A UAV Open Dataset of Rice Paddies for Deep Learning Practice

Recently, unmanned aerial vehicles (UAVs) have been broadly applied to the remote sensing field. For a great number of UAV images, deep learning has been reinvigorated and performed many results in agricultural applications. The popular image datasets for deep learning model training are generated f...

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Main Authors: Ming-Der Yang, Hsin-Hung Tseng, Yu-Chun Hsu, Chin-Ying Yang, Ming-Hsin Lai, Dong-Hong Wu
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Remote Sensing
Subjects:
CNN
Online Access:https://www.mdpi.com/2072-4292/13/7/1358
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spelling doaj-cde1d9c743334a268661bac8d98bd2bc2021-04-01T23:11:58ZengMDPI AGRemote Sensing2072-42922021-04-01131358135810.3390/rs13071358A UAV Open Dataset of Rice Paddies for Deep Learning PracticeMing-Der Yang0Hsin-Hung Tseng1Yu-Chun Hsu2Chin-Ying Yang3Ming-Hsin Lai4Dong-Hong Wu5Department of Civil Engineering, and Innovation and Development Center of Sustainable Agriculture, National Chung Hsing University, Taichung 402, TaiwanDepartment of Civil Engineering, and Innovation and Development Center of Sustainable Agriculture, National Chung Hsing University, Taichung 402, TaiwanDepartment of Civil Engineering, and Innovation and Development Center of Sustainable Agriculture, National Chung Hsing University, Taichung 402, TaiwanDepartment of Agronomy, National Chung Hsing University, Taichung 40227, TaiwanCrop Science Division, Taiwan Agricultural Research Institute, Taichung 413, TaiwanCrop Science Division, Taiwan Agricultural Research Institute, Taichung 413, TaiwanRecently, unmanned aerial vehicles (UAVs) have been broadly applied to the remote sensing field. For a great number of UAV images, deep learning has been reinvigorated and performed many results in agricultural applications. The popular image datasets for deep learning model training are generated for general purpose use, in which the objects, views, and applications are for ordinary scenarios. However, UAV images possess different patterns of images mostly from a look-down perspective. This paper provides a verified annotated dataset of UAV images that are described in data acquisition, data preprocessing, and a showcase of a CNN classification. The dataset collection consists of one multi-rotor UAV platform by flying a planned scouting routine over rice paddies. This paper introduces a semi-auto annotation method with an ExGR index to generate the training data of rice seedlings. For demonstration, this study modified a classical CNN architecture, VGG-16, to run a patch-based rice seedling detection. The k-fold cross-validation was employed to obtain an 80/20 dividing ratio of training/test data. The accuracy of the network increases with the increase of epoch, and all the divisions of the cross-validation dataset achieve a 0.99 accuracy. The rice seedling dataset provides the training-validation dataset, patch-based detection samples, and the ortho-mosaic image of the field.https://www.mdpi.com/2072-4292/13/7/1358open datasetdeep learningCNNtraining dataUAV imagesrice seedling
collection DOAJ
language English
format Article
sources DOAJ
author Ming-Der Yang
Hsin-Hung Tseng
Yu-Chun Hsu
Chin-Ying Yang
Ming-Hsin Lai
Dong-Hong Wu
spellingShingle Ming-Der Yang
Hsin-Hung Tseng
Yu-Chun Hsu
Chin-Ying Yang
Ming-Hsin Lai
Dong-Hong Wu
A UAV Open Dataset of Rice Paddies for Deep Learning Practice
Remote Sensing
open dataset
deep learning
CNN
training data
UAV images
rice seedling
author_facet Ming-Der Yang
Hsin-Hung Tseng
Yu-Chun Hsu
Chin-Ying Yang
Ming-Hsin Lai
Dong-Hong Wu
author_sort Ming-Der Yang
title A UAV Open Dataset of Rice Paddies for Deep Learning Practice
title_short A UAV Open Dataset of Rice Paddies for Deep Learning Practice
title_full A UAV Open Dataset of Rice Paddies for Deep Learning Practice
title_fullStr A UAV Open Dataset of Rice Paddies for Deep Learning Practice
title_full_unstemmed A UAV Open Dataset of Rice Paddies for Deep Learning Practice
title_sort uav open dataset of rice paddies for deep learning practice
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-04-01
description Recently, unmanned aerial vehicles (UAVs) have been broadly applied to the remote sensing field. For a great number of UAV images, deep learning has been reinvigorated and performed many results in agricultural applications. The popular image datasets for deep learning model training are generated for general purpose use, in which the objects, views, and applications are for ordinary scenarios. However, UAV images possess different patterns of images mostly from a look-down perspective. This paper provides a verified annotated dataset of UAV images that are described in data acquisition, data preprocessing, and a showcase of a CNN classification. The dataset collection consists of one multi-rotor UAV platform by flying a planned scouting routine over rice paddies. This paper introduces a semi-auto annotation method with an ExGR index to generate the training data of rice seedlings. For demonstration, this study modified a classical CNN architecture, VGG-16, to run a patch-based rice seedling detection. The k-fold cross-validation was employed to obtain an 80/20 dividing ratio of training/test data. The accuracy of the network increases with the increase of epoch, and all the divisions of the cross-validation dataset achieve a 0.99 accuracy. The rice seedling dataset provides the training-validation dataset, patch-based detection samples, and the ortho-mosaic image of the field.
topic open dataset
deep learning
CNN
training data
UAV images
rice seedling
url https://www.mdpi.com/2072-4292/13/7/1358
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