Literature DB >> 35284820

High Resolution, Annual Maps of Field Boundaries for Smallholder-Dominated Croplands at National Scales.

Lyndon D Estes1, Su Ye1,2, Lei Song1, Boka Luo1,3, J Ronald Eastman1,3, Zhenhua Meng1, Qi Zhang1, Dennis McRitchie4, Stephanie R Debats5, Justus Muhando6, Angeline H Amukoa6, Brian W Kaloo6, Jackson Makuru6, Ben K Mbatia6, Isaac M Muasa6, Julius Mucha6, Adelide M Mugami6, Judith M Mugami6, Francis W Muinde6, Fredrick M Mwawaza6, Jeff Ochieng6, Charles J Oduol6, Purent Oduor6, Thuo Wanjiku6, Joseph G Wanyoike6, Ryan B Avery7, Kelly K Caylor7,8,9.   

Abstract

Mapping the characteristics of Africa's smallholder-dominated croplands, including the sizes and numbers of fields, can provide critical insights into food security and a range of other socioeconomic and environmental concerns. However, accurately mapping these systems is difficult because there is 1) a spatial and temporal mismatch between satellite sensors and smallholder fields, and 2) a lack of high-quality labels needed to train and assess machine learning classifiers. We developed an approach designed to address these two problems, and used it to map Ghana's croplands. To overcome the spatio-temporal mismatch, we converted daily, high resolution imagery into two cloud-free composites (the primary growing season and subsequent dry season) covering the 2018 agricultural year, providing a seasonal contrast that helps to improve classification accuracy. To address the problem of label availability, we created a platform that rigorously assesses and minimizes label error, and used it to iteratively train a Random Forests classifier with active learning, which identifies the most informative training sample based on prediction uncertainty. Minimizing label errors improved model F1 scores by up to 25%. Active learning increased F1 scores by an average of 9.1% between first and last training iterations, and 2.3% more than models trained with randomly selected labels. We used the resulting 3.7 m map of cropland probabilities within a segmentation algorithm to delineate crop field boundaries. Using an independent map reference sample (n = 1,207), we found that the cropland probability and field boundary maps had respective overall accuracies of 88 and 86.7%, user's accuracies for the cropland class of 61.2 and 78.9%, and producer's accuracies of 67.3 and 58.2%. An unbiased area estimate calculated from the map reference sample indicates that cropland covers 17.1% (15.4-18.9%) of Ghana. Using the most accurate validation labels to correct for biases in the segmented field boundaries map, we estimated that the average size and total number of field in Ghana are 1.73 ha and 1,662,281, respectively. Our results demonstrate an adaptable and transferable approach for developing annual, country-scale maps of crop field boundaries, with several features that effectively mitigate the errors inherent in remote sensing of smallholder-dominated agriculture.
Copyright © 2022 Estes, Ye, Song, Luo, Eastman, Meng, Zhang, McRitchie, Debats, Muhando, Amukoa, Kaloo, Makuru, Mbatia, Muasa, Mucha, Mugami, Mugami, Muinde, Mwawaza, Ochieng, Oduol, Oduor, Wanjiku, Wanyoike, Avery and Caylor.

Entities:  

Keywords:  Africa; Ghana; PlanetScope; active learning; field size; label error; machine learning; smallholder cropland

Year:  2022        PMID: 35284820      PMCID: PMC8916109          DOI: 10.3389/frai.2021.744863

Source DB:  PubMed          Journal:  Front Artif Intell        ISSN: 2624-8212


  12 in total

1.  Tropical forests were the primary sources of new agricultural land in the 1980s and 1990s.

Authors:  H K Gibbs; A S Ruesch; F Achard; M K Clayton; P Holmgren; N Ramankutty; J A Foley
Journal:  Proc Natl Acad Sci U S A       Date:  2010-08-31       Impact factor: 11.205

2.  Projected climate impacts to South African maize and wheat production in 2055: a comparison of empirical and mechanistic modeling approaches.

