The increasing availability of quantum computers motivates researching their potential capabilities in enhancing the performance of data analysis algorithms. Similarly, as in other research communities, also in remote sensing (RS), it is not yet defined how its applications can benefit from the usage of quantum computing (QC). This letter proposes a formulation of the support vector regression (SVR) algorithm that can be executed by D-Wave quantum computers. Specifically, the SVR is mapped to a quadratic unconstrained binary optimization (QUBO) problem that is solved with quantum annealing (QA). The algorithm is tested on two different types of computing environments offered by D-Wave: the advantage system, which directly embeds the problem...
Quantum machine learning is the synergy between quantum computing resources and machine learning met...
In recent years, quantum computing and its application to machine learning have evolved to the point...
Recent advances in characterizing the generalization ability of Support Vector Machines (SVMs) explo...
The increasing availability of quantum computers motivates researching their potential capabilities ...
Regression analysis has a crucial role in many Earth Observation (EO) applications. The increasing a...
Recent developments in Quantum Computing (QC) have paved the way for an enhancement of computing cap...
Satellite instruments monitor the Earth’s surface day and night, and, as a result, the size of Earth...
We first review the current state of the art of quantum computing for Earth observation (EO) and sat...
This article aims to explore the potential of current approaches for quantum image classification in...
Kernel-based support vector machines (SVMs) are supervised machine learning algorithms for classific...
Machine Learning (ML) techniques are employed to analyze and process big Remote Sensing (RS) data, a...
Quantum annealing is an experimental and potentially breakthrough computational technology for handl...
Remotely-sensed images obtained from aircraft and satellite platforms are used for Earth observation...
Quantum Machine Learning (QML) is an emerging technology that only recently has begun to take root i...
The evolution of quantum computers and quantum machine learning (QML) algorithms have started demons...
Quantum machine learning is the synergy between quantum computing resources and machine learning met...
In recent years, quantum computing and its application to machine learning have evolved to the point...
Recent advances in characterizing the generalization ability of Support Vector Machines (SVMs) explo...
The increasing availability of quantum computers motivates researching their potential capabilities ...
Regression analysis has a crucial role in many Earth Observation (EO) applications. The increasing a...
Recent developments in Quantum Computing (QC) have paved the way for an enhancement of computing cap...
Satellite instruments monitor the Earth’s surface day and night, and, as a result, the size of Earth...
We first review the current state of the art of quantum computing for Earth observation (EO) and sat...
This article aims to explore the potential of current approaches for quantum image classification in...
Kernel-based support vector machines (SVMs) are supervised machine learning algorithms for classific...
Machine Learning (ML) techniques are employed to analyze and process big Remote Sensing (RS) data, a...
Quantum annealing is an experimental and potentially breakthrough computational technology for handl...
Remotely-sensed images obtained from aircraft and satellite platforms are used for Earth observation...
Quantum Machine Learning (QML) is an emerging technology that only recently has begun to take root i...
The evolution of quantum computers and quantum machine learning (QML) algorithms have started demons...
Quantum machine learning is the synergy between quantum computing resources and machine learning met...
In recent years, quantum computing and its application to machine learning have evolved to the point...
Recent advances in characterizing the generalization ability of Support Vector Machines (SVMs) explo...