Ag Data Commons
Browse

Data from: Deep Learning for Sorghum Yield Forecasting using Uncrewed 2 Aerial Systems and Lab-Derived Imagery

dataset
posted on 2025-12-22, 16:56 authored by Scott BeanScott Bean
<p dir="ltr">Sorghum is an important grain crop in the central plains of the United States and is used for feed, fuel, and food. Sorghum has a wide degree of genetic and phenotypic diversity which can be exploited to improve the agronomic performance and end-use quality and value of the crop. Grain yield is a primary trait that the sorghum breeding industry is working on improving as increased yields directly relate to the value and productivity. Therefore, to take advantage of the genetic diversity of sorghum and develop new lines with improved yield, methods for rapidly determining and predicting yield are necessary. This research evaluated the use of deep learning algorithms to predict yield from images of sorghum and found that yield could be forecast using deep learning processing of images.</p><p dir="ltr">Data includes physical measurements of individual sorghum kernel length and thickness (diameter) used as "ground truth" measurements to help verify seed size measurements determined from bulk grain image analysis.</p>

Funding

USDA-ARS: 3020-43440-002-00D

History

Data contact name

Bean, Scott, R.

Data contact email

scott.bean@usda.gov

Publisher

Ag Data Commons

Temporal Extent Start Date

2024-09-03

Temporal Extent End Date

2025-10-08

Theme

  • Non-geospatial

ISO Topic Category

  • farming

National Agricultural Library Thesaurus terms

yield forecasting; Sorghum (Poaceae); phenotypic variation; agronomic traits; grain yield; genetic variation; prediction; image analysis; artificial intelligence

OMB Bureau Code

  • 005:18 - Agricultural Research Service

OMB Program Code

  • 005:040 - National Research

ARS National Program Number

  • 306

ARIS Log Number

424178

Pending citation

  • Yes

Public Access Level

  • Public

Usage metrics

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC