Code for the SIGGRAPH 2022 paper "DeltaConv: Anisotropic Operators for Geometric Deep Learning on Point Clouds."

Overview

DeltaConv

[Paper] [Project page]

Code for the SIGGRAPH 2022 paper "DeltaConv: Anisotropic Operators for Geometric Deep Learning on Point Clouds" by Ruben Wiersma, Ahmad Nasikun, Elmar Eisemann, and Klaus Hildebrandt.

Anisotropic convolution is a central building block of CNNs but challenging to transfer to surfaces. DeltaConv learns combinations and compositions of operators from vector calculus, which are a natural fit for curved surfaces. The result is a simple and robust anisotropic convolution operator for point clouds with state-of-the-art results.

Top: unlike images, surfaces have no global coordinate system. Bottom: DeltaConv learns both scalar and vector features using geometric operators.

Contents

Installation

  1. Clone this repository:
git clone https://github.com/rubenwiersma/deltaconv.git
  1. Create a conda environment from the environment.yml:
conda env create -n deltaconv -f environment.yml

Done!

Manual installation

If you wish to install DeltaConv in your own environment, proceed as follows.

  1. Make sure that you have installed:

  2. Install DeltaConv:

pip install deltaconv

Building DeltaConv for yourself

  1. Make sure you clone the repository with submodules:
git clone --recurse-submodules https://github.com/rubenwiersma/deltaconv.git

If you have already cloned the repository without submodules, you can fix it with git submodule update --init --recursive.

  1. Install from folder:
cd [root_folder]
pip install

Replicating the experiments

See the README.md in replication_scripts for instructions on replicating the experiments and using the pre-trained weights (available in experiments/pretrained_weights).

In short, you can run bash scripts to replicate our experiments. For example, evaluating pre-trained weights on ShapeNet:

cd [root_folder]
conda activate deltaconv
bash replication_scripts/pretrained/shapenet.sh

You can also directly run the python files in experiments:

python experiments/train_shapenet.py

Use the -h or --help flag to find out which arguments can be passed to the training script:

python experiments/train_shapenet.py -h

You can keep track of the training process with tensorboard:

tensorboard logdir=experiments/runs/shapenet_all

Anisotropic Diffusion

The code that was used to generate Figure 2 from the paper and Figure 2 and 3 from the supplement is a notebook in the folder experiments/anisotropic_diffusion.

Data

The training scripts assume that you have a data folder in experiments. ModelNet40 and ShapeNet download the datasets from a public repository. Instructions to download the data for human body shape segmentation, SHREC, and ScanObjectNN are given in the training scripts.

Tests

In the paper, we make statements about a number of properties of DeltaConv that are either a result of prior work or due to the implementation. We created a test suite to ensure that these properties hold for the implementation, along with unit tests for each module. For example:

  • Section 3.6, 3.7: Vector MLPs are equivariant to norm-preserving transformations, or coordinate-independent (rotations, reflections)
    • test/nn/test_mlp.py
    • test/nn/test_nonlin.py
  • Section 3.7: DeltaConv is coordinate-independent, a forward pass on a shape with one choice of bases leads to the same output and weight updates when run with different bases
    • test/nn/test_deltaconv.py
  • Introduction, section 3.2: The operators are robust to noise and outliers.
    • test/geometry/test_grad_div.py
  • Supplement, section 1: Vectors can be mapped between points with equation (15).
    • test/geometry/test_grad_div.py

Citations

Please cite our paper if this code contributes to an academic publication:

@Article{Wiersma2022DeltaConv,
  author    = {Ruben Wiersma, Ahmad Nasikun, Elmar Eisemann, Klaus Hildebrandt},
  journal   = {Transactions on Graphics},
  title     = {DeltaConv: Anisotropic Operators for Geometric Deep Learning on Point Clouds},
  year      = {2022},
  month     = jul,
  number    = {4},
  volume    = {41},
  doi       = {10.1145/3528223.3530166},
  publisher = {ACM},
}

The farthest point sampling code relies on Geometry Central:

@misc{geometrycentral,
  title = {geometry-central},
  author = {Nicholas Sharp and Keenan Crane and others},
  note = {www.geometry-central.net},
  year = {2019}
}

And we make use of PyG (and underlying packages) to load point clouds, compute sparse matrix products, and compute nearest neighbors:

@inproceedings{Fey/Lenssen/2019,
  title={Fast Graph Representation Learning with {PyTorch Geometric}},
  author={Fey, Matthias and Lenssen, Jan E.},
  booktitle={ICLR Workshop on Representation Learning on Graphs and Manifolds},
  year={2019},
}
TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision

TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision @misc{you2019torchcv, author = {Ansheng You and Xiangtai Li and Zhen Zhu a

