Data from: Multi-species fruit flower detection using a refined semantic segmentation network

<p>This dataset consists of four sets of flower images, from three different species: apple, peach, and pear, and accompanying ground truth images. The images were acquired under a range of imaging conditions. These datasets support work in an accompanying paper that demonstrates a flower identification algorithm that is robust to uncontrolled environments and applicable to different flower species. While this data is primarily provided to support that paper, other researchers interested in flower detection may also use the dataset to develop new algorithms. Flower detection is a problem of interest in orchard crops because it is related to management of fruit load.</p> <p>Funding provided through ARS Integrated Orchard Management and Automation for Deciduous Tree Fruit Crops. </p><div><br>Resources in this dataset:</div><br><ul><li><p>Resource Title: AppleA images.</p> <p>File Name: AppleA.zip</p><p>Resource Description: 147 images of an apple tree in bloom acquired with a Canon EOS 60D.</p></li><br><li><p>Resource Title: Training image names from Apple A dataset.</p> <p>File Name: train.txt</p><p>Resource Description: This is a list of filenames used in training; see related paper for details.</p></li><br><li><p>Resource Title: AppleA labels.</p> <p>File Name: AppleA_Labels.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels.<br> June 25, 2018: 5 files added: 275.png, 316.png, 328.png, 336.png, 369.png.</p></li><br><li><p>Resource Title: Validation image names from Apple A dataset.</p> <p>File Name: val.txt</p><p>Resource Description: This is a list of filenames used in testing; see related paper for details. </p> <p>June 25, 2018: 5 filenames added.<br> IMG_0275.JPG IMG_0316.JPG IMG_0328.JPG IMG_0336.JPG IMG_0369.JPG</p></li><br><li><p>Resource Title: AppleB images.</p> <p>File Name: AppleB.zip</p><p>Resource Description: 15 images of an apple tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: AppleB labels.</p> <p>File Name: AppleB_Labels.zip</p><p>Resource Description: Binary images for the Apple B set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: Peach.</p> <p>File Name: Peach.zip</p><p>Resource Description: 20 images of an peach tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Peach labels.</p> <p>File Name: PeachLabels.zip</p><p>Resource Description: Binary images for the Peach set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Pear.</p> <p>File Name: Pear.zip</p><p>Resource Description: 15 images of a free-standing pear tree in bloom, acquired with a GoPro HERO5.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Pear labels.</p> <p>File Name: PearLabels.zip</p><p>Resource Description: Binary images for the pear set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Apple A Labeled images from training set .</p> <p>File Name: AppleALabels_Train.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels. These images form the training set. Resource added August 20, 2018. User noted that this resource was missing.</p></li></ul><p></p>

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Bibliographic Details
Main Authors: Philipe A. Dias (17478870), Amy Tabb (17362417), Henry Medeiros (17478603)
Format: Dataset biblioteca
Published: 2018
Subjects:Crop and pasture production, Plant biology not elsewhere classified, Geomatic engineering, Photogrammetry and remote sensing, apple, pear, peach, flower, algorithm, segmentation, computer vision, precision agriculture, NP305, data.gov, ARS,
Online Access:https://figshare.com/articles/dataset/Data_from_Multi-species_fruit_flower_detection_using_a_refined_semantic_segmentation_network/24852636
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id dat-usda-us-article24852636
record_format figshare
institution USDA US
collection Figshare
country Estados Unidos
countrycode US
component Datos de investigación
access En linea
databasecode dat-usda-us
tag biblioteca
region America del Norte
libraryname National Agricultural Library of USDA
topic Crop and pasture production
Plant biology not elsewhere classified
Geomatic engineering
Photogrammetry and remote sensing
apple
pear
peach
flower
algorithm
segmentation
computer vision
precision agriculture
NP305
data.gov
ARS
spellingShingle Crop and pasture production
Plant biology not elsewhere classified
