دسته بندی:
محاسبات کوانتومی - Quantum-Computing
سال انتشار:
2022
عنوان انگلیسی مقاله:
Quantum SVR for Chlorophyll Concentration Estimation in Water With Remote Sensing
ترجمه فارسی عنوان مقاله:
منبع:
ieee - ieee Geoscience and Remote Sensing Letters;2022;19; ;10:1109/LGRS:2022:3200325
نویسنده:
Edoardo Pasetto; Morris Riedel; Farid Melgani; Kristel Michielsen; Gabriele Cavallaro
چکیده انگلیسی:
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 into the quantum processing unit
(QPU), and a hybrid solver that employs both classical and
QC resources. For the evaluation, we considered a biophysical
variable estimation problem with RS data. The experimental
results show that the proposed quantum SVR implementation
can achieve comparable or, in some cases, better results than the
classical implementation. This work is one of the first attempts to
provide insight into how QA could be exploited and integrated in
future RS workflows based on machine learning (ML) algorithms.
Index Terms: Quantum annealing (QA) | quantum computing (QC) | quantum machine learning (QML) | remote sensing (RS) | support vector regression (SVR).
قیمت: رایگان
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