Donny You 2.2k Jan 06, 2023
Streaming Anomaly Detection Framework in Python (Outlier Detection for Streaming Data)

Python Streaming Anomaly Detection (PySAD) PySAD is an open-source python framework for anomaly detection on streaming multivariate data. Documentatio

Selim Firat Yilmaz 181 Dec 18, 2022
subpixel: A subpixel convnet for super resolution with Tensorflow

subpixel: A subpixel convolutional neural network implementation with Tensorflow Left: input images / Right: output images with 4x super-resolution af

Atrium LTS 2.1k Dec 23, 2022
Implementation of Kronecker Attention in Pytorch

Kronecker Attention Pytorch Implementation of Kronecker Attention in Pytorch. Results look less than stellar, but if someone found some context where

Phil Wang 16 May 06, 2022
This is a project based on retinaface face detection, including ghostnet and mobilenetv3

English | 简体中文 RetinaFace in PyTorch Chinese detailed blog:https://zhuanlan.zhihu.com/p/379730820 Face recognition with masks is still robust---------

pogg 59 Dec 21, 2022
Pytorch implementation of MaskGIT: Masked Generative Image Transformer

Pytorch implementation of MaskGIT: Masked Generative Image Transformer

Dominic Rampas 247 Dec 16, 2022
The comma.ai Calibration Challenge!

Welcome to the comma.ai Calibration Challenge! Your goal is to predict the direction of travel (in camera frame) from provided dashcam video. This rep

comma.ai 697 Jan 05, 2023
PyTorch implementation of Convolutional Neural Fabrics http://arxiv.org/abs/1606.02492

PyTorch implementation of Convolutional Neural Fabrics arxiv:1606.02492 There are some minor differences: The raw image is first convolved, to obtain

Anuvabh Dutt 25 Dec 22, 2021
Virtual hand gesture mouse using a webcam

NonMouse 日本語のREADMEはこちら This is an application that allows you to use your hand itself as a mouse. The program uses a web camera to recognize your han

Yuki Takeyama 55 Jan 01, 2023
GraphGT: Machine Learning Datasets for Graph Generation and Transformation

GraphGT: Machine Learning Datasets for Graph Generation and Transformation Dataset Website | Paper Installation Using pip To install the core environm

y6q9 50 Aug 18, 2022
Approximate Nearest Neighbors in C++/Python optimized for memory usage and loading/saving to disk

Annoy Annoy (Approximate Nearest Neighbors Oh Yeah) is a C++ library with Python bindings to search for points in space that are close to a given quer

Spotify 10.6k Jan 04, 2023
Data from "HateCheck: Functional Tests for Hate Speech Detection Models" (Röttger et al., ACL 2021)

In this repo, you can find the data from our ACL 2021 paper "HateCheck: Functional Tests for Hate Speech Detection Models". "test_suite_cases.csv" con

Paul Röttger 43 Nov 11, 2022
A Deep Learning Based Knowledge Extraction Toolkit for Knowledge Base Population

DeepKE is a knowledge extraction toolkit supporting low-resource and document-level scenarios for entity, relation and attribute extraction. We provide comprehensive documents, Google Colab tutorials

ZJUNLP 1.6k Jan 05, 2023
DexterRedTool - Dexter's Red Team Tool that creates cronjob/task scheduler to consistently creates users

DexterRedTool Author: Dexter Delandro CSEC 473 - Spring 2022 This tool persisten

2 Feb 16, 2022
Code for Deep Single-image Portrait Image Relighting

Deep Single-Image Portrait Relighting [Project Page] Hao Zhou, Sunil Hadap, Kalyan Sunkavalli, David W. Jacobs. In ICCV, 2019 Overview Test script for

438 Jan 05, 2023
Facilitates implementing deep neural-network backbones, data augmentations

Introduction Nowadays, the training of Deep Learning models is fragmented and unified. When AI engineers face up with one specific task, the common wa

40 Dec 29, 2022
Codebase for Diffusion Models Beat GANS on Image Synthesis.

Codebase for Diffusion Models Beat GANS on Image Synthesis.

Katherine Crowson 128 Dec 02, 2022
一个多语言支持、易使用的 OCR 项目。An easy-to-use OCR project with multilingual support.

AgentOCR 简介 AgentOCR 是一个基于 PaddleOCR 和 ONNXRuntime 项目开发的一个使用简单、调用方便的 OCR 项目 本项目目前包含 Python Package 【AgentOCR】 和 OCR 标注软件 【AgentOCRLabeling】 使用指南 Pytho

AgentMaker 98 Nov 10, 2022
Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

ImageProcessingTransformer Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

61 Jan 01, 2023
The code for SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network.

SAG-DTA The code is the implementation for the paper 'SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network'. Requirements py

Shugang Zhang 7 Aug 02, 2022