Projects per year
Abstract
Interest in forage maize (Zea mays L.) cultivation for livestock feed has grown in northern conditions. In addition, it is important to develop methods and tools to monitor crop development and other characteristics of the crop. For these purposes UAVs are very efficient and versatile tools. UAVs can be equipped with a variety of sensors like lidar or different types of cameras. Several studies have been conducted where data collected by UAVs are used to estimate different crop properties like yield and biomass. In this research, a forage maize field experiment was studied to examine how well the aerial multispectral data correlated with the different properties of the vegetation. The field test site is located in Helsinki, Finland. A multispectral camera (MicaSense Rededge 3) was used to take images from five spectral bands (Red, Green, Blue, Rededge and NIR). All the images were processed with Pix4D software to generate orthomosaic images. Several vegetation indices were calculated from the five spectral bands. During the growing season, crop height, chlorophyll content, leaf area index (LAI), fresh and dry matter biomass were measured from the vegetation. From the five spectral bands, Rededge had the highest correlation with fresh biomass (R2 = 0.273). The highest correlation for a vegetation index was found between NDRE and chlorophyll content (R2 = 0.809). A multiple linear regression (MLR) model using selected spectral bands and vegetation indices as inputs showed high correlations with the field measurements.
Original language | English |
---|---|
Publication status | Published - 10 May 2023 |
MoE publication type | Not Eligible |
Event | Biosystems Engineering 2023 - Tartu, Estonia Duration: 10 May 2023 → 12 May 2023 |
Conference
Conference | Biosystems Engineering 2023 |
---|---|
Country/Territory | Estonia |
City | Tartu |
Period | 10/05/2023 → 12/05/2023 |
Fields of Science
- 4111 Agronomy
Projects
- 1 Finished
-
Using aerial imaging for field cultivation modeling and decision-making
Lajunen, A. (Project manager) & Änäkkälä, M. A. (Participant)
01/04/2019 → 31/12/2021
Project: Research project
Equipment
-
Viikki Research Farm; including Muddusjärvi and Suitia resources (LS-RIA/ Research Stations)
Jokiniemi, T. (Manager)
Faculty of Agriculture and ForestryFacility/equipment: Core Facility