Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

UAV hyperspectral image acquisition and processing, an application for nutrient estimation of rice in Vietnam

View through CrossRef
Hyperspectral imagery obtained from Unmanned Aerial Vehicles (UAVs) is increasingly employed to investigate nutrient concentrations in vegetation. The deployment of a hyperspectral camera on a UAV, flight planning, image acquisition, preprocessing of hyperspectral data, and the subsequent estimation of nutrient concentrations in vegetation are facing challenges. These challenges manifest as geometric, spectral distortions, and the abundance of numerous spectral bands. This study seeks to guide on mitigating the impact of issues encountered during an experiment to estimate nutrient concentrations in rice leaves using UAV hyperspectral images. An industrial hexagonal drone equipped with a push-broom hyperspectral camera featuring 122 bands within the Visible to Near-Infrared (VIS-NIR) wavelength range (400-960 nm) is employed to collect data over a 1-hectare testing rice field. Models for estimating Leaf Phosphorus Concentration (LPC) and Leaf Potassium Concentration (LKC) are developed based on the correlation between hyperspectral images, characterized by a 3 cm spatial resolution, and 162 LPC and 162 LKC reference data points. Utilizing various vegetation indices for LPC and LKC estimation, the outcomes reveal that a combination of band wavelengths at 838 nm and 734 nm is effective for LPC estimation, yielding a Root Mean Square Error (RMSE) of 27.1%. Conversely, LKC estimation exhibits an RMSE of 38.8% with an insignificant correlation between LKC and the current wavelength ranges. Above all, this study is a primary example of the utilization of UAV hyperspectral data in precision agriculture in Vietnam.
Title: UAV hyperspectral image acquisition and processing, an application for nutrient estimation of rice in Vietnam
Description:
Hyperspectral imagery obtained from Unmanned Aerial Vehicles (UAVs) is increasingly employed to investigate nutrient concentrations in vegetation.
The deployment of a hyperspectral camera on a UAV, flight planning, image acquisition, preprocessing of hyperspectral data, and the subsequent estimation of nutrient concentrations in vegetation are facing challenges.
These challenges manifest as geometric, spectral distortions, and the abundance of numerous spectral bands.
This study seeks to guide on mitigating the impact of issues encountered during an experiment to estimate nutrient concentrations in rice leaves using UAV hyperspectral images.
An industrial hexagonal drone equipped with a push-broom hyperspectral camera featuring 122 bands within the Visible to Near-Infrared (VIS-NIR) wavelength range (400-960 nm) is employed to collect data over a 1-hectare testing rice field.
Models for estimating Leaf Phosphorus Concentration (LPC) and Leaf Potassium Concentration (LKC) are developed based on the correlation between hyperspectral images, characterized by a 3 cm spatial resolution, and 162 LPC and 162 LKC reference data points.
Utilizing various vegetation indices for LPC and LKC estimation, the outcomes reveal that a combination of band wavelengths at 838 nm and 734 nm is effective for LPC estimation, yielding a Root Mean Square Error (RMSE) of 27.
1%.
Conversely, LKC estimation exhibits an RMSE of 38.
8% with an insignificant correlation between LKC and the current wavelength ranges.
Above all, this study is a primary example of the utilization of UAV hyperspectral data in precision agriculture in Vietnam.

Related Results

Biodiversity potential and scientific basis for conservation in the Song Hinh - Tay Hoa area, Dak Lak province, Vietnam
Biodiversity potential and scientific basis for conservation in the Song Hinh - Tay Hoa area, Dak Lak province, Vietnam
The Song Hinh - Tay Hoa area harbors exceptional ecological and biodiversity values. Two characteristic forest ecosystems are represented: lowland and mid-montane evergreen tropica...
Analisis Perbandingan Kadar Glukosa Beras Berdasarkan Cara Memasak
Analisis Perbandingan Kadar Glukosa Beras Berdasarkan Cara Memasak
Rice is the main staple food source in Indonesia with an annual consumption of 25.3 million metric tons. The processing method of rice into cooked rice can affect the glucose level...
Tethered UAV-active defense against intelligent cluster
Tethered UAV-active defense against intelligent cluster
Purpose With the development of wireless networks and artificial intelligence technology, unmanned aerial vehicle (UAV) clusters are widely used in various fields...
DETECTION OF GENETICALLY MODIFIED RICE LOCALLY AVAILABLE IN PUNJAB, PAKISTAN
DETECTION OF GENETICALLY MODIFIED RICE LOCALLY AVAILABLE IN PUNJAB, PAKISTAN
Rice (Oryza sativa L.) is an important cereal crop that provides food to half of the world's population. Pakistan's traditional and premium quality rice is mostly exported to Europ...
Rice that Filipinos Grow and Eat
Rice that Filipinos Grow and Eat
This paper introduces rice to the reader and analyzes the changes it has gone through these past 100 years in the shaping hands of varietal improvement science. Here, the richness ...
Mixed-reality for unmanned aerial vehicle operations in near earth environments
Mixed-reality for unmanned aerial vehicle operations in near earth environments
Future applications will bring unmanned aerial vehicles (UAVs) to near Earth environments such as urban areas, causing a change in the way UAVs are currently operated. Of concern i...

Back to Top