PyTorch implementation for paper Neural Marching Cubes.

Related tags

Deep LearningNMC
Overview

NMC

PyTorch implementation for paper Neural Marching Cubes, Zhiqin Chen, Hao Zhang.

Paper | Supplementary Material (to be updated)

Citation

If you find our work useful in your research, please consider citing:

@article{chen2021nmc,
  title={Neural Marching Cubes},
  author={Zhiqin Chen and Hao Zhang},
  journal={arXiv preprint arXiv:2106.11272},
  year={2021}
}

Notice

We have implemented Neural Dual Contouring (NDC). NDC is based on Dual Contouring and thus much easier to implement than NMC. It produces less triangles and vertices (1/8 of NMC, 1/4 of NMC-lite, ≈MC33), with better triangle quality. It runs faster than NMC because it has significantly less values to predict for each cube (1 bool 3 float for NDC, v.s. 5 bool 51 float for NMC), therefore the network size could be significantly reduced. Yet, it cannot reconstruct some cube cases, and may introduce non-manifold edges.

Requirements

  • Python 3 with numpy, h5py, scipy and Cython
  • PyTorch 1.8 (other versions may also work)

Build Cython module:

python setup.py build_ext --inplace

Datasets and pre-trained weights

For data preparation, please see data_preprocessing.

We provide the ready-to-use datasets here.

Backup links:

We also provide the pre-trained network weights.

Backup links:

Note that the weights are divided into six folders:

Folder Method Input
1_NMC_sdf_unit_scale NMC SDF grid, each grid cell must have unit length
2_NMC_lite_sdf_unit_scale NMC-lite SDF grid, each grid cell must have unit length
3_NMC_voxel NMC Voxel grid, 1=occupied, 0=otherwise
4_NMC_lite_voxel NMC-lite Voxel grid, 1=occupied, 0=otherwise
5_NMC_sdf_scale_0.001-2 NMC SDF grid, each grid cell could have length from 0.001 to 2.0
6_NMC_lite_sdf_scale_0.001-2 NMC-lite SDF grid, each grid cell could have length from 0.001 to 2.0
This GitHub repo NMC = 5_NMC_sdf_scale_0.001-2

Training and Testing

Before training, please replace LUT_tess.npz (the Look-Up Table for cube tessellations) in the main directory with the corresponding version of your training target (either NMC or NMC-lite). Both versions of LUT_tess.npz can be found at tessellation.

To train/test NMC with SDF input:

python main.py --train_bool --epoch 400 --data_dir groundtruth/gt_NMC --input_type sdf
python main.py --train_float --epoch 400 --data_dir groundtruth/gt_NMC --input_type sdf
python main.py --test_bool_float --data_dir groundtruth/gt_NMC --input_type sdf

To train/test NMC-lite with SDF input:

python main.py --train_bool --epoch 400 --data_dir groundtruth/gt_simplified --input_type sdf
python main.py --train_float --epoch 400 --data_dir groundtruth/gt_simplified --input_type sdf
python main.py --test_bool_float --data_dir groundtruth/gt_simplified --input_type sdf

To train/test NMC with voxel input:

python main.py --train_bool --epoch 200 --data_dir groundtruth/gt_NMC --input_type voxel
python main.py --train_float --epoch 100 --data_dir groundtruth/gt_NMC --input_type voxel
python main.py --test_bool_float --data_dir groundtruth/gt_NMC --input_type voxel

To train/test NMC-lite with voxel input:

python main.py --train_bool --epoch 200 --data_dir groundtruth/gt_simplified --input_type voxel
python main.py --train_float --epoch 100 --data_dir groundtruth/gt_simplified --input_type voxel
python main.py --test_bool_float --data_dir groundtruth/gt_simplified --input_type voxel

To evaluate Chamfer Distance, Normal Consistency, F-score, Edge Chamfer Distance, Edge F-score, you need to have the ground truth normalized obj files ready in a folder objs. See data_preprocessing for how to prepare the obj files. Then you can run:

python eval_cd_nc_f1_ecd_ef1.py

To count the number of triangles and vertices, run:

python eval_v_t_count.py

If you want to test on your own dataset, please refer to data_preprocessing for how to convert obj files into SDF grids and voxel grids. If your data are not meshes (say your data are already voxel grids), you can modify the code in utils.py to read your own data format. Check function read_data_input_only in utils.py for an example.

Owner
Zhiqin Chen
Video game addict.
Zhiqin Chen
Implementation of TransGanFormer, an all-attention GAN that combines the finding from the recent GanFormer and TransGan paper

TransGanFormer (wip) Implementation of TransGanFormer, an all-attention GAN that combines the finding from the recent GansFormer and TransGan paper. I

Phil Wang 146 Dec 06, 2022
Deep learning models for classification of 15 common weeds in the southern U.S. cotton production systems.