Geomatic engineering
Photogrammetry and remote sensing
apple
pear
peach
flower
algorithm
segmentation
computer vision
precision agriculture
NP305
data.gov
ARS
Philipe A. Dias (17478870)
Amy Tabb (17362417)
Henry Medeiros (17478603)
Data from: Multi-species fruit flower detection using a refined semantic segmentation network
description <p>This dataset consists of four sets of flower images, from three different species: apple, peach, and pear, and accompanying ground truth images. The images were acquired under a range of imaging conditions. These datasets support work in an accompanying paper that demonstrates a flower identification algorithm that is robust to uncontrolled environments and applicable to different flower species. While this data is primarily provided to support that paper, other researchers interested in flower detection may also use the dataset to develop new algorithms. Flower detection is a problem of interest in orchard crops because it is related to management of fruit load.</p> <p>Funding provided through ARS Integrated Orchard Management and Automation for Deciduous Tree Fruit Crops. </p><div><br>Resources in this dataset:</div><br><ul><li><p>Resource Title: AppleA images.</p> <p>File Name: AppleA.zip</p><p>Resource Description: 147 images of an apple tree in bloom acquired with a Canon EOS 60D.</p></li><br><li><p>Resource Title: Training image names from Apple A dataset.</p> <p>File Name: train.txt</p><p>Resource Description: This is a list of filenames used in training; see related paper for details.</p></li><br><li><p>Resource Title: AppleA labels.</p> <p>File Name: AppleA_Labels.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels.<br> June 25, 2018: 5 files added: 275.png, 316.png, 328.png, 336.png, 369.png.</p></li><br><li><p>Resource Title: Validation image names from Apple A dataset.</p> <p>File Name: val.txt</p><p>Resource Description: This is a list of filenames used in testing; see related paper for details. </p> <p>June 25, 2018: 5 filenames added.<br> IMG_0275.JPG IMG_0316.JPG IMG_0328.JPG IMG_0336.JPG IMG_0369.JPG</p></li><br><li><p>Resource Title: AppleB images.</p> <p>File Name: AppleB.zip</p><p>Resource Description: 15 images of an apple tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: AppleB labels.</p> <p>File Name: AppleB_Labels.zip</p><p>Resource Description: Binary images for the Apple B set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: Peach.</p> <p>File Name: Peach.zip</p><p>Resource Description: 20 images of an peach tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Peach labels.</p> <p>File Name: PeachLabels.zip</p><p>Resource Description: Binary images for the Peach set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Pear.</p> <p>File Name: Pear.zip</p><p>Resource Description: 15 images of a free-standing pear tree in bloom, acquired with a GoPro HERO5.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Pear labels.</p> <p>File Name: PearLabels.zip</p><p>Resource Description: Binary images for the pear set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Apple A Labeled images from training set .</p> <p>File Name: AppleALabels_Train.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels. These images form the training set. Resource added August 20, 2018. User noted that this resource was missing.</p></li></ul><p></p>
format Dataset
author Philipe A. Dias (17478870)
Amy Tabb (17362417)
Henry Medeiros (17478603)
author_facet Philipe A. Dias (17478870)
Amy Tabb (17362417)
Henry Medeiros (17478603)
author_sort Philipe A. Dias (17478870)
title Data from: Multi-species fruit flower detection using a refined semantic segmentation network
title_short Data from: Multi-species fruit flower detection using a refined semantic segmentation network
title_full Data from: Multi-species fruit flower detection using a refined semantic segmentation network
title_fullStr Data from: Multi-species fruit flower detection using a refined semantic segmentation network
title_full_unstemmed Data from: Multi-species fruit flower detection using a refined semantic segmentation network
title_sort data from: multi-species fruit flower detection using a refined semantic segmentation network
publishDate 2018
url https://figshare.com/articles/dataset/Data_from_Multi-species_fruit_flower_detection_using_a_refined_semantic_segmentation_network/24852636
