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Wheat yield estimation based on analysis of UAV images at low altitude. / Kozhekin, Mikhail; Genaev, Mikhail; Koval, Vasily et al.

In: BIO Web of Conferences, Vol. 47, 2022, p. 05006.

Research output: Contribution to journalArticlepeer-review

Harvard

Kozhekin, M, Genaev, M, Koval, V, Slobodchikov, A & Afonnikov, D 2022, 'Wheat yield estimation based on analysis of UAV images at low altitude', BIO Web of Conferences, vol. 47, pp. 05006. https://doi.org/10.1051/bioconf/20224705006

APA

Kozhekin, M., Genaev, M., Koval, V., Slobodchikov, A., & Afonnikov, D. (2022). Wheat yield estimation based on analysis of UAV images at low altitude. BIO Web of Conferences, 47, 05006. https://doi.org/10.1051/bioconf/20224705006

Vancouver

Kozhekin M, Genaev M, Koval V, Slobodchikov A, Afonnikov D. Wheat yield estimation based on analysis of UAV images at low altitude. BIO Web of Conferences. 2022;47:05006. doi: 10.1051/bioconf/20224705006

Author

Kozhekin, Mikhail ; Genaev, Mikhail ; Koval, Vasily et al. / Wheat yield estimation based on analysis of UAV images at low altitude. In: BIO Web of Conferences. 2022 ; Vol. 47. pp. 05006.

BibTeX

@article{909c46a0cabc43928b6c49811130c551,
title = "Wheat yield estimation based on analysis of UAV images at low altitude",
abstract = " Information about the yield of wheat crops makes it possible to correctly assess their productivity and choose apropriate agronomic procedures to maximize yield. However, determining yields based on manual ear counts is labor intensive. Recently UAVs demonstrated high efficiency for rapid yield estimation. This paper presents a software package WDS (Wheat Detection System) for ears counting in wheat crops based on RGB images obtained from UAVs. WDS creates the flight plan, for the acquired images carries out automatic georeferencing to the appropriate fragment of the field, counts ears using the neural network models, reconstructs the density of ears in the crop and visualizes it as a heat map in the interactive web application. Based on the field experiment the accuracy of ears counting in plots was assessed: Spearman and Pearson correlation coefficients between the ears density counted manually and using WDS were 0.618 and 0.541, respectively ( p -value < 0.05). WDS avaliable at https://github.com/Sl07h/wheat_detection. ",
author = "Mikhail Kozhekin and Mikhail Genaev and Vasily Koval and Andrey Slobodchikov and Dmitry Afonnikov",
note = "Публикация для корректировки.",
year = "2022",
doi = "10.1051/bioconf/20224705006",
language = "English",
volume = "47",
pages = "05006",
journal = "BIO Web of Conferences",
issn = "2117-4458",
publisher = "EDP Sciences",

}

RIS

TY - JOUR

T1 - Wheat yield estimation based on analysis of UAV images at low altitude

AU - Kozhekin, Mikhail

AU - Genaev, Mikhail

AU - Koval, Vasily

AU - Slobodchikov, Andrey

AU - Afonnikov, Dmitry

N1 - Публикация для корректировки.

PY - 2022

Y1 - 2022

N2 - Information about the yield of wheat crops makes it possible to correctly assess their productivity and choose apropriate agronomic procedures to maximize yield. However, determining yields based on manual ear counts is labor intensive. Recently UAVs demonstrated high efficiency for rapid yield estimation. This paper presents a software package WDS (Wheat Detection System) for ears counting in wheat crops based on RGB images obtained from UAVs. WDS creates the flight plan, for the acquired images carries out automatic georeferencing to the appropriate fragment of the field, counts ears using the neural network models, reconstructs the density of ears in the crop and visualizes it as a heat map in the interactive web application. Based on the field experiment the accuracy of ears counting in plots was assessed: Spearman and Pearson correlation coefficients between the ears density counted manually and using WDS were 0.618 and 0.541, respectively ( p -value < 0.05). WDS avaliable at https://github.com/Sl07h/wheat_detection.

AB - Information about the yield of wheat crops makes it possible to correctly assess their productivity and choose apropriate agronomic procedures to maximize yield. However, determining yields based on manual ear counts is labor intensive. Recently UAVs demonstrated high efficiency for rapid yield estimation. This paper presents a software package WDS (Wheat Detection System) for ears counting in wheat crops based on RGB images obtained from UAVs. WDS creates the flight plan, for the acquired images carries out automatic georeferencing to the appropriate fragment of the field, counts ears using the neural network models, reconstructs the density of ears in the crop and visualizes it as a heat map in the interactive web application. Based on the field experiment the accuracy of ears counting in plots was assessed: Spearman and Pearson correlation coefficients between the ears density counted manually and using WDS were 0.618 and 0.541, respectively ( p -value < 0.05). WDS avaliable at https://github.com/Sl07h/wheat_detection.

UR - https://www.mendeley.com/catalogue/bf512086-8736-3daa-919c-3064e1f54e45/

U2 - 10.1051/bioconf/20224705006

DO - 10.1051/bioconf/20224705006

M3 - Article

VL - 47

SP - 05006

JO - BIO Web of Conferences

JF - BIO Web of Conferences

SN - 2117-4458

ER -

ID: 55698166