Rasterize with the least efforts for researchers.

Related tags

Deep Learningutils3d
Overview

utils3d

Rasterize and do image-based 3D transforms with the least efforts for researchers. Based on numpy and OpenGL.

It could be helpful when you want to:

  • rasterize a simple mesh but don't want get into OpenGL chores
  • warp an image as a 2D or 3D mesh (eg. optical-flow-based warping)
  • render a optical flow image

This tool sets could help you achieve them in a few lines.

It is NOT what you are looking for when you want:

  • a differentiable rasterization tool. You should turn to nvdiffrast, pytorch3d, SoftRas etc.
  • a real-time graphics application. Though as fast as it could be, the expected performance of util3d rasterization is to be around 20 ~ 100 ms. It is not expected to fully make use of GPU performance because of the overhead of buffering every time calling rasterzation. If the best performance withou any overhead is demanded, You will have to manage buffer objects like VBO, VAO and FBO. I personally recommand moderngl as an alternative python OpenGL library.

Install

The folder of repo is a package. Clone the repo.

git clone https://github.com/EasternJournalist/utils3d.git 

Install requirements

pip install numpy
pip install moderngl

Usage

At first, one step to initialize a OpenGL context. It depends on your platform and machine.

import utils3d

ctx = utils3d.Context(standalone=True)                 # Recommanded for a standalone python program. The machine must have a display device (virtual display like X11 is also okay)
ctx = utils3d.Context(standalone=False)                 # Recommanded for a nested python script running in a windowed opengl program to share the OpenGL context, eg. Blender.
ctx = utils3d.Context(standalone=True, backend='egl')   # Recommanded for a program running on a headless linux server (without any display device)

The functions the most probably you would like to use

  • ctx.rasterize(...): rasterize trianglular mesh with vertex attributes.
  • ctx.texture(uv, texture): sample texture by a UV image. Exactly the same as grid sample, but an OpenGL shader implementation.
  • ctx.rasterize_texture(...): rasterize trianglular mesh with texture

Some other functions that could be helpful for certain purposes

  • ctx.render_flow(...): render an optical flow image given source and target geometry
  • ctx.warp_image_3d(image, pixel_positions, transform_matrix)
  • ctx.warp_image_by_flow(image, flow, occlusion_mask)

Useful tool functions

  • image_uv(width, height) : return a numpy array of shape [height, width, 2], the image uv of each pixel.
  • image_mesh(width, height, mask=None) : return a quad mesh connecting all neighboring pixels as vertices. A boolean array of shape [height, width] or [height, width, 1] mask is optional. If a mask is provided, only pixels where mask value is True are involved in te mesh.
  • triangulate(faces) : convert a polygonal mesh into a triangular mesh (naively).
  • perspective_from_image()
  • perspective_from_fov_xy()
  • projection(vertices, model_matrix=None, view_matrix=None, projection_matrix=None): project 3D points to 2D screen space following the OpenGL convention (except for using row major matrix). This also gives a insight of how the projection works when you have confusion about the coordinate system.
  • compute_face_normal(vertices, faces)
  • compute_vertex_normal(vertices, faces)
Owner
Ruicheng Wang
Microsoft Research Asia Intern
Ruicheng Wang
SwinTrack: A Simple and Strong Baseline for Transformer Tracking

SwinTrack This is the official repo for SwinTrack. A Simple and Strong Baseline Prerequisites Environment conda (recommended) conda create -y -n SwinT

LitingLin 196 Jan 04, 2023
AAAI 2022 paper - Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction

AT-BMC Unifying Model Explainability and Robustness for Joint Text Classification and Rationale Extraction (AAAI 2022) Paper Prerequisites Install pac

16 Nov 26, 2022
Implementation of Neonatal Seizure Detection using EEG signals for deploying on edge devices including Raspberry Pi.

NeonatalSeizureDetection Description Link: https://arxiv.org/abs/2111.15569 Citation: @misc{nagarajan2021scalable, title={Scalable Machine Learn

Vishal Nagarajan 11 Nov 08, 2022
SingleVC performs any-to-one VC, which is an important component of MediumVC project.

SingleVC performs any-to-one VC, which is an important component of MediumVC project. Here is the official implementation of the paper, MediumVC.

