNN - Simple image classification convolutional neural net and prediction for 10 different yoga poses
CompreFace - Leading free and open-source face recognition system
Milvus - A cloud-native vector database, storage for next generation AI applications
OpenCV - Open Source Computer Vision Library
tesseract-ocr - Tesseract Open Source OCR Engine (main repository)
Kornia - Geometric Computer Vision Library for Spatial AI
Dlib - A toolkit for making real world machine learning and data analysis applications in C++
facenet - Face recognition using Tensorflow
EasyOCR - Ready-to-use OCR with 80+ supported languages and all popular writing scripts including Latin, Chinese, Arabic, Devanagari, Cyrillic and etc.
SimpleCV - The Open Source Framework for Machine Vision
deepstream-occupancy-analytics - This is a sample application for counting people entering/leaving in a building using NVIDIA Deepstream SDK, Transfer Learning Toolkit (TLT), and pre-trained models. This application can be used to build real-time occupancy analytics applications for smart buildings, hospitals, retail, etc. The application is based on deepstream-test5 sample application.