work_keys_str_mv AT philipeadias17478870 datafrommultispeciesfruitflowerdetectionusingarefinedsemanticsegmentationnetwork
AT amytabb17362417 datafrommultispeciesfruitflowerdetectionusingarefinedsemanticsegmentationnetwork
AT henrymedeiros17478603 datafrommultispeciesfruitflowerdetectionusingarefinedsemanticsegmentationnetwork
_version_ 1808945848090886144
spelling dat-usda-us-article248526362018-03-02T00:00:00Z Data from: Multi-species fruit flower detection using a refined semantic segmentation network Philipe A. Dias (17478870) Amy Tabb (17362417) Henry Medeiros (17478603) Crop and pasture production Plant biology not elsewhere classified Geomatic engineering Photogrammetry and remote sensing apple pear peach flower algorithm segmentation computer vision precision agriculture NP305 data.gov ARS <p>This dataset consists of four sets of flower images, from three different species: apple, peach, and pear, and accompanying ground truth images. The images were acquired under a range of imaging conditions. These datasets support work in an accompanying paper that demonstrates a flower identification algorithm that is robust to uncontrolled environments and applicable to different flower species. While this data is primarily provided to support that paper, other researchers interested in flower detection may also use the dataset to develop new algorithms. Flower detection is a problem of interest in orchard crops because it is related to management of fruit load.</p> <p>Funding provided through ARS Integrated Orchard Management and Automation for Deciduous Tree Fruit Crops. </p><div><br>Resources in this dataset:</div><br><ul><li><p>Resource Title: AppleA images.</p> <p>File Name: AppleA.zip</p><p>Resource Description: 147 images of an apple tree in bloom acquired with a Canon EOS 60D.</p></li><br><li><p>Resource Title: Training image names from Apple A dataset.</p> <p>File Name: train.txt</p><p>Resource Description: This is a list of filenames used in training; see related paper for details.</p></li><br><li><p>Resource Title: AppleA labels.</p> <p>File Name: AppleA_Labels.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels.<br> June 25, 2018: 5 files added: 275.png, 316.png, 328.png, 336.png, 369.png.</p></li><br><li><p>Resource Title: Validation image names from Apple A dataset.</p> <p>File Name: val.txt</p><p>Resource Description: This is a list of filenames used in testing; see related paper for details. </p> <p>June 25, 2018: 5 filenames added.<br> IMG_0275.JPG IMG_0316.JPG IMG_0328.JPG IMG_0336.JPG IMG_0369.JPG</p></li><br><li><p>Resource Title: AppleB images.</p> <p>File Name: AppleB.zip</p><p>Resource Description: 15 images of an apple tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: AppleB labels.</p> <p>File Name: AppleB_Labels.zip</p><p>Resource Description: Binary images for the Apple B set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 23.bmp 28.bmp 42.bmp</p></li><br><li><p>Resource Title: Peach.</p> <p>File Name: Peach.zip</p><p>Resource Description: 20 images of an peach tree in bloom acquired with a GoPro HERO 5.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Peach labels.</p> <p>File Name: PeachLabels.zip</p><p>Resource Description: Binary images for the Peach set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 4 files added. 14.bmp 34.bmp 40.bmp 41.bmp</p></li><br><li><p>Resource Title: Pear.</p> <p>File Name: Pear.zip</p><p>Resource Description: 15 images of a free-standing pear tree in bloom, acquired with a GoPro HERO5.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Pear labels.</p> <p>File Name: PearLabels.zip</p><p>Resource Description: Binary images for the pear set, where white represents flower pixels and black, non-flower pixels.</p> <p>June 25, 2018: 3 files added. 1_25.bmp 1_62.bmp 2_28.bmp</p></li><br><li><p>Resource Title: Apple A Labeled images from training set .</p> <p>File Name: AppleALabels_Train.zip</p><p>Resource Description: Binary images for the Apple A set, where white represents flower pixels and black, non-flower pixels. These images form the training set. Resource added August 20, 2018. User noted that this resource was missing.</p></li></ul><p></p> 2018-03-02T00:00:00Z Dataset Dataset 10.15482/usda.adc/1423466 https://figshare.com/articles/dataset/Data_from_Multi-species_fruit_flower_detection_using_a_refined_semantic_segmentation_network/24852636 U.S. Public Domain