谷下雨 26 Dec 28, 2022
PyMove is a Python library to simplify queries and visualization of trajectories and other spatial-temporal data

Use PyMove and go much further Information Package Status License Python Version Platforms Build Status PyPi version PyPi Downloads Conda version Cond

Insight Data Science Lab 64 Nov 15, 2022
Pytorch and Keras Implementations of Hyperspectral Image Classification -- Traditional to Deep Models: A Survey for Future Prospects.

The repository contains the implementations for Hyperspectral Image Classification -- Traditional to Deep Models: A Survey for Future Prospects. Model

Ankur Deria 115 Jan 06, 2023
Code to reproduce results from the paper "AmbientGAN: Generative models from lossy measurements"

AmbientGAN: Generative models from lossy measurements This repository provides code to reproduce results from the paper AmbientGAN: Generative models

Ashish Bora 87 Oct 19, 2022
A robust camera and Lidar fusion based velocity estimator to undistort the pointcloud.

Lidar with Velocity A robust camera and Lidar fusion based velocity estimator to undistort the pointcloud. related paper: Lidar with Velocity : Motion

ISEE Research Group 164 Dec 30, 2022
We are More than Our JOints: Predicting How 3D Bodies Move

We are More than Our JOints: Predicting How 3D Bodies Move Citation This repo contains the official implementation of our paper MOJO: @inproceedings{Z

72 Oct 20, 2022
Training vision models with full-batch gradient descent and regularization

Stochastic Training is Not Necessary for Generalization -- Training competitive vision models without stochasticity This repository implements trainin

Jonas Geiping 32 Jan 06, 2023
Code release for "Conditional Adversarial Domain Adaptation" (NIPS 2018)

CDAN Code release for "Conditional Adversarial Domain Adaptation" (NIPS 2018) New version: https://github.com/thuml/Transfer-Learning-Library Dataset

THUML @ Tsinghua University 363 Dec 20, 2022
RealFormer-Pytorch Implementation of RealFormer using pytorch

RealFormer-Pytorch Implementation of RealFormer using pytorch. Includes comparison with classical Transformer on image classification task (ViT) wrt C

Simo Ryu 90 Dec 08, 2022
Galactic and gravitational dynamics in Python

Gala is a Python package for Galactic and gravitational dynamics. Documentation The documentation for Gala is hosted on Read the docs. Installation an

Adrian Price-Whelan 101 Dec 22, 2022
SketchEdit: Mask-Free Local Image Manipulation with Partial Sketches

SketchEdit: Mask-Free Local Image Manipulation with Partial Sketches [Paper]  [Project Page]  [Interactive Demo]  [Supplementary Material]        Usag

215 Dec 25, 2022
Code for binary and multiclass model change active learning, with spectral truncation implementation.

Model Change Active Learning Paper (To Appear) Python code for doing active learning in graph-based semi-supervised learning (GBSSL) paradigm. Impleme

Kevin Miller 1 Jul 24, 2022
an implementation of Video Frame Interpolation via Adaptive Separable Convolution using PyTorch

This work has now been superseded by: https://github.com/sniklaus/revisiting-sepconv sepconv-slomo This is a reference implementation of Video Frame I

Simon Niklaus 985 Jan 08, 2023
Advantage Actor Critic (A2C): jax + flax implementation

Advantage Actor Critic (A2C): jax + flax implementation Current version supports only environments with continious action spaces and was tested on muj

Andrey 3 Jan 23, 2022
Official PyTorch implementation of "Physics-aware Difference Graph Networks for Sparsely-Observed Dynamics".

Physics-aware Difference Graph Networks for Sparsely-Observed Dynamics This repository is the official PyTorch implementation of "Physics-aware Differ

USC-Melady 46 Nov 20, 2022
Permeability Prediction Via Multi Scale 3D CNN

Permeability-Prediction-Via-Multi-Scale-3D-CNN Data: The raw CT rock cores are obtained from the Imperial Colloge portal. The CT rock cores are sub-sa

Mohamed Elmorsy 2 Jul 06, 2022
Recovering Brain Structure Network Using Functional Connectivity

Recovering-Brain-Structure-Network-Using-Functional-Connectivity Framework: Papers: This repository provides a PyTorch implementation of the models ad

5 Nov 30, 2022