The digitization and automation of the raw material sector is required to attain the targets set by the Paris Agreements and support the sustainable development goals defined by the United Nations. While many aspects of the industry will be affected, most of the technological innovations will require smart imaging sensors. In this review, we assess the relevant recent developments of machine learning for the processing of imaging sensor data. We first describe the main imagers and the acquired data types as well as the platforms on which they can be installed. We briefly describe radiometric and geometric corrections as these procedures have been already described extensively in previous works. We focus on the description of innovative proc...
In laser welding, real-time process information is required for quality assurance and process contro...
Even though artificial intelligence (AI) has been frequently used for decades, the number of applica...
This study aims to present an overall review of the recent research status regarding Machine Learnin...
The digitization and automation of the raw material sector is required to attain the targets set by ...
Remote sensing technologies have revolutionized the way we observe and analyze Earth’s surface from ...
Machine learning is extending its applications in various fields, such as image processing, the Inte...
In machine vision–based image processing, machine vision products are used to convert the image of a...
Sensors have been widely used for disease diagnosis, environmental quality monitoring, food quality ...
Remote sensing data processing deals with real-life applica-tions with great societal values. For in...
With the recent advances in remote sensing technologies for Earth observation, many different remote...
Remote sensing image processing is nowadays a mature research area. The techniques developed in the ...
International audienceThis study investigates the combination of Mueller imaging polarimetry with ma...
This special feature issue covers the intersection of topical areas in artificial intelligence (AI)/...
An on-line quality assessment system in the industry is essential to prevent artifacts and guide man...
Automatic image analysis is nowadays a standard method in quality control of metallic materials, esp...
In laser welding, real-time process information is required for quality assurance and process contro...
Even though artificial intelligence (AI) has been frequently used for decades, the number of applica...
This study aims to present an overall review of the recent research status regarding Machine Learnin...
The digitization and automation of the raw material sector is required to attain the targets set by ...
Remote sensing technologies have revolutionized the way we observe and analyze Earth’s surface from ...
Machine learning is extending its applications in various fields, such as image processing, the Inte...
In machine vision–based image processing, machine vision products are used to convert the image of a...
Sensors have been widely used for disease diagnosis, environmental quality monitoring, food quality ...
Remote sensing data processing deals with real-life applica-tions with great societal values. For in...
With the recent advances in remote sensing technologies for Earth observation, many different remote...
Remote sensing image processing is nowadays a mature research area. The techniques developed in the ...
International audienceThis study investigates the combination of Mueller imaging polarimetry with ma...
This special feature issue covers the intersection of topical areas in artificial intelligence (AI)/...
An on-line quality assessment system in the industry is essential to prevent artifacts and guide man...
Automatic image analysis is nowadays a standard method in quality control of metallic materials, esp...
In laser welding, real-time process information is required for quality assurance and process contro...
Even though artificial intelligence (AI) has been frequently used for decades, the number of applica...
This study aims to present an overall review of the recent research status regarding Machine Learnin...