This is an official implementation for "PlaneRecNet".

Overview

PlaneRecNet

This is an official implementation for PlaneRecNet: A multi-task convolutional neural network provides instance segmentation for piece-wise planes and monocular depth estimation, and focus on the cross-task consistency between two branches. Network Architecture

Changing Logs

22th. Oct. 2021: Initial update, some trained models and data annotation will be uploaded very soon.

Installation

Install environment:

  • Clone this repository and enter it:
git clone https://github.com/EryiXie/PlaneRecNet.git
cd PlaneRecNet
  • Set up the environment using one of the following methods:
    • Using Anaconda
      • Run conda env create -f environment.yml
    • Using Docker
      • dockerfile will come later...

Download trained model:

Here are our models (released on Oct 22th, 2021), which can reproduce the results in the paper:

Quantitative Results

All models below are trained with batch_size=8 and a single RTX3090 or a single RTXA6000 on the plane annotation for ScanNet dataset:

Image Size Backbone FPS Weights
480x640 Resnet50-DCN - [coming soon]
480x640 Resnet101-DCN 14.4 PlaneRecNet_101

Simple Inference

Inference with an single image(*.jpg or *.png format):

python3 simple_inference.py --config=PlaneRecNet_101_config --trained_model=weights/PlaneRecNet_101_9_125000.pth  --image=data/example_nyu.jpg

Inference with images in a folder:

python3 simple_inference.py --config=PlaneRecNet_101_config --trained_model=weights/PlaneRecNet_101_9_125000.pth --images=input_folder:output_folder

Inference with .mat files from iBims-1 Dataset:

python3 simple_inference.py --config=PlaneRecNet_101_config --trained_model=weights/PlaneRecNet_101_9_125000.pth --ibims1=input_folder:output_folder

Then you will get segmentation and depth estimation results like these:

Qualititative Results

Training

PlaneRecNet is trained on ScanNet with 100k samples on one single RTX 3090 with batch_size=8, it takes approximate 37 hours. Here are the data annotations(about 1.0 GB) for training of ScanNet datasets, which is based on the annotation given by PlaneRCNN and converted into *.json file.

Of course, please download ScanNet too, the annotation file we provid only contains paths for rgb image, depth image and camera intrinsic and the ground truth of piece-wise plane instance and its plane parameters.

  • To train, grab an imagenet-pretrained model and put it in ./weights.
    • For Resnet101, download resnet101_reducedfc.pth from here.
    • For Resnet50, download resnet50-19c8e357.pth from here.
  • Run one of the training commands below.
    • Press ctrl+c while training and it will save an *_interrupt.pth file at the current iteration.
    • All weights are saved in the ./weights directory by default with the file name <config>_<epoch>_<iter>.pth.

Trains PlaneRecNet_101_config with a batch_size of 8.

python3 train.py --config=PlaneRecNet_101_config --batch_size=8

Trains PlaneRecNet, without writing any logs to tensorboard.

python3 train.py --config=PlaneRecNet_101_config --batch_size=8 --no_tensorboard

Run Tensorboard on local dir "./logs" to check the visualization. So far we provide loss recording and image sample visualization, may consider to add more (22.Oct.2021).

tenosrborad --logdir /log/folder/

Resume training PlaneRecNet with a specific weight file and start from the iteration specified in the weight file's name.

python3 train.py --config=PlaneRecNet_101_config --resume=weights/PlaneRecNet_101_X_XXXX.pth

Use the help option to see a description of all available command line arguments.

python3 train.py --help

Multi-GPU Support

We adapted the Multi-GPU support from YOLACT, as well as the introduction of how to use it as follow:

  • Put CUDA_VISIBLE_DEVICES=[gpus] on the beginning of the training command.
    • Where you should replace [gpus] with a comma separated list of the index of each GPU you want to use (e.g., 0,1,2,3).
    • You should still do this if only using 1 GPU.
    • You can check the indices of your GPUs with nvidia-smi.
  • Then, simply set the batch size to 8*num_gpus with the training commands above. The training script will automatically scale the hyperparameters to the right values.
    • If you have memory to spare you can increase the batch size further, but keep it a multiple of the number of GPUs you're using.
    • If you want to allocate the images per GPU specific for different GPUs, you can use --batch_alloc=[alloc] where [alloc] is a comma seprated list containing the number of images on each GPU. This must sum to batch_size.

Known Issues

  1. Userwarning of torch.max_pool2d. This has no real affect. It appears when using PyTorch 1.9. And it is claimed "fixed" for the nightly version of PyTorch.
UserWarning: Named tensors and all their associated APIs are an experimental feature and subject to change. Please do not use them for anything important until they are released as stable. (Triggered internally at  /pytorch/c10/core/TensorImpl.h:1156.)
  return torch.max_pool2d(input, kernel_size, stride, padding, dilation, ceil_mode)
  1. Userwarning of leaking Caffe2 while training. This issues related to dataloader in PyTorch1.9, to avoid showing this warning, set pin_memory=False for dataloader. But you don't necessarily need to do this.
[W pthreadpool-cpp.cc:90] Warning: Leaking Caffe2 thread-pool after fork. (function pthreadpool)

Citation

If you use PlaneRecNet or this code base in your work, please cite

@misc{xie2021planerecnet,
      title={PlaneRecNet: Multi-Task Learning with Cross-Task Consistency for Piece-Wise Plane Detection and Reconstruction from a Single RGB Image}, 
      author={Yaxu Xie and Fangwen Shu and Jason Rambach and Alain Pagani and Didier Stricker},
      year={2021},
      eprint={2110.11219},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}

Contact

For questions about our paper or code, please contact Yaxu Xie, or take a good use at the Issues section of this repository.

