Recognition of underlying surface using a convolutional neural network on a single-board computer

The results of the development of hardware and software system (micromodule), which detects and classifies underlying surface images of the Earth are presented. The micromodule can be installed on board of a light unmanned aerial vehicle (drone). The device has the size 5.2×7.4×3.1 cm, the weight52...

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Main Authors: D. A. Paulenka, V. A. Kovalev, E. V. Snezhko, V. A. Liauchuk, E. I. Pechkovsky
Format: Article
Language:Russian
Published: National Academy of Sciences of Belarus, the United Institute of Informatics Problems 2020-09-01
Series:Informatika
Subjects:
Online Access:https://inf.grid.by/jour/article/view/1053
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author D. A. Paulenka
V. A. Kovalev
E. V. Snezhko
V. A. Liauchuk
E. I. Pechkovsky
author_facet D. A. Paulenka
V. A. Kovalev
E. V. Snezhko
V. A. Liauchuk
E. I. Pechkovsky
author_sort D. A. Paulenka
collection DOAJ
description The results of the development of hardware and software system (micromodule), which detects and classifies underlying surface images of the Earth are presented. The micromodule can be installed on board of a light unmanned aerial vehicle (drone). The device has the size 5.2×7.4×3.1 cm, the weight52 g, runs on a Raspberry Pi Zero Wireless single-board microcomputer and uses a convolutional neural network based on MobileNetV2 architecture for real-time image classification. When developing the micromodule, the authors aimed to achieve a real-time image classification on inexpensive mobile equipment with low computing power so that the classification quality is  comparable  to  popular  deep  convolutional  network  architectures. The provided information could be useful for engineers and researchers who are developing compact budget mobile systems for processing, analyzing and recognition of images.
format Article
id doaj-art-bfc971b3008343f594399f17103e08f9
institution Kabale University
issn 1816-0301
language Russian
publishDate 2020-09-01
publisher National Academy of Sciences of Belarus, the United Institute of Informatics Problems
record_format Article
series Informatika
spelling doaj-art-bfc971b3008343f594399f17103e08f92025-08-20T04:00:40ZrusNational Academy of Sciences of Belarus, the United Institute of Informatics ProblemsInformatika1816-03012020-09-01173364310.37661/1816-0301-2020-17-3-36-43936Recognition of underlying surface using a convolutional neural network on a single-board computerD. A. Paulenka0V. A. Kovalev1E. V. Snezhko2V. A. Liauchuk3E. I. Pechkovsky4The United Institute of Informatics Problems of the National Academy of Sciences of BelarusThe United Institute of Informatics Problems of the National Academy of Sciences of BelarusThe United Institute of Informatics Problems of the National Academy of Sciences of BelarusThe United Institute of Informatics Problems of the National Academy of Sciences of BelarusThe United Institute of Informatics Problems of the National Academy of Sciences of BelarusThe results of the development of hardware and software system (micromodule), which detects and classifies underlying surface images of the Earth are presented. The micromodule can be installed on board of a light unmanned aerial vehicle (drone). The device has the size 5.2×7.4×3.1 cm, the weight52 g, runs on a Raspberry Pi Zero Wireless single-board microcomputer and uses a convolutional neural network based on MobileNetV2 architecture for real-time image classification. When developing the micromodule, the authors aimed to achieve a real-time image classification on inexpensive mobile equipment with low computing power so that the classification quality is  comparable  to  popular  deep  convolutional  network  architectures. The provided information could be useful for engineers and researchers who are developing compact budget mobile systems for processing, analyzing and recognition of images.https://inf.grid.by/jour/article/view/1053image recognitionconvolutional neural networkdeep learningsingle-board computermobile system
spellingShingle D. A. Paulenka
V. A. Kovalev
E. V. Snezhko
V. A. Liauchuk
E. I. Pechkovsky
Recognition of underlying surface using a convolutional neural network on a single-board computer
Informatika
image recognition
convolutional neural network
deep learning
single-board computer
mobile system
title Recognition of underlying surface using a convolutional neural network on a single-board computer
title_full Recognition of underlying surface using a convolutional neural network on a single-board computer
title_fullStr Recognition of underlying surface using a convolutional neural network on a single-board computer
title_full_unstemmed Recognition of underlying surface using a convolutional neural network on a single-board computer
title_short Recognition of underlying surface using a convolutional neural network on a single-board computer
title_sort recognition of underlying surface using a convolutional neural network on a single board computer
topic image recognition
convolutional neural network
deep learning
single-board computer
mobile system
url https://inf.grid.by/jour/article/view/1053
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AT vakovalev recognitionofunderlyingsurfaceusingaconvolutionalneuralnetworkonasingleboardcomputer
AT evsnezhko recognitionofunderlyingsurfaceusingaconvolutionalneuralnetworkonasingleboardcomputer
AT valiauchuk recognitionofunderlyingsurfaceusingaconvolutionalneuralnetworkonasingleboardcomputer
AT eipechkovsky recognitionofunderlyingsurfaceusingaconvolutionalneuralnetworkonasingleboardcomputer