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A PyTorch toolkit for 2D Human Pose Estimation.
Implementation of various human pose estimation models in pytorch on multiple datasets (MPII & COCO) along with pretrained models
A tool for precisely placing 3D landmarks on 3D facial scans based on the paper "Multi-view Consensus CNN for 3D Facial Landmark Placement"
3D HourGlass Networks for Human Pose Estimation Through Videos
fashionAI clothes keypoint detection
[ISBI 2024] HCA-Net: Hierarchical Context Attention Network for Intervertebral Disc Semantic Labeling
Estimate surface normals from a single image; 3-stack-hourglass Architecture using Tensorflow; Reduce the Mean Angle Error down to 0.4397164234
Pytorch implementation of the paper "Toward fast and accurate human pose estimation via soft-gated skip connections"
Hourglass network for topology extraction of retina images
tf.keras implementation of "Toward fast and accurate human pose estimation via soft-gated skip connections" by Bulat et al. and "Stacked Hourglass Networks for Human Pose Estimation" by Newell et al.
Pose estimation implemented in tensorflow 2.
Stacked Hourglass Network (shnet) for human pose estimation implemented in PyTorch
Real-time single person pose estimation.
Human pose estimation using hour-glass architecture and Tensorflow 2.0
ROS2 Humble Python node and model training tools for detecting and estimating the 6DOF pose of a fuel cap
Visual Traffic Surveillance and Analytics System
A PyTorch toolkit for 2D Human Pose Estimation.
This repository about the project of Computer Vision course at the Sapienza University of Rome: Single-Person 2D Joints Estimation using Convolutional Neural Network, Stacked Hourglass Network, etc.
Pipeline to accurately and efficiently compute the shape and orientation (pose) of a car given its RGB image by using keypoints generated from an hourglass network after optimising the estimates using the Ceres solver
Final Project of Computer Vision course in the spring semester at NYCU.
Developed a system which aims to evaluate human poses from a given set of 2D RGB images