A lightweight, cross-platform, & accurate Python3 image sorter with facial recognition capabilities.
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Updated
May 28, 2024 - Python
A lightweight, cross-platform, & accurate Python3 image sorter with facial recognition capabilities.
Repositório dos exemplos e desafios utilizados na disciplina de Visão Computacional do curso de MBA Machine Learning da FIAP
👁 Using YOLOv8 to detect face parts
Engagement Analysis with Head Pose Estimation is a computer vision project that utilizes Mediapipe library for facial landmarks detection, OpenCV for computer vision tasks, and NumPy/Pandas for data manipulation. It estimates head pose and gaze direction to determine whether the user is engaged or not.
GiMeFive: Towards Interpretable Facial Emotion Classification 😄😲😭😡🤢😨 (PyTorch Implementation)
[PR'24] "LDDMM-Face: Large deformation diffeomorphic metric learning for cross-annotation face alignment".
State-of-the-art face detection and face recognition for .NET.
Robust FEC-CNN for Face Datasets
Programmatically morph 3D models of faces
Detecting Facial Landmarks on 3D Models Based on Geometric Properties
Area and Volume Algorithms on 3D Models
ControlNet Using the Facial Landmark Condition for De-identification Purposes
Show me how do I feel now.. 😄😲🤢😨😭😡
OneStopVision is an open-source toolkit offering a comprehensive suite of algorithms for face and body analysis, landmark extraction, and ControlNet integration in Stable Diffusion.
👁️ Facial Landmark Annotation Tool with OpenCV
This project, created for the "Vision and Cognitive Systems" course, employs generative networks with landmarks as priors to reconstruct full-size and small-size blind faces.
Face Filter using Deep Learning, Facial Landmarks and Delaunay Triangulation.
This repo contains code and instructions for the detection of faces in event streams
Eye Movement Detection Facial Landmark dan KNN
Python library for analysing faces using PyTorch
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