Code for the paper One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation, CVPR 2021.

Overview

One Thing One Click

One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation (CVPR2021)

Code for the paper One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation, CVPR 2021.

This code is based on PointGroup https://github.com/llijiang/PointGroup

Authors: Zhengzhe Liu, Xiaojuan Qi, Chi-Wing Fu

Installation

Requirements

  • Python 3.7.0
  • Pytorch 1.3.0
  • CUDA 10.1

Virtual Environment

conda create -n pointgroup python==3.7
source activate pointgroup

Install PointGroup

(1) Clone the PointGroup repository.

git clone https://github.com/liuzhengzhe/One-Thing-One-Click --recursive 
cd One-Thing-One-Click

(2) Install the dependent libraries.

pip install -r requirements.txt
conda install -c bioconda google-sparsehash 

(3) For the SparseConv, we apply the implementation of spconv. The repository is recursively downloaded at step (1). We use the version 1.0 of spconv.

Note: The author of PointGroup further modified spconv\spconv\functional.py to make grad_output contiguous. Make sure you use our modified spconv.

  • To compile spconv, firstly install the dependent libraries.
conda install libboost
conda install -c daleydeng gcc-5 # need gcc-5.4 for sparseconv

Add the $INCLUDE_PATH$ that contains boost in lib/spconv/CMakeLists.txt. (Not necessary if it could be found.)

include_directories($INCLUDE_PATH$)
  • Compile the spconv library.
cd lib/spconv
python setup.py bdist_wheel
  • Run cd dist and use pip to install the generated .whl file.

(4) Compile the pointgroup_ops library.

cd lib/pointgroup_ops
python setup.py develop

If any header files could not be found, run the following commands.

python setup.py build_ext --include-dirs=$INCLUDE_PATH$
python setup.py develop

$INCLUDE_PATH$ is the path to the folder containing the header files that could not be found.

Data Preparation

  • Download the ScanNet v2 dataset.

  • Put the data in the corresponding folders.

  • Put the file scannetv2-labels.combined.tsv in the data/ folder.

  • Change the path in prepare_data_otoc.py Line 20.

cd data/
python prepare_data_otoc.py 
  • Split the generated files into the data/train_weakly and data/val_weakly folders according to the ScanNet v2 train/val split.

Pretrained Model

We provide a pretrained model trained on ScanNet v2 dataset. Download it here. Its performance on ScanNet v2 validation set is 71.94 mIoU.

Inference and Evaluation

(1) 3D U-Net Evaluation

set the data_root in config/pointgroup_run1_scannet.yaml

cd 3D-U-Net
python test.py --config config/pointgroup_run1_scannet.yaml --pretrain pointgroup_run1_scannet-000001250.pth

Its performance on ScanNet v2 validation set is 68.96 mIoU.

(2) Relation Net Evaluation

cd relation
python test.py --config config/pointgroup_run1_scannet.yaml --pretrain pointgroup_run1_scannet-000002891_weight.pth

(3) Overall Evaluation

cd merge
python test.py --config config/pointgroup_run1_scannet.yaml

Self Training

(1) Train 3D U-Net

set the data_root/dataset in config/pointgroup_run1_scannet.yaml

cd 3D-U-Net
CUDA_VISIBLE_DEVICES=0 python train.py --config config/pointgroup_run1_scannet.yaml 

(2) Generate features and predictions of 3D U-Net

CUDA_VISIBLE_DEVICES=0 python test_train.py --config config/pointgroup_run1_scannet.yaml --pretrain $PATH_TO_THE_MODEL$.pth

(3) Train Relation Net

set the data_root/dataset in config/pointgroup_run1_scannet.yaml

cd relation
CUDA_VISIBLE_DEVICES=0 python train.py --config config/pointgroup_run1_scannet.yaml 

(4) Generate features and predictions of Relation Net

CUDA_VISIBLE_DEVICES=0 python test_train.py --config config/pointgroup_run1_scannet.yaml --pretrain $PATH_TO_THE_MODEL$_weight.pth

(5) Merge the Results via Graph Propagation

cd merge
CUDA_VISIBLE_DEVICES=0 python test_train.py --config config/pointgroup_run1_scannet.yaml

(6) Repeat from (1) to (5) for self-training for 3 to 5 times

Acknowledgement

This repo is built upon several repos, e.g., PointGrouop, SparseConvNet, spconv and ScanNet.

Contact

If you have any questions or suggestions about this repo, please feel free to contact me ([email protected]).