Authors:  Lyndon D Estes; Hein Beukes; Bethany A Bradley; Stephanie R Debats; Michael Oppenheimer; Alex C Ruane; Roland Schulze; Mark Tadross
Journal:  Glob Chang Biol       Date:  2013-10-21       Impact factor: 10.863

3.  Mapping global cropland and field size.

Authors:  Steffen Fritz; Linda See; Ian McCallum; Liangzhi You; Andriy Bun; Elena Moltchanova; Martina Duerauer; Fransizka Albrecht; Christian Schill; Christoph Perger; Petr Havlik; Aline Mosnier; Philip Thornton; Ulrike Wood-Sichra; Mario Herrero; Inbal Becker-Reshef; Chris Justice; Matthew Hansen; Peng Gong; Sheta Abdel Aziz; Anna Cipriani; Renato Cumani; Giuliano Cecchi; Giulia Conchedda; Stefanus Ferreira; Adriana Gomez; Myriam Haffani; Francois Kayitakire; Jaiteh Malanding; Rick Mueller; Terence Newby; Andre Nonguierma; Adeaga Olusegun; Simone Ortner; D Ram Rajak; Jansle Rocha; Dmitry Schepaschenko; Maria Schepaschenko; Alexey Terekhov; Alex Tiangwa; Christelle Vancutsem; Elodie Vintrou; Wu Wenbin; Marijn van der Velde; Antonia Dunwoody; Florian Kraxner; Michael Obersteiner
Journal:  Glob Chang Biol       Date:  2015-01-16       Impact factor: 10.863

Review 4.  Using satellite imagery to understand and promote sustainable development.

Authors:  Marshall Burke; Anne Driscoll; David B Lobell; Stefano Ermon
Journal:  Science       Date:  2021-03-19       Impact factor: 47.728

5.  Reconciling agriculture, carbon and biodiversity in a savannah transformation frontier.

Authors:  L D Estes; T Searchinger; M Spiegel; D Tian; S Sichinga; M Mwale; L Kehoe; T Kuemmerle; A Berven; N Chaney; J Sheffield; E F Wood; K K Caylor
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2016-09-19       Impact factor: 6.237

6.  A large-area, spatially continuous assessment of land cover map error and its impact on downstream analyses.

Authors:  Lyndon Estes; Peng Chen; Stephanie Debats; Tom Evans; Stefanus Ferreira; Tobias Kuemmerle; Gabrielle Ragazzo; Justin Sheffield; Adam Wolf; Eric Wood; Kelly Caylor
Journal:  Glob Chang Biol       Date:  2017-10-12       Impact factor: 10.863

7.  Biodiversity at risk under future cropland expansion and intensification.

Authors:  Laura Kehoe; Alfredo Romero-Muñoz; Ester Polaina; Lyndon Estes; Holger Kreft; Tobias Kuemmerle
Journal:  Nat Ecol Evol       Date:  2017-07-17       Impact factor: 15.460

8.  Estimating the global distribution of field size using crowdsourcing.

Authors:  Myroslava Lesiv; Juan Carlos Laso Bayas; Linda See; Martina Duerauer; Domian Dahlia; Neal Durando; Rubul Hazarika; Parag Kumar Sahariah; Mar'yana Vakolyuk; Volodymyr Blyshchyk; Andrii Bilous; Ana Perez-Hoyos; Sarah Gengler; Reinhard Prestele; Svitlana Bilous; Ibrar Ul Hassan Akhtar; Kuleswar Singha; Sochin Boro Choudhury; Tilok Chetri; Žiga Malek; Khangsembou Bungnamei; Anup Saikia; Dhrubajyoti Sahariah; William Narzary; Olha Danylo; Tobias Sturn; Mathias Karner; Ian McCallum; Dmitry Schepaschenko; Elena Moltchanova; Dilek Fraisl; Inian Moorthy; Steffen Fritz
Journal:  Glob Chang Biol       Date:  2018-11-22       Impact factor: 10.863

9.  Delineation of agricultural fields in smallholder farms from satellite images using fully convolutional networks and combinatorial grouping.

Authors:  C Persello; V A Tolpekin; J R Bergado; R A de By
Journal:  Remote Sens Environ       Date:  2019-09-15       Impact factor: 10.164

10.  Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions.

Authors:  Adam M Wilson; Walter Jetz
Journal:  PLoS Biol       Date:  2016-03-31       Impact factor: 8.029

View more
  1 in total

1.  Large-area mapping of active cropland and short-term fallows in smallholder landscapes using PlanetScope data.

Authors:  Philippe Rufin; Adia Bey; Michelle Picoli; Patrick Meyfroidt
Journal:  Int J Appl Earth Obs Geoinf       Date:  2022-08
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.