Implementation of ICCV2021(Oral) paper - VMNet: Voxel-Mesh Network for Geodesic-aware 3D Semantic Segmentation

Related tags

Deep LearningVMNet
Overview

VMNet: Voxel-Mesh Network for Geodesic-Aware 3D Semantic Segmentation

Framework Fig

Created by Zeyu HU

Introduction

This work is based on our paper VMNet: Voxel-Mesh Network for Geodesic-Aware 3D Semantic Segmentation, which appears at the IEEE International Conference on Computer Vision (ICCV) 2021.

In recent years, sparse voxel-based methods have become the state-of-the-arts for 3D semantic segmentation of indoor scenes, thanks to the powerful 3D CNNs. Nevertheless, being oblivious to the underlying geometry, voxel-based methods suffer from ambiguous features on spatially close objects and struggle with handling complex and irregular geometries due to the lack of geodesic information. In view of this, we present Voxel-Mesh Network (VMNet), a novel 3D deep architecture that operates on the voxel and mesh representations leveraging both the Euclidean and geodesic information. Intuitively, the Euclidean information extracted from voxels can offer contextual cues representing interactions between nearby objects, while the geodesic information extracted from meshes can help separate objects that are spatially close but have disconnected surfaces. To incorporate such information from the two domains, we design an intra-domain attentive module for effective feature aggregation and an inter-domain attentive module for adaptive feature fusion. Experimental results validate the effectiveness of VMNet: specifically, on the challenging ScanNet dataset for large-scale segmentation of indoor scenes, it outperforms the state-of-the-art SparseConvNet and MinkowskiNet (74.6% vs 72.5% and 73.6% in mIoU) with a simpler network structure (17M vs 30M and 38M parameters).

Citation

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

@misc{hu2021vmnet,
      title={VMNet: Voxel-Mesh Network for Geodesic-Aware 3D Semantic Segmentation}, 
      author={Zeyu Hu and Xuyang Bai and Jiaxiang Shang and Runze Zhang and Jiayu Dong and Xin Wang and Guangyuan Sun and Hongbo Fu and Chiew-Lan Tai},
      year={2021},
      eprint={2107.13824},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}

Installation

  • Our code is based on Pytorch. Please make sure CUDA and cuDNN are installed. One configuration has been tested:

    • Python 3.7
    • Pytorch 1.4.0
    • torchvision 0.5.0
    • CUDA 10.0
    • cudatoolkit 10.0.130
    • cuDNN 7.6.5
  • VMNet depends on the torch-geometric and torchsparse libraries. Please follow their installation instructions. One configuration has been tested, higher versions should work as well:

    • torch-geometric 1.6.3
    • torchsparse 1.1.0
  • We adapted VCGlib to generate pooling trace maps for vertex clustering and quadric error metrics.

    git clone https://github.com/cnr-isti-vclab/vcglib
    
    # QUADRIC ERROR METRICS
    cd vcglib/apps/tridecimator/
    qmake
    make
    
    # VERTEX CLUSTERING
    cd ../sample/trimesh_clustering
    qmake
    make
    

    Please add vcglib/apps/tridecimator and vcglib/apps/sample/trimesh_clustering to your environment path variable.

  • Other dependencies. One configuration has been tested:

    • open3d 0.9.0
    • plyfile 0.7.3
    • scikit-learn 0.24.0
    • scipy 1.6.0

Data Preparation

  • Please refer to https://github.com/ScanNet/ScanNet and https://github.com/niessner/Matterport to get access to the ScanNet and Matterport dataset. Our method relies on the .ply as well as the .labels.ply files. We take ScanNet dataset as example for the following instructions.

  • Create directories to store processed data.

    • 'path/to/processed_data/train/'
    • 'path/to/processed_data/val/'
    • 'path/to/processed_data/test/'
  • Prepare train data.

    python prepare_data.py --considered_rooms_path dataset/data_split/scannetv2_train.txt --in_path path/to/ScanNet/scans --out_path path/to/processed_data/train/
    
  • Prepare val data.

    python prepare_data.py --considered_rooms_path dataset/data_split/scannetv2_val.txt --in_path path/to/ScanNet/scans --out_path path/to/processed_data/val/
    
  • Prepare test data.

    python prepare_data.py --test_split --considered_rooms_path dataset/data_split/scannetv2_test.txt --in_path path/to/ScanNet/scans_test --out_path path/to/processed_data/test/
    

Train

  • On train/val/test setting.

    CUDA_VISIBLE_DEVICES=0 python run.py --train --exp_name name_you_want --data_path path/to/processed_data
    
  • On train+val/test setting (for ScanNet benchmark).

    CUDA_VISIBLE_DEVICES=0 python run.py --train_benchmark --exp_name name_you_want --data_path path/to/processed_data
    

Inference

  • Validation. Pretrained model (73.3% mIoU on ScanNet Val). Please download and put into directory check_points/val_split.

    CUDA_VISIBLE_DEVICES=0 python run.py --val --exp_name val_split --data_path path/to/processed_data
    
  • Test. Pretrained model (74.6% mIoU on ScanNet Test). Please download and put into directory check_points/test_split. TxT files for benchmark submission will be saved in directory test_results/.

    CUDA_VISIBLE_DEVICES=0 python run.py --test --exp_name test_split --data_path path/to/processed_data
    

Acknowledgements

Our code is built upon torch-geometric, torchsparse and dcm-net.

License

Our code is released under MIT License (see LICENSE file for details).

Owner
HU Zeyu
HU Zeyu
Code for the CVPR2022 paper "Frequency-driven Imperceptible Adversarial Attack on Semantic Similarity"

Introduction This is an official release of the paper "Frequency-driven Imperceptible Adversarial Attack on Semantic Similarity" (arxiv link). Abstrac

Leo 21 Nov 23, 2022
ICML 21 - Voice2Series: Reprogramming Acoustic Models for Time Series Classification

Voice2Series-Reprogramming Voice2Series: Reprogramming Acoustic Models for Time Series Classification International Conference on Machine Learning (IC

49 Jan 03, 2023
Contrastive Learning of Image Representations with Cross-Video Cycle-Consistency

Contrastive Learning of Image Representations with Cross-Video Cycle-Consistency This is a official implementation of the CycleContrast introduced in

13 Nov 14, 2022
Official implementation of "SinIR: Efficient General Image Manipulation with Single Image Reconstruction" (ICML 2021)

SinIR (Official Implementation) Requirements To install requirements: pip install -r requirements.txt We used Python 3.7.4 and f-strings which are in

47 Oct 11, 2022
Edge-oriented Convolution Block for Real-time Super Resolution on Mobile Devices, ACM Multimedia 2021

Codes for ECBSR Edge-oriented Convolution Block for Real-time Super Resolution on Mobile Devices Xindong Zhang, Hui Zeng, Lei Zhang ACM Multimedia 202

xindong zhang 236 Dec 26, 2022
CLIPort: What and Where Pathways for Robotic Manipulation

CLIPort CLIPort: What and Where Pathways for Robotic Manipulation Mohit Shridhar, Lucas Manuelli, Dieter Fox CoRL 2021 CLIPort is an end-to-end imitat

246 Dec 11, 2022
Road Crack Detection Using Deep Learning Methods

Road-Crack-Detection-Using-Deep-Learning-Methods This is my Diploma Thesis ¨Road Crack Detection Using Deep Learning Methods¨ under the supervision of

Aggelos Katsaliros 3 May 03, 2022
buildseg is a building extraction plugin of QGIS based on PaddlePaddle.

buildseg buildseg is a Building Extraction plugin for QGIS based on PaddlePaddle. How to use Download and install QGIS and clone the repo : git clone

39 Dec 09, 2022
Code for DisCo: Remedy Self-supervised Learning on Lightweight Models with Distilled Contrastive Learning

DisCo: Remedy Self-supervised Learning on Lightweight Models with Distilled Contrastive Learning Pytorch Implementation for DisCo: Remedy Self-supervi

79 Jan 06, 2023
DLFlow is a deep learning framework.

DLFlow是一套深度学习pipeline,它结合了Spark的大规模特征处理能力和Tensorflow模型构建能力。利用DLFlow可以快速处理原始特征、训练模型并进行大规模分布式预测,十分适合离线环境下的生产任务。利用DLFlow,用户只需专注于模型开发,而无需关心原始特征处理、pipeline构建、生产部署等工作。

DiDi 152 Oct 27, 2022
Code for "Learning to Regrasp by Learning to Place"

Learning2Regrasp Learning to Regrasp by Learning to Place, CoRL 2021. Introduction We propose a point-cloud-based system for robots to predict a seque

Shuo Cheng (成硕) 18 Aug 27, 2022
Minimalist Error collection Service compatible with Rollbar clients. Sentry or Rollbar alternative.

Minimalist Error collection Service Features Compatible with any Rollbar client(see https://docs.rollbar.com/docs). Just change the endpoint URL to yo

Haukur Rósinkranz 381 Nov 11, 2022
Context Axial Reverse Attention Network for Small Medical Objects Segmentation

CaraNet: Context Axial Reverse Attention Network for Small Medical Objects Segmentation This repository contains the implementation of a novel attenti

401 Dec 23, 2022
A Web API for automatic background removal using Deep Learning. App is made using Flask and deployed on Heroku.

Automatic_Background_Remover A Web API for automatic background removal using Deep Learning. App is made using Flask and deployed on Heroku. 👉 https:

Gaurav 16 Oct 29, 2022
A curated list of awesome open source libraries to deploy, monitor, version and scale your machine learning

Awesome production machine learning This repository contains a curated list of awesome open source libraries that will help you deploy, monitor, versi

The Institute for Ethical Machine Learning 12.9k Jan 04, 2023
HiFi++: a Unified Framework for Neural Vocoding, Bandwidth Extension and Speech Enhancement

HiFi++ : a Unified Framework for Neural Vocoding, Bandwidth Extension and Speech Enhancement This is the unofficial implementation of Vocoder part of

Rishikesh (ऋषिकेश) 118 Dec 29, 2022
Bridging Vision and Language Model

BriVL BriVL (Bridging Vision and Language Model) 是首个中文通用图文多模态大规模预训练模型。BriVL模型在图文检索任务上有着优异的效果,超过了同期其他常见的多模态预训练模型(例如UNITER、CLIP)。 BriVL论文:WenLan: Bridgi

235 Dec 27, 2022
Simple renderer for use with MuJoCo (>=2.1.2) Python Bindings.

Viewer for MuJoCo in Python Interactive renderer to use with the official Python bindings for MuJoCo. Starting with version 2.1.2, MuJoCo comes with n

Rohan P. Singh 62 Dec 30, 2022
Face Transformer for Recognition

Face-Transformer This is the code of Face Transformer for Recognition (https://arxiv.org/abs/2103.14803v2). Recently there has been great interests of

Zhong Yaoyao 153 Nov 30, 2022
Implementation of 🦩 Flamingo, state-of-the-art few-shot visual question answering attention net out of Deepmind, in Pytorch

🦩 Flamingo - Pytorch Implementation of Flamingo, state-of-the-art few-shot visual question answering attention net, in Pytorch. It will include the p

Phil Wang 630 Dec 28, 2022