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]).

Implementation of temporal pooling methods studied in [ICIP'20] A Comparative Evaluation Of Temporal Pooling Methods For Blind Video Quality Assessment

Implementation of temporal pooling methods studied in [ICIP'20] A Comparative Evaluation Of Temporal Pooling Methods For Blind Video Quality Assessment

Zhengzhong Tu 5 Sep 16, 2022
Pretraining on Dynamic Graph Neural Networks

Pretraining on Dynamic Graph Neural Networks Our article is PT-DGNN and the code is modified based on GPT-GNN Requirements python 3.6 Ubuntu 18.04.5 L

7 Dec 17, 2022
Algorithms for outlier, adversarial and drift detection

Alibi Detect is an open source Python library focused on outlier, adversarial and drift detection. The package aims to cover both online and offline d

Seldon 1.6k Dec 31, 2022
Аналитика доходности инвестиционного портфеля в Тинькофф брокере

Аналитика доходности инвестиционного портфеля Тиньков Видео на YouTube Для работы скрипта нужно установить три переменных окружения: export TINKOFF_TO

Alexey Goloburdin 64 Dec 17, 2022
Hardware accelerated, batchable and differentiable optimizers in JAX.

JAXopt Installation | Examples | References Hardware accelerated (GPU/TPU), batchable and differentiable optimizers in JAX. Installation JAXopt can be

Google 621 Jan 08, 2023
CIFAR-10 Photo Classification

Image-Classification CIFAR-10 Photo Classification CIFAR-10_Dataset_Classfication CIFAR-10 Photo Classification Dataset CIFAR is an acronym that stand

ADITYA SHAH 1 Jan 05, 2022
KinectFusion implemented in Python with PyTorch

KinectFusion implemented in Python with PyTorch This is a lightweight Python implementation of KinectFusion. All the core functions (TSDF volume, fram

Jingwen Wang 80 Jan 03, 2023
A Demo server serving Bert through ONNX with GPU written in Rust with <3

Demo BERT ONNX server written in rust This demo showcase the use of onnxruntime-rs on BERT with a GPU on CUDA 11 served by actix-web and tokenized wit

Xavier Tao 28 Jan 01, 2023
Ivy is a templated deep learning framework which maximizes the portability of deep learning codebases.

Ivy is a templated deep learning framework which maximizes the portability of deep learning codebases. Ivy wraps the functional APIs of existing frameworks. Framework-agnostic functions, libraries an

Ivy 8.2k Jan 02, 2023
This project uses reinforcement learning on stock market and agent tries to learn trading. The goal is to check if the agent can learn to read tape. The project is dedicated to hero in life great Jesse Livermore.

Reinforcement-trading This project uses Reinforcement learning on stock market and agent tries to learn trading. The goal is to check if the agent can

Deepender Singla 1.4k Dec 22, 2022
StyleGAN2-ADA - Official PyTorch implementation

Abstract: Training generative adversarial networks (GAN) using too little data typically leads to discriminator overfitting, causing training to diverge. We propose an adaptive discriminator augmenta

NVIDIA Research Projects 3.2k Dec 30, 2022
HAR-stacked-residual-bidir-LSTMs - Deep stacked residual bidirectional LSTMs for HAR

HAR-stacked-residual-bidir-LSTM The project is based on this repository which is presented as a tutorial. It consists of Human Activity Recognition (H

Guillaume Chevalier 287 Dec 27, 2022
Asynchronous Advantage Actor-Critic in PyTorch

Asynchronous Advantage Actor-Critic in PyTorch This is PyTorch implementation of A3C as described in Asynchronous Methods for Deep Reinforcement Learn

Reiji Hatsugai 38 Dec 12, 2022
Multi-task yolov5 with detection and segmentation based on yolov5

YOLOv5DS Multi-task yolov5 with detection and segmentation based on yolov5(branch v6.0) decoupled head anchor free segmentation head README中文 Ablation

150 Dec 30, 2022
FTIR-Deep Learning - FTIR Deep Learning With Python

CANDIY-spectrum Human analyis of chemical spectra such as Mass Spectra (MS), Inf

Wei Mei 1 Jan 03, 2022
SemEval2022 Patronizing and Condescending Language (PCL) Detection

SemEval2022 Patronizing and Condescending Language (PCL) Detection This task is from SemEval 2022. What is Patronizing and Condescending Language (PCL

Daniel Saeedi 0 Aug 05, 2022
A production-ready, scalable Indexer for the Jina neural search framework, based on HNSW and PSQL

🌟 HNSW + PostgreSQL Indexer HNSWPostgreSQLIndexer Jina is a production-ready, scalable Indexer for the Jina neural search framework. It combines the

Jina AI 25 Oct 14, 2022
Face recognition. Redefined.

FaceFinder Use a powerful CNN to identify faces in images! TABLE OF CONTENTS About The Project Built With Getting Started Prerequisites Installation U

BleepLogger 20 Jun 16, 2021
pytorch implementation of Attention is all you need

A Pytorch Implementation of the Transformer: Attention Is All You Need Our implementation is largely based on Tensorflow implementation Requirements N

230 Dec 07, 2022
Implements Gradient Centralization and allows it to use as a Python package in TensorFlow

Gradient Centralization TensorFlow This Python package implements Gradient Centralization in TensorFlow, a simple and effective optimization technique

Rishit Dagli 101 Nov 01, 2022