Oil Palm Fruit Dataset on Plantations for Harvesting Estimation
This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit read...
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creator | Suharjito Naftali, Martinus Grady Hugo, Gregory |
description | This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.
This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number o |
doi_str_mv | 10.57760/sciencedb.12647 |
format | Dataset |
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This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.</description><identifier>DOI: 10.57760/sciencedb.12647</identifier><language>eng</language><publisher>Science Data Bank</publisher><subject>Agronomy ; Aquaculture learn ; Computer science and technology ; Datasets ; Deep Learning ; Digital census ; Information science and systems science ; Oil palm fruits ; oil palm plantation</subject><creationdate>2024</creationdate><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>780,1894</link.rule.ids><linktorsrc>$$Uhttps://commons.datacite.org/doi.org/10.57760/sciencedb.12647$$EView_record_in_DataCite.org$$FView_record_in_$$GDataCite.org$$Hfree_for_read</linktorsrc></links><search><creatorcontrib>Suharjito</creatorcontrib><creatorcontrib>Naftali, Martinus Grady</creatorcontrib><creatorcontrib>Hugo, Gregory</creatorcontrib><title>Oil Palm Fruit Dataset on Plantations for Harvesting Estimation</title><description>This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.
This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.</description><subject>Agronomy</subject><subject>Aquaculture learn</subject><subject>Computer science and technology</subject><subject>Datasets</subject><subject>Deep Learning</subject><subject>Digital census</subject><subject>Information science and systems science</subject><subject>Oil palm fruits</subject><subject>oil palm plantation</subject><fulltext>true</fulltext><rsrctype>dataset</rsrctype><creationdate>2024</creationdate><recordtype>dataset</recordtype><sourceid>PQ8</sourceid><recordid>eNpjYJAwNNAzNTc3M9AvTs5MzUtOTUnSMzQyMzHnZLD3z8xRCEjMyVVwKyrNLFFwSSxJLE4tUcjPUwjIScwrSSzJzM8rVkjLL1LwSCwqSy0uycxLV3AFUrlgKR4G1rTEnOJUXijNzWDg5hri7KGbAjQoObMkNb6gCKi0qDLe0CAe7IZ4uBviwW4wJkMLAD4HQvw</recordid><startdate>20240830</startdate><enddate>20240830</enddate><creator>Suharjito</creator><creator>Naftali, Martinus Grady</creator><creator>Hugo, Gregory</creator><general>Science Data Bank</general><scope>DYCCY</scope><scope>PQ8</scope></search><sort><creationdate>20240830</creationdate><title>Oil Palm Fruit Dataset on Plantations for Harvesting Estimation</title><author>Suharjito ; Naftali, Martinus Grady ; Hugo, Gregory</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-datacite_primary_10_57760_sciencedb_126473</frbrgroupid><rsrctype>datasets</rsrctype><prefilter>datasets</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Agronomy</topic><topic>Aquaculture learn</topic><topic>Computer science and technology</topic><topic>Datasets</topic><topic>Deep Learning</topic><topic>Digital census</topic><topic>Information science and systems science</topic><topic>Oil palm fruits</topic><topic>oil palm plantation</topic><toplevel>online_resources</toplevel><creatorcontrib>Suharjito</creatorcontrib><creatorcontrib>Naftali, Martinus Grady</creatorcontrib><creatorcontrib>Hugo, Gregory</creatorcontrib><collection>DataCite (Open Access)</collection><collection>DataCite</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext_linktorsrc</fulltext></delivery><addata><au>Suharjito</au><au>Naftali, Martinus Grady</au><au>Hugo, Gregory</au><format>book</format><genre>unknown</genre><ristype>DATA</ristype><title>Oil Palm Fruit Dataset on Plantations for Harvesting Estimation</title><date>2024-08-30</date><risdate>2024</risdate><abstract>This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.
This dataset is a data set of oil palm FFB images taken directly from trees in commercial oil palm plantations in Indonesia. The dataset focuses on categorizing oil palm fruits into five stages of fruit maturity: Unripe (early stage fruit), Underripe (transitional phase fruit), Ripe (ripe fruit ready to harvest), Flower (representing the flowering stage), and Abnormal (fruit with typical characteristics due to potential disease or irregularity). This dataset has been validated by oil palm experts in categorizing the level of fruit maturity. It has been pre-processed so that it can be used for developing applications for detecting the level of FFB maturity in the plantation and calculating the number of fruits on oil palm trees with various methods and approaches. Various interests can use this dataset for research and application development such as students, lecturers, researchers, mobile-based application developers, machine learning and deep learning engineers, data science engineers, oil palm post-harvest experts, and other oil palm researchers. This dataset is useful for application development, application testing, and model validation of mobile-based applications or applications embedded in robots. The dataset was meticulously compiled in Central Kalimantan Province, Indonesia, through video recordings at 30 frames per second within an oil palm plantation. We have collected a total of 440 videos, each with varying lengths ranging from 8 seconds to 1 minute and 31 seconds. These videos are captured in a resolution of 320x640 pixels, providing a portrait orientation. The datasets have been split into data training, validation, and testing using composition 70:20:10 with the total images being 10207 for training, 2896 for validation, and 1400 for testing.</abstract><pub>Science Data Bank</pub><doi>10.57760/sciencedb.12647</doi><oa>free_for_read</oa></addata></record> |
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subjects | Agronomy Aquaculture learn Computer science and technology Datasets Deep Learning Digital census Information science and systems science Oil palm fruits oil palm plantation |
title | Oil Palm Fruit Dataset on Plantations for Harvesting Estimation |
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