Code for paper "Context-self contrastive pretraining for crop type semantic segmentation"

Overview

Code for paper "Context-self contrastive pretraining for crop type semantic segmentation"

Setting up a python environment

  • Follow the instruction in https://docs.conda.io/projects/conda/en/latest/user-guide/install/linux.html for downloading and installing Miniconda

  • Open a terminal in the code directory

  • Create an environment using the .yml file:

    conda env create -f deepsatmodels_env.yml

  • Activate the environment:

    source activate deepsatmodels

  • Install required version of torch:

    conda install pytorch torchvision torchaudio cudatoolkit=10.1 -c pytorch-nightly

Datasets

MTLCC dataset (Germany)

Download the dataset (.tfrecords)

The data for Germany can be downloaded from: https://github.com/TUM-LMF/MTLCC

  • clone the repository in a separate directory:

    git clone https://github.com/TUM-LMF/MTLCC

  • move to the MTLCC root directory:

    cd MTLCC

  • download the data (40 Gb):

    bash download.sh full

Transform the dataset (.tfrecords -> .pkl)

  • go to the "CSCL_code" home directory:

    cd <.../CSCL_code>

  • activate the "cssl" python environment:

    conda activate cscl

  • add "CSCL_code" home directory to PYTHONPATH:

    export PYTHONPATH="<.../CSCL_code>:$PYTHONPATH"

  • Run the "data/MTLCC/make_pkl_dataset.py" script. Parameter numworkers defines the number of parallel processes employed:

    python data/MTLCC/make_pkl_dataset.py --rootdir <.../MTLCC> --numworkers

  • Running the above script will have the following effects:

    • will create a paths file for the tfrecords files in ".../MTLCC/data_IJGI18/datasets/full/tfrecords240_paths.csv"
    • will create a new directory to save data ".../MTLCC/data_IJGI18/datasets/full/240pkl"
    • will save data in ".../MTLCC/data_IJGI18/datasets/full/240pkl/ "
    • will save relative paths for all data, train data, eval data in ".../MTLCC/data_IJGI18/datasets/full/240pkl"

T31TFM_1618 dataset (France)

Download the dataset

The T31TFM_1618 dataset can be downloaded from Google drive here. Unzipping will create the following folder tree.

T31TFM_1618
├── 2016
│   ├── pkl_timeseries
│       ├── W799943_N6568107_E827372_S6540681
│       |   └── 6541426_800224_2016.pickle
|       |   └── ...
|       ├── ...
├── 2017
│   ├── pkl_timeseries
│       ├── W854602_N6650582_E882428_S6622759
│       |   └── 6623702_854602_2017.pickle
|       |   └── ...
|       ├── ...
├── 2018
│   ├── pkl_timeseries
│       ├── W882228_N6595532_E909657_S6568107
│       |   └── 6568846_888751_2018.pickle
|       |   └── ...
|       ├── ...
├── deepsatdata
|   └── T31TFM_16_products.csv
|   └── ...
|   └── T31TFM_16_parcels.csv
|   └── ...
└── paths
    └── train_paths.csv
    └── eval_paths.csv

Recreate the dataset from scratch

To recreate the dataset use the DeepSatData data generation pipeline.

  • Clone and move to the DeepSatData base directory
git clone https://github.com/michaeltrs/DeepSatData
cd .../DeepSatData
  • Download the Sentinel-2 products.
sh download/download.sh .../T31TFM_16_parcels.csv,.../T31TFM_17_parcels.csv,.../T31TFM_18_parcels.csv
  • Generate a labelled dataset (use case 1) for each year.
sh dataset/labelled_dense/make_labelled_dataset.sh ground_truths_file=<1:ground_truths_file> products_dir=<2:products_dir> labels_dir=<3:labels_dir> windows_dir=<4:windows_dir> timeseries_dir=<5:timeseries_dir> 
res=<6:res> sample_size=<7:sample_size> num_processes<8:num_processes> bands=<8:bands (optional)>

Experiments

Initial steps

  • Add the base directory and paths to train and evaluation path files in "data/datasets.yaml".

  • For each experiment we use a separate ".yaml" configuration file. Examples files are providedided in "configs". The default values filled in these files correspond to parameters used in the experiments presented in the paper.

  • activate "deepsatmodels" python environment:

    conda activate deepsatmodels

Model training

Modify respective .yaml config files accordingly to define the save directory or loading a pre-trained model from pre-trained checkpoints.

Randomly initialized "UNet3D" model

`python train_and_eval/segmentation_training.py --config_file configs/**/UNet3D.yaml --gpu_ids 0,1`

Randomly initialized "UNet2D-CLSTM" model

`python train_and_eval/segmentation_training.py --config_file configs/**/UNet2D_CLSTM.yaml --gpu_ids 0,1`

CSCL-pretrained "UNet2D-CLSTM" model

  • model pre-training

     python train_and_eval/segmentation_cscl_training.py --config_file configs/**/UNet2D_CLSTM_CSCL.yaml --gpu_ids 0,1
  • copy the path to the pre-training save directory in CHECKPOINT.load_from_checkpoint. This will load the latest saved model. To load a specific checkpoint copy the path to the .pth file

     python train_and_eval/segmentation_training.py --config_file configs/**/UNet2D_CLSTM.yaml --gpu_ids 0,1

Randomly initialized "UNet3Df" model

`python train_and_eval/segmentation_training.py --config_file configs/**/UNet3Df.yaml --gpu_ids 0,1`

CSCL-pretrained "UNet3Df" model

  • model pre-training

     python train_and_eval/segmentation_cscl_training.py --config_file configs/**/UNet3Df_CSCL.yaml --gpu_ids 0,1
  • copy the path to the pre-training save directory in CHECKPOINT.load_from_checkpoint. This will load the latest saved model. To load a specific checkpoint copy the path to the .pth file

     python train_and_eval/segmentation_training.py --config_file configs/**/UNet3Df.yaml --gpu_ids 0,1
Owner
Michael Tarasiou
Michael Tarasiou
Vision-Language Pre-training for Image Captioning and Question Answering

VLP This repo hosts the source code for our AAAI2020 work Vision-Language Pre-training (VLP). We have released the pre-trained model on Conceptual Cap

Luowei Zhou 373 Jan 03, 2023
The Official Repository for "Generalized OOD Detection: A Survey"

Generalized Out-of-Distribution Detection: A Survey 1. Overview This repository is with our survey paper: Title: Generalized Out-of-Distribution Detec

Jingkang Yang 338 Jan 03, 2023
Segmentation models with pretrained backbones. Keras and TensorFlow Keras.