Owner
yaxu
Oh, hamburgers!
yaxu
LLVM-based compiler for LightGBM gradient-boosted trees. Speeds up prediction by ≥10x.

LLVM-based compiler for LightGBM gradient-boosted trees. Speeds up prediction by ≥10x.

Simon Boehm 183 Jan 02, 2023
(CVPR 2022) Energy-based Latent Aligner for Incremental Learning

Energy-based Latent Aligner for Incremental Learning Accepted to CVPR 2022 We illustrate an Incremental Learning model trained on a continuum of tasks

Joseph K J 37 Jan 03, 2023
Compressed Video Action Recognition

Compressed Video Action Recognition Chao-Yuan Wu, Manzil Zaheer, Hexiang Hu, R. Manmatha, Alexander J. Smola, Philipp Krähenbühl. In CVPR, 2018. [Proj

Chao-Yuan Wu 479 Dec 26, 2022
This repository contains the implementation of the paper: Federated Distillation of Natural Language Understanding with Confident Sinkhorns

Federated Distillation of Natural Language Understanding with Confident Sinkhorns This repository provides an alternative method for ensembled distill

Deep Cognition and Language Research (DeCLaRe) Lab 11 Nov 16, 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
I-SECRET: Importance-guided fundus image enhancement via semi-supervised contrastive constraining

I-SECRET This is the implementation of the MICCAI 2021 Paper "I-SECRET: Importance-guided fundus image enhancement via semi-supervised contrastive con

13 Dec 02, 2022
Official repository of the AAAI'2022 paper "Contrast and Generation Make BART a Good Dialogue Emotion Recognizer"

CoG-BART Contrast and Generation Make BART a Good Dialogue Emotion Recognizer Quick Start: To run the model on test sets of four datasets, Download th

39 Dec 24, 2022
Evaluation toolkit of the informative tracking benchmark comprising 9 scenarios, 180 diverse videos, and new challenges.

Informative-tracking-benchmark Informative tracking benchmark (ITB) higher diversity. It contains 9 representative scenarios and 180 diverse videos. m

Xin Li 15 Nov 26, 2022
Supervised Contrastive Learning for Downstream Optimized Sequence Representations

SupCL-Seq 📖 Supervised Contrastive Learning for Downstream Optimized Sequence representations (SupCS-Seq) accepted to be published in EMNLP 2021, ext

Hooman Sedghamiz 18 Oct 21, 2022
Research code for the paper "Variational Gibbs inference for statistical estimation from incomplete data".

Variational Gibbs inference (VGI) This repository contains the research code for Simkus, V., Rhodes, B., Gutmann, M. U., 2021. Variational Gibbs infer

Vaidotas Šimkus 1 Apr 08, 2022
MGFN: Multi-Graph Fusion Networks for Urban Region Embedding was accepted by IJCAI-2022.

Multi-Graph Fusion Networks for Urban Region Embedding (IJCAI-22) This is the implementation of Multi-Graph Fusion Networks for Urban Region Embedding

202 Nov 18, 2022
Pytorch-Swin-Unet-V2 - a modified version of Swin Unet based on Swin Transfomer V2

Swin Unet V2 Swin Unet V2 is a modified version of Swin Unet arxiv based on Swin

Chenxu Peng 26 Dec 03, 2022
Code for ACL'2021 paper WARP 🌀 Word-level Adversarial ReProgramming

Code for ACL'2021 paper WARP 🌀 Word-level Adversarial ReProgramming. Outperforming `GPT-3` on SuperGLUE Few-Shot text classification.

YerevaNN 75 Nov 06, 2022
Adversarial Robustness Comparison of Vision Transformer and MLP-Mixer to CNNs

Adversarial Robustness Comparison of Vision Transformer and MLP-Mixer to CNNs ArXiv Abstract Convolutional Neural Networks (CNNs) have become the de f

Philipp Benz 12 Oct 24, 2022
Paaster is a secure by default end-to-end encrypted pastebin built with the objective of simplicity.

Follow the development of our desktop client here Paaster Paaster is a secure by default end-to-end encrypted pastebin built with the objective of sim

Ward 211 Dec 25, 2022
PyExplainer: A Local Rule-Based Model-Agnostic Technique (Explainable AI)

PyExplainer PyExplainer is a local rule-based model-agnostic technique for generating explanations (i.e., why a commit is predicted as defective) of J

AI Wizards for Software Management (AWSM) Research Group 14 Nov 13, 2022
🔎 Monitor deep learning model training and hardware usage from your mobile phone 📱

Monitor deep learning model training and hardware usage from mobile. 🔥 Features Monitor running experiments from mobile phone (or laptop) Monitor har

labml.ai 1.2k Dec 25, 2022
Referring Video Object Segmentation

Awesome-Referring-Video-Object-Segmentation Welcome to starts ⭐ & comments 💹 & sharing 😀 !! - 2021.12.12: Recent papers (from 2021) - welcome to ad

Explorer 57 Dec 11, 2022
Implementation of Vision Transformer, a simple way to achieve SOTA in vision classification with only a single transformer encoder, in Pytorch

Implementation of Vision Transformer, a simple way to achieve SOTA in vision classification with only a single transformer encoder, in Pytorch

Phil Wang 12.6k Jan 09, 2023
Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022)

Blockwise Sequential Model Learning Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022) For ins

2 Jun 17, 2022