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Zapiski Nauchnykh Seminarov POMI, 2021, Volume 499, Pages 267–283
(Mi znsl7053)
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II
Fast image classification algorithms based on sequential analysis
A. V. Savchenko National Research University "Higher School of Economics", Nizhny Novgorod Branch
Abstract:
In this paper fast image recognition techniques based on statistical sequential analysis are discussed. We examine the possibility to sequentially process the principal components and organize a convolutional neural network with early exits. Particular attention is paid to sequentially learn multi-task lightweight neural network model to predict several facial attributes (age, gender and ethnicity) based on preliminary training on the face classification task. It is highlighted that the whole above-mentioned model should be fine-tuned in order to deal with emotion recognition problem. Experimental study on several datasets demonstrate that the proposed approach is rather accurate and has very low run-time and space complexity when compared to known state-of-the-art methods.
Key words and phrases:
image recognition, sequential analysis, facial attributes classification, emotion classification, ethnicity recognition, convolutional neural network.
Received: 20.08.2020
Citation:
A. V. Savchenko, “Fast image classification algorithms based on sequential analysis”, Investigations on applied mathematics and informatics. Part I, Zap. Nauchn. Sem. POMI, 499, POMI, St. Petersburg, 2021, 267–283
Linking options:
https://www.mathnet.ru/eng/znsl7053 https://www.mathnet.ru/eng/znsl/v499/p267
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Abstract page: | 107 | Full-text PDF : | 55 | References: | 16 |
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