Javascript must be enabled to continue!
Estimating Soil Attributes for Yield Gap Reduction in Africa Using Hyperspectral Remote Sensing Data with Artificial Intelligence Methods: An Extensive Review and Synthesis
View through CrossRef
Africa’s rapidly growing population is driving unprecedented demands on agricultural production systems. However, agricultural yields in Africa are far below their potential. One of the challenges leading to low productivity is Africa‘s poor soil quality. Effective soil fertility management is an essential key factor for optimizing agricultural productivity while ensuring environmental sustainability. Key soil fertility properties—such as soil organic carbon (SOC), nutrient levels (i.e., nitrogen (N), phosphorus (P), potassium (K), moisture retention (MR) or moisture content (MC), and soil texture (clay, sand, and loam fractions)—are critical factors influencing crop yield. In this context, this study conducts an extensive literature review on the use of hyperspectral remote sensing technologies, with a particular focus on freely accessible hyperspectral remote sensing data (e.g., PRISMA, EnMAP), as well as an evaluation of advanced Artificial Intelligence (AI) models for analyzing and processing spectral data to map soil attributes. More specifically, the study examined progress in applying hyperspectral remote sensing technologies for monitoring and mapping soil properties in Africa over the last 15 years (2008–2024). Our results demonstrated that (i) only very few studies have explored high-resolution remote sensing sensors (i.e., hyperspectral satellite sensors) for soil property mapping in Africa; (ii) there is a considerable value in AI approaches for estimating and mapping soil attributes, with a strong recommendation to further explore the potential of deep learning techniques; (iii) despite advancements in AI-based methodologies and the availability of hyperspectral sensors, their combined application remains underexplored in the African context. To our knowledge, no studies have yet integrated these technologies for soil property mapping in Africa. This review also highlights the potential of adopting hyperspectral data (i.e., encompassing both imaging and spectroscopy) integrated with advanced AI models to enhance the accurate mapping of soil fertility properties in Africa, thereby constituting a base for addressing the question of yield gap.
Title: Estimating Soil Attributes for Yield Gap Reduction in Africa Using Hyperspectral Remote Sensing Data with Artificial Intelligence Methods: An Extensive Review and Synthesis
Description:
Africa’s rapidly growing population is driving unprecedented demands on agricultural production systems.
However, agricultural yields in Africa are far below their potential.
One of the challenges leading to low productivity is Africa‘s poor soil quality.
Effective soil fertility management is an essential key factor for optimizing agricultural productivity while ensuring environmental sustainability.
Key soil fertility properties—such as soil organic carbon (SOC), nutrient levels (i.
e.
, nitrogen (N), phosphorus (P), potassium (K), moisture retention (MR) or moisture content (MC), and soil texture (clay, sand, and loam fractions)—are critical factors influencing crop yield.
In this context, this study conducts an extensive literature review on the use of hyperspectral remote sensing technologies, with a particular focus on freely accessible hyperspectral remote sensing data (e.
g.
, PRISMA, EnMAP), as well as an evaluation of advanced Artificial Intelligence (AI) models for analyzing and processing spectral data to map soil attributes.
More specifically, the study examined progress in applying hyperspectral remote sensing technologies for monitoring and mapping soil properties in Africa over the last 15 years (2008–2024).
Our results demonstrated that (i) only very few studies have explored high-resolution remote sensing sensors (i.
e.
, hyperspectral satellite sensors) for soil property mapping in Africa; (ii) there is a considerable value in AI approaches for estimating and mapping soil attributes, with a strong recommendation to further explore the potential of deep learning techniques; (iii) despite advancements in AI-based methodologies and the availability of hyperspectral sensors, their combined application remains underexplored in the African context.
To our knowledge, no studies have yet integrated these technologies for soil property mapping in Africa.
This review also highlights the potential of adopting hyperspectral data (i.
e.
, encompassing both imaging and spectroscopy) integrated with advanced AI models to enhance the accurate mapping of soil fertility properties in Africa, thereby constituting a base for addressing the question of yield gap.
Related Results
Enhancing Soil Fertility Mapping with Hyperspectral Remote Sensing and Advanced AI: A Comparative Study of Dimensionality Reduction Techniques in Morocco
Enhancing Soil Fertility Mapping with Hyperspectral Remote Sensing and Advanced AI: A Comparative Study of Dimensionality Reduction Techniques in Morocco
As global food demand increases, farming systems experience heightened pressure to enhance productivity on limited arable land. In Africa, including Morocco, smallholder farms are ...
Hyperspectral Remote Sensing in Agriculture-A review
Hyperspectral Remote Sensing in Agriculture-A review
AbstractThe development of advanced remote capture devices with great spatial and spectral resolution and the ongoing development of more effective computing resources to handle th...
Mapping Mineralogical Distributions on Mars with Unsupervised Machine Learning
Mapping Mineralogical Distributions on Mars with Unsupervised Machine Learning
Abstract
Knowledge of the constituents of the Martian surface and their distributions over the planet informs us about Mars’ geomorphological formation and evolutionary h...
Afrikanske smede
Afrikanske smede
African Smiths Cultural-historical and sociological problems illuminated by studies among the Tuareg and by comparative analysisIn KUML 1957 in connection with a description of sla...
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract
The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Learned Hyperspectral Compression Using a Student’s T Hyperprior
Learned Hyperspectral Compression Using a Student’s T Hyperprior
Hyperspectral compression is one of the most common techniques in hyperspectral image processing. Most recent learned image compression methods have exhibited excellent rate-distor...
Current Advances in Hyperspectral Face Recognition
Current Advances in Hyperspectral Face Recognition
Hyperspectral imaging systems are well established,
for satellite, remote sensing and geosciences applications. Recently, the reduction in the cost of hyperspectral sensors and
inc...
Current Advances in Hyperspectral Face Recognition
Current Advances in Hyperspectral Face Recognition
Hyperspectral imaging systems are well established,
for satellite, remote sensing and geosciences applications. Recently, the reduction in the cost of hyperspectral sensors and
inc...