[SIGMETRICS 2022] One Proxy Device Is Enough for Hardware-Aware Neural Architecture Search

One Proxy Device Is Enough for Hardware-Aware Neural Architecture Search paper | website One Proxy Device Is Enough for Hardware-Aware Neural Architec

10 Dec 16, 2022
PyTorch implementation of SmoothGrad: removing noise by adding noise.

SmoothGrad implementation in PyTorch PyTorch implementation of SmoothGrad: removing noise by adding noise. Vanilla Gradients SmoothGrad Guided backpro

SSKH 143 Jan 05, 2023
RL-driven agent playing tic-tac-toe on starknet against challengers.

tictactoe-on-starknet RL-driven agent playing tic-tac-toe on starknet against challengers. GUI reference: https://pythonguides.com/create-a-game-using

21 Jul 30, 2022
IMBENS: class-imbalanced ensemble learning in Python.

IMBENS: class-imbalanced ensemble learning in Python. Links: [Documentation] [Gallery] [PyPI] [Changelog] [Source] [Download] [知乎/Zhihu] [中文README] [a

Zhining Liu 176 Jan 04, 2023
Learning Lightweight Low-Light Enhancement Network using Pseudo Well-Exposed Images

Learning Lightweight Low-Light Enhancement Network using Pseudo Well-Exposed Images This repository contains the implementation of the following paper

Seonggwan Ko 9 Jul 30, 2022
Experimenting with computer vision techniques to generate annotated image datasets from gameplay recordings automatically.

Experimenting with computer vision techniques to generate annotated image datasets from gameplay recordings automatically. The collected data will then be used to train a deep neural network that can

Martin Valchev 3 Apr 24, 2022
Cleaned test data list of DukeMTMC-reID, ICCV2021

Cleaned DukeMTMC-reID Cleaned data list of DukeMTMC-reID released with our paper accepted by ICCV 2021: Learning Instance-level Spatial-Temporal Patte

14 Feb 19, 2022
This repository contains a CBIR system that uses swin transformer to extract image's feature.

Swin-transformer based CBIR This repository contains a CBIR(content-based image retrieval) system. Here we use Swin-transformer to extract query image

JsHou 12 Nov 17, 2022
SubOmiEmbed: Self-supervised Representation Learning of Multi-omics Data for Cancer Type Classification

SubOmiEmbed: Self-supervised Representation Learning of Multi-omics Data for Cancer Type Classification

Sayed Hashim 3 Nov 15, 2022
Graph Convolutional Neural Networks with Data-driven Graph Filter (GCNN-DDGF)

Graph Convolutional Gated Recurrent Neural Network (GCGRNN) Improved from Graph Convolutional Neural Networks with Data-driven Graph Filter (GCNN-DDGF

Lei Lin 21 Dec 18, 2022
Epidemiology analysis package

zEpid zEpid is an epidemiology analysis package, providing easy to use tools for epidemiologists coding in Python 3.5+. The purpose of this library is

Paul Zivich 111 Jan 08, 2023
Exploration of some patients clinical variables.

Answer_ALS_clinical_data Exploration of some patients clinical variables. All the clinical / metadata data is available here: https://data.answerals.o

1 Jan 20, 2022
Code for Massive-scale Decoding for Text Generation using Lattices

Massive-scale Decoding for Text Generation using Lattices Jiacheng Xu, Greg Durrett TL;DR: a new search algorithm to construct lattices encoding many

Jiacheng Xu 37 Dec 18, 2022
Research into Forex price prediction from price history using Deep Sequence Modeling with Stacked LSTMs.

Forex Data Prediction via Recurrent Neural Network Deep Sequence Modeling Research Paper Our research paper can be viewed here Installation Clone the

Alex Taradachuk 2 Aug 07, 2022
Fusion-DHL: WiFi, IMU, and Floorplan Fusion for Dense History of Locations in Indoor Environments

Fusion-DHL: WiFi, IMU, and Floorplan Fusion for Dense History of Locations in Indoor Environments Paper: arXiv (ICRA 2021) Video : https://youtu.be/CC

Sachini Herath 68 Jan 03, 2023
Rohit Ingole 2 Mar 24, 2022
Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation

Self-Supervised Generative Style Transfer for One-Shot Medical Image Segmentation This repository contains the Pytorch implementation of the proposed

Devavrat Tomar 19 Nov 10, 2022
Training Confidence-Calibrated Classifier for Detecting Out-of-Distribution Samples / ICLR 2018

Training Confidence-Calibrated Classifier for Detecting Out-of-Distribution Samples This project is for the paper "Training Confidence-Calibrated Clas

168 Nov 29, 2022
Face Library is an open source package for accurate and real-time face detection and recognition

Face Library Face Library is an open source package for accurate and real-time face detection and recognition. The package is built over OpenCV and us

52 Nov 09, 2022
Official Pytorch implementation of Online Continual Learning on Class Incremental Blurry Task Configuration with Anytime Inference (ICLR 2022)

The Official Implementation of CLIB (Continual Learning for i-Blurry) Online Continual Learning on Class Incremental Blurry Task Configuration with An

NAVER AI 34 Oct 26, 2022