CottonWeeds Deep learning models for classification of 15 common weeds in the southern U.S. cotton production systems. requirements pytorch torchsumma

Dong Chen 8 Jun 07, 2022
Source code for "Pack Together: Entity and Relation Extraction with Levitated Marker"

PL-Marker Source code for Pack Together: Entity and Relation Extraction with Levitated Marker. Quick links Overview Setup Install Dependencies Data Pr

THUNLP 173 Dec 30, 2022
[ICML 2020] Prediction-Guided Multi-Objective Reinforcement Learning for Continuous Robot Control

PG-MORL This repository contains the implementation for the paper Prediction-Guided Multi-Objective Reinforcement Learning for Continuous Robot Contro

MIT Graphics Group 65 Jan 07, 2023
Контрольная работа по математическим методам машинного обучения

ML-MathMethods-Test Контрольная работа по математическим методам машинного обучения. Вычисление основных статистик, диаграмм и графиков, проверка разл

Stas Ivanovskii 1 Jan 06, 2022
Rethinking the Importance of Implementation Tricks in Multi-Agent Reinforcement Learning

RIIT Our open-source code for RIIT: Rethinking the Importance of Implementation Tricks in Multi-AgentReinforcement Learning. We implement and standard

405 Jan 06, 2023
A new codebase for Group Activity Recognition. It contains codes for ICCV 2021 paper: Spatio-Temporal Dynamic Inference Network for Group Activity Recognition and some other methods.

Spatio-Temporal Dynamic Inference Network for Group Activity Recognition The source codes for ICCV2021 Paper: Spatio-Temporal Dynamic Inference Networ

40 Dec 12, 2022
MARS: Learning Modality-Agnostic Representation for Scalable Cross-media Retrieva

Introduction This is the source code of our TCSVT 2021 paper "MARS: Learning Modality-Agnostic Representation for Scalable Cross-media Retrieval". Ple

7 Aug 24, 2022
Semantic Segmentation for Aerial Imagery using Convolutional Neural Network

This repo has been deprecated because whole things are re-implemented by using Chainer and I did refactoring for many codes. So please check this newe

Shunta Saito 27 Sep 23, 2022
Pytorch implementation of Deep Recursive Residual Network for Super Resolution (DRRN)

DRRN-pytorch This is an unofficial implementation of "Deep Recursive Residual Network for Super Resolution (DRRN)", CVPR 2017 in Pytorch. [Paper] You

yun_yang 192 Dec 12, 2022
A general 3D Object Detection codebase in PyTorch.

Det3D is the first 3D Object Detection toolbox which provides off the box implementations of many 3D object detection algorithms such as PointPillars, SECOND, PIXOR, etc, as well as state-of-the-art

Benjin Zhu 1.4k Jan 05, 2023
Code for EMNLP2021 paper "Allocating Large Vocabulary Capacity for Cross-lingual Language Model Pre-training"

VoCapXLM Code for EMNLP2021 paper Allocating Large Vocabulary Capacity for Cross-lingual Language Model Pre-training Environment DockerFile: dancingso

Bo Zheng 15 Jul 28, 2022
U-Time: A Fully Convolutional Network for Time Series Segmentation

U-Time & U-Sleep Official implementation of The U-Time [1] model for general-purpose time-series segmentation. The U-Sleep [2] model for resilient hig

Mathias Perslev 176 Dec 19, 2022
Learning to Simulate Dynamic Environments with GameGAN (CVPR 2020)

Learning to Simulate Dynamic Environments with GameGAN PyTorch code for GameGAN Learning to Simulate Dynamic Environments with GameGAN Seung Wook Kim,

199 Dec 26, 2022
An official implementation of the paper Exploring Sequence Feature Alignment for Domain Adaptive Detection Transformers

Sequence Feature Alignment (SFA) By Wen Wang, Yang Cao, Jing Zhang, Fengxiang He, Zheng-jun Zha, Yonggang Wen, and Dacheng Tao This repository is an o

WangWen 79 Dec 24, 2022
Learning Continuous Signed Distance Functions for Shape Representation

DeepSDF This is an implementation of the CVPR '19 paper "DeepSDF: Learning Continuous Signed Distance Functions for Shape Representation" by Park et a

Meta Research 1.1k Jan 01, 2023
An implementation of the WHATWG URL Standard in JavaScript

whatwg-url whatwg-url is a full implementation of the WHATWG URL Standard. It can be used standalone, but it also exposes a lot of the internal algori

314 Dec 28, 2022
4D Human Body Capture from Egocentric Video via 3D Scene Grounding

4D Human Body Capture from Egocentric Video via 3D Scene Grounding [Project] [Paper] Installation: Our method requires the same dependencies as SMPLif

Miao Liu 37 Nov 08, 2022
Embeds a story into a music playlist by sorting the playlist so that the order of the music follows a narrative arc.

playlist-story-builder This project attempts to embed a story into a music playlist by sorting the playlist so that the order of the music follows a n

Dylan R. Ashley 0 Oct 28, 2021
Convex optimization for fun and profit.

CFMM Optimal Routing This repository contains the code needed to generate the figures used in the paper Optimal Routing for Constant Function Market M

Guillermo Angeris 183 Dec 29, 2022