• A
  • A
  • A
  • АБВ
  • АБВ
  • АБВ
  • A
  • A
  • A
  • A
  • A
Обычная версия сайта
  • RU
  • EN
  • HSE University
  • Publications
  • Book chapter
  • Sequential Analysis with Specified Confidence Level and Adaptive Convolutional Neural Networks in Image Recognition
  • RU
  • EN
Расширенный поиск
Высшая школа экономики
Национальный исследовательский университет
Priority areas
  • business informatics
  • economics
  • engineering science
  • humanitarian
  • IT and mathematics
  • law
  • management
  • mathematics
  • sociology
  • state and public administration
by year
  • 2027
  • 2026
  • 2025
  • 2024
  • 2023
  • 2022
  • 2021
  • 2020
  • 2019
  • 2018
  • 2017
  • 2016
  • 2015
  • 2014
  • 2013
  • 2012
  • 2011
  • 2010
  • 2009
  • 2008
  • 2007
  • 2006
  • 2005
  • 2004
  • 2003
  • 2002
  • 2001
  • 2000
  • 1999
  • 1998
  • 1997
  • 1996
  • 1995
  • 1994
  • 1993
  • 1992
  • 1991
  • 1990
  • 1989
  • 1988
  • 1987
  • 1986
  • 1985
  • 1984
  • 1983
  • 1982
  • 1981
  • 1980
  • 1979
  • 1978
  • 1977
  • 1976
  • 1975
  • 1974
  • 1973
  • 1972
  • 1971
  • 1970
  • 1969
  • 1968
  • 1967
  • 1966
  • 1965
  • 1964
  • 1963
  • 1958
  • More
Subject
News
May 22, 2026
HSE Graduates AI Project Wins at TECH & AI Awards
Daria