Face detection using Facial Landmark prediction and Comparision of standard emotion recognition algorithms
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Updated
Mar 12, 2021 - Jupyter Notebook
Face detection using Facial Landmark prediction and Comparision of standard emotion recognition algorithms
Automatically predict the location of the image based on any landmarks depicted in the image.
In this project I'm going to predict landmarks on face images.
Landmark Classification & Tagging for Social Media using Convolutional Neural Networks (CNNs)
A set of Object Motion and Localization projects, focused on localising robots, including self-driving cars.
An Android application aimed at assisting tourists in a foreign country.
25581-Images-88-Facial-Landmarks-Annotation-Data
Project for information security. We`re gonna recognize human emotions in the video.
This repository contains code to detect (track) landmark.
High accurate tool for automatic faces detection with landmarks
An Android application aimed at assisting tourists in a foreign country.
RepDetect is an android mobile application for workout enthusiast which uses Google MediaPipe Pose landmark detection using MLKit to create a basic fitness application.
Makeup application through DLIB and postprocessing and face enhancement through CodeFormer
high accuracy facial landmark detection. with Look At Boundary model.
Python wrapper for the dlib model with automated model download and predict functionalities.
Computer vision project with the objective of driver drowsiness detection by implementation of CNNs
Bone Age Maturity estimation using a Lateral Cephalogram X-ray image and deep neural networks (UNet)
Detecting Facial Landmarks on 3D Models Based on Geometric Properties
This is a computer vision project to apply various masks on facial images using landmark detection and mask morphing.
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