Image synthesis with neural networks for traffic sign classification

In this work, we research the applicability of generative adversarial neural networks for generating training samples for a traffic sign classification task. We consider generative neural networks trained using the Wasserstein metric. As a baseline method for comparison, we take image generation bas...

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Main Authors: Vladislav Shakhuro, Anton Konushin
Format: Article
Language:English
Published: Samara National Research University 2018-02-01
Series:Компьютерная оптика
Subjects:
Online Access:http://computeroptics.smr.ru/KO/PDF/KO42-1/420113.pdf
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spelling doaj-db6b58e7e98b4fdaa333d434d5d27a632020-11-25T01:29:44ZengSamara National Research UniversityКомпьютерная оптика0134-24522412-61792018-02-0142110511210.18287/2412-6179-2018-42-1-105-112Image synthesis with neural networks for traffic sign classificationVladislav Shakhuro0Anton Konushin1NRU Higher School of Economics, Moscow, RussiaNRU Higher School of Economics, Moscow, Russia, Lomonosov Moscow State University, Moscow, RussiaIn this work, we research the applicability of generative adversarial neural networks for generating training samples for a traffic sign classification task. We consider generative neural networks trained using the Wasserstein metric. As a baseline method for comparison, we take image generation based on traffic sign icons. Experimental evaluation of the classifiers based on convolutional neural networks is conducted on real data, two types of synthetic data, and a combination of real and synthetic data. The experiments show that modern generative neural networks are capable of generating realistic training samples for traffic sign classification that outperform methods for generating images with icons, but are still slightly worse than real images for classifier training.http://computeroptics.smr.ru/KO/PDF/KO42-1/420113.pdftraffic sign classificationsynthetic training samplegenerative neural network
collection DOAJ
language English
format Article
sources DOAJ
author Vladislav Shakhuro
Anton Konushin
spellingShingle Vladislav Shakhuro
Anton Konushin
Image synthesis with neural networks for traffic sign classification
Компьютерная оптика
traffic sign classification
synthetic training sample
generative neural network
author_facet Vladislav Shakhuro
Anton Konushin
author_sort Vladislav Shakhuro
title Image synthesis with neural networks for traffic sign classification
title_short Image synthesis with neural networks for traffic sign classification
title_full Image synthesis with neural networks for traffic sign classification
title_fullStr Image synthesis with neural networks for traffic sign classification
title_full_unstemmed Image synthesis with neural networks for traffic sign classification
title_sort image synthesis with neural networks for traffic sign classification
publisher Samara National Research University
series Компьютерная оптика
issn 0134-2452
2412-6179
publishDate 2018-02-01
description In this work, we research the applicability of generative adversarial neural networks for generating training samples for a traffic sign classification task. We consider generative neural networks trained using the Wasserstein metric. As a baseline method for comparison, we take image generation based on traffic sign icons. Experimental evaluation of the classifiers based on convolutional neural networks is conducted on real data, two types of synthetic data, and a combination of real and synthetic data. The experiments show that modern generative neural networks are capable of generating realistic training samples for traffic sign classification that outperform methods for generating images with icons, but are still slightly worse than real images for classifier training.
topic traffic sign classification
synthetic training sample
generative neural network
url http://computeroptics.smr.ru/KO/PDF/KO42-1/420113.pdf
work_keys_str_mv AT vladislavshakhuro imagesynthesiswithneuralnetworksfortrafficsignclassification
AT antonkonushin imagesynthesiswithneuralnetworksfortrafficsignclassification
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