Python library with Neural Networks for Image Segmentation based on Keras and TensorFlow. The main features of this library are: High level API (just

Pavel Yakubovskiy 4.2k Jan 09, 2023
A Pytree Module system for Deep Learning in JAX

Treex A Pytree-based Module system for Deep Learning in JAX Intuitive: Modules are simple Python objects that respect Object-Oriented semantics and sh

Cristian Garcia 216 Dec 20, 2022
4st place solution for the PBVS 2022 Multi-modal Aerial View Object Classification Challenge - Track 1 (SAR) at PBVS2022

A Two-Stage Shake-Shake Network for Long-tailed Recognition of SAR Aerial View Objects 4st place solution for the PBVS 2022 Multi-modal Aerial View Ob

LinpengPan 5 Nov 09, 2022
Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Example scripts for the detection of lanes using the ultra fast lane detection model in ONNX.

Ibai Gorordo 35 Sep 07, 2022
This tool converts a Nondeterministic Finite Automata (NFA) into a Deterministic Finite Automata (DFA)

This tool converts a Nondeterministic Finite Automata (NFA) into a Deterministic Finite Automata (DFA)

Quinn Herden 1 Feb 04, 2022
Self-supervised Multi-modal Hybrid Fusion Network for Brain Tumor Segmentation

JBHI-Pytorch This repository contains a reference implementation of the algorithms described in our paper "Self-supervised Multi-modal Hybrid Fusion N

FeiyiFANG 5 Dec 13, 2021
FLSim a flexible, standalone library written in PyTorch that simulates FL settings with a minimal, easy-to-use API

Federated Learning Simulator (FLSim) is a flexible, standalone core library that simulates FL settings with a minimal, easy-to-use API. FLSim is domain-agnostic and accommodates many use cases such a

Meta Research 162 Jan 02, 2023
Meta Self-learning for Multi-Source Domain Adaptation: A Benchmark

Meta Self-Learning for Multi-Source Domain Adaptation: A Benchmark Project | Arxiv | YouTube | | Abstract In recent years, deep learning-based methods

CVSM Group - email: <a href=[email protected]"> 188 Dec 12, 2022
Learning to Map Large-scale Sparse Graphs on Memristive Crossbar

Release of AutoGMap:Learning to Map Large-scale Sparse Graphs on Memristive Crossbar For reproduction of our searched model, the Ubuntu OS is recommen

2 Aug 23, 2022
OpenMMLab Model Deployment Toolset

Introduction English | 简体中文 MMDeploy is an open-source deep learning model deployment toolset. It is a part of the OpenMMLab project. Major features F

OpenMMLab 1.5k Dec 30, 2022
MapReader: A computer vision pipeline for the semantic exploration of maps at scale

MapReader A computer vision pipeline for the semantic exploration of maps at scale MapReader is an end-to-end computer vision (CV) pipeline designed b

Living with Machines 25 Dec 26, 2022
PyTorch Implementation of [1611.06440] Pruning Convolutional Neural Networks for Resource Efficient Inference

PyTorch implementation of [1611.06440 Pruning Convolutional Neural Networks for Resource Efficient Inference] This demonstrates pruning a VGG16 based

Jacob Gildenblat 836 Dec 26, 2022
Official implementation of deep Gaussian process (DGP)-based multi-speaker speech synthesis with PyTorch.

Multi-speaker DGP This repository provides official implementation of deep Gaussian process (DGP)-based multi-speaker speech synthesis with PyTorch. O

sarulab-speech 24 Sep 07, 2022
Code for "PVNet: Pixel-wise Voting Network for 6DoF Pose Estimation" CVPR 2019 oral

Good news! We release a clean version of PVNet: clean-pvnet, including how to train the PVNet on the custom dataset. Use PVNet with a detector. The tr

ZJU3DV 722 Dec 27, 2022
FactSeg: Foreground Activation Driven Small Object Semantic Segmentation in Large-Scale Remote Sensing Imagery (TGRS)

FactSeg: Foreground Activation Driven Small Object Semantic Segmentation in Large-Scale Remote Sensing Imagery by Ailong Ma, Junjue Wang*, Yanfei Zhon

Kingdrone 43 Jan 05, 2023
A3C LSTM Atari with Pytorch plus A3G design

NEWLY ADDED A3G A NEW GPU/CPU ARCHITECTURE OF A3C FOR SUBSTANTIALLY ACCELERATED TRAINING!! RL A3C Pytorch NEWLY ADDED A3G!! New implementation of A3C

David Griffis 532 Jan 02, 2023
Active learning for Mask R-CNN in Detectron2

MaskAL - Active learning for Mask R-CNN in Detectron2 Summary MaskAL is an active learning framework that automatically selects the most-informative i

49 Dec 20, 2022
Voice Gender Recognition

In this project it was used some different Machine Learning models to identify the gender of a voice (Female or Male) based on some specific speech and voice attributes.

Anne Livia 1 Jan 27, 2022