The official implementation code of "PlantStereo: A Stereo Matching Benchmark for Plant Surface Dense Reconstruction."

Overview

PlantStereo

This is the official implementation code for the paper "PlantStereo: A Stereo Matching Benchmark for Plant Surface Dense Reconstruction".

Paper

PlantStereo: A Stereo Matching Benchmark for Plant Surface Dense Reconstruction[preprint]

Qingyu Wang, Baojian Ma, Wei Liu, Mingzhao Lou, Mingchuan Zhou*, Huanyu Jiang and Yibin Ying

College of Biosystems Engineering and Food Science, Zhejiang University.

Example and Overview

We give an example of our dataset, including spinach, tomato, pepper and pumpkin.

The data size and the resolution of the images are listed as follows:

Subset Train Validation Test All Resolution
Spinach 160 40 100 300 1046×606
Tomato 80 20 50 150 1040×603
Pepper 150 30 32 212 1024×571
Pumpkin 80 20 50 150 1024×571
All 470 110 232 812

Analysis

We evaluated the disparity distribution of different stereo matching datasets.

Format

The data was organized as the following format, where the sub-pixel level disparity images are saved as .tiff format, and the pixel level disparity images are saved as .png format.

PlantStereo

├── PlantStereo2021

│          ├── tomato

│          │          ├── training

│          │          │         ├── left_view

│          │          │          │         ├── 000000.png

│          │          │          │         ├── 000001.png

│          │          │          │         ├── ......

│          │          │          ├── right_view

│          │          │          │         ├── ......

│          │          │          ├── disp

│          │          │          │         ├── ......

│          │          │          ├── disp_high_acc

│          │          │          │         ├── 000000.tiff

│          │          │          │         ├── ......

│          │          ├── testing

│          │          │          ├── left_view

│          │          │          ├── right_view

│          │          │          ├── disp

│          │          │          ├── disp_high_acc

│          ├── spinach

│          ├── ......

Download

You can use the following links to download out PlantStereo dataset.

Baidu Netdisk link
Google Drive link

Usage

  • sample.py

To construct the dataset, you can run the code in sample.py in your terminal:

conda activate <your_anaconda_virtual_environment>
python sample.py --num 0

We can registrate the image and transformate the coordinate through function mech_zed_alignment():

def mech_zed_alignment(depth, mech_height, mech_width, zed_height, zed_width):
    ground_truth = np.zeros(shape=(zed_height, zed_width), dtype=float)
    for v in range(0, mech_height):
        for u in range(0, mech_width):
            i_mech = np.array([[u], [v], [1]], dtype=float)  # 3*1
            p_i_mech = np.dot(np.linalg.inv(K_MECH), i_mech * depth[v, u])  # 3*1
            p_i_zed = np.dot(R_MECH_ZED, p_i_mech) + T_MECH_ZED  # 3*1
            i_zed = np.dot(K_ZED_LEFT, p_i_zed) * (1 / p_i_zed[2])  # 3*1
            disparity = ZED_BASELINE * ZED_FOCAL_LENGTH * 1000 / p_i_zed[2]
            u_zed = i_zed[0]
            v_zed = i_zed[1]
            coor_u_zed = round(u_zed[0])
            coor_v_zed = round(v_zed[0])
            if coor_u_zed < zed_width and coor_v_zed < zed_height:
                ground_truth[coor_v_zed][coor_u_zed] = disparity
    return ground_truth
  • epipole_rectification.py

    After collecting the left, right and disparity images throuth sample.py, we can perform epipole rectification on left and right images through epipole_rectification.py:

    python epipole_rectification.py

Citation

If you use our PlantStereo dataset in your research, please cite this publication:

@misc{PlantStereo,
    title={PlantStereo: A Stereo Matching Benchmark for Plant Surface Dense Reconstruction},
    author={Qingyu Wang, Baojian Ma, Wei Liu, Mingzhao Lou, Mingchuan Zhou, Huanyu Jiang and Yibin Ying},
    howpublished = {\url{https://github.com/wangqingyu985/PlantStereo}},
    year={2021}
}

Acknowledgements

This project is mainly based on:

zed-python-api

mecheye_python_interface

Contact

If you have any questions, please do not hesitate to contact us through E-mail or issue, we will reply as soon as possible.

[email protected] or [email protected]

Owner
Wang Qingyu
A second-year Ph.D. student in Zhejiang University
Wang Qingyu
Gesture recognition on Event Data

Event based Gesture Recognition Gesture recognition on Event Data usually involv

2 Feb 14, 2022
InsTrim: Lightweight Instrumentation for Coverage-guided Fuzzing

InsTrim The paper: InsTrim: Lightweight Instrumentation for Coverage-guided Fuzzing Build Prerequisite llvm-8.0-dev clang-8.0 cmake = 3.2 Make git cl

75 Dec 23, 2022
[ACM MM2021] MGH: Metadata Guided Hypergraph Modeling for Unsupervised Person Re-identification

Introduction This project is developed based on FastReID, which is an ongoing ReID project. Projects BUC In projects/BUC, we implement AAAI 2019 paper

WuYiming 7 Apr 13, 2022
[ICLR 2021, Spotlight] Large Scale Image Completion via Co-Modulated Generative Adversarial Networks

Large Scale Image Completion via Co-Modulated Generative Adversarial Networks, ICLR 2021 (Spotlight) Demo | Paper [NEW!] Time to play with our interac

Shengyu Zhao 373 Jan 02, 2023
Surrogate- and Invariance-Boosted Contrastive Learning (SIB-CL)

Surrogate- and Invariance-Boosted Contrastive Learning (SIB-CL) This repository contains all source code used to generate the results in the article "

Charlotte Loh 3 Jul 23, 2022
Repository for the Bias Benchmark for QA dataset.

BBQ Repository for the Bias Benchmark for QA dataset. Authors: Alicia Parrish, Angelica Chen, Nikita Nangia, Vishakh Padmakumar, Jason Phang, Jana Tho

ML² AT CILVR 18 Nov 18, 2022
A system for quickly generating training data with weak supervision

Programmatically Build and Manage Training Data Announcement The Snorkel team is now focusing their efforts on Snorkel Flow, an end-to-end AI applicat

Snorkel Team 5.4k Jan 02, 2023
Probabilistic-Monocular-3D-Human-Pose-Estimation-with-Normalizing-Flows

Probabilistic-Monocular-3D-Human-Pose-Estimation-with-Normalizing-Flows This is the official implementation of the ICCV 2021 Paper "Probabilistic Mono

62 Nov 23, 2022
Studying Python release adoptions by looking at PyPI downloads

Analysis of version adoptions on PyPI We get PyPI download statistics via Google's BigQuery using the pypinfo tool. Usage First you need to get an acc

Julien Palard 9 Nov 04, 2022
Implementation of a Transformer, but completely in Triton

Transformer in Triton (wip) Implementation of a Transformer, but completely in Triton. I'm completely new to lower-level neural net code, so this repo

Phil Wang 152 Dec 22, 2022
The easiest way to use deep metric learning in your application. Modular, flexible, and extensible. Written in PyTorch.

News December 27: v1.1.0 New loss functions: CentroidTripletLoss and VICRegLoss Mean reciprocal rank + per-class accuracies See the release notes Than

Kevin Musgrave 5k Jan 05, 2023
2021 credit card consuming recommendation

2021 credit card consuming recommendation

Wang, Chung-Che 7 Mar 08, 2022
Speech Recognition using DeepSpeech2.

deepspeech.pytorch Implementation of DeepSpeech2 for PyTorch using PyTorch Lightning. The repo supports training/testing and inference using the DeepS

Sean Naren 2k Jan 04, 2023
This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to generate a dynamic forecast from your own data.

📈 Automated Time Series Forecasting Background: This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to gene

Zach Renwick 42 Jan 04, 2023
Tensorflow Implementation of the paper "Spectral Normalization for Generative Adversarial Networks" (ICML 2017 workshop)

tf-SNDCGAN Tensorflow implementation of the paper "Spectral Normalization for Generative Adversarial Networks" (https://www.researchgate.net/publicati

Nhat M. Nguyen 248 Nov 25, 2022
Pytorch implementation of PCT: Point Cloud Transformer

PCT: Point Cloud Transformer This is a Pytorch implementation of PCT: Point Cloud Transformer.

Yi_Zhang 265 Dec 22, 2022
The implementation of 'Image synthesis via semantic composition'.

Image synthesis via semantic synthesis [Project Page] by Yi Wang, Lu Qi, Ying-Cong Chen, Xiangyu Zhang, Jiaya Jia. Introduction This repository gives

DV Lab 71 Jan 06, 2023
Deep motion generator collections

GenMotion GenMotion (/gen’motion/) is a Python library for making skeletal animations. It enables easy dataset loading and experiment sharing for synt

23 May 24, 2022
[ICML 2021] A fast algorithm for fitting robust decision trees.

GROOT: Growing Robust Trees Growing Robust Trees (GROOT) is an algorithm that fits binary classification decision trees such that they are robust agai

Cyber Analytics Lab 17 Nov 21, 2022
PointRCNN: 3D Object Proposal Generation and Detection from Point Cloud, CVPR 2019.

PointRCNN PointRCNN: 3D Object Proposal Generation and Detection from Point Cloud Code release for the paper PointRCNN:3D Object Proposal Generation a

Shaoshuai Shi 1.5k Dec 27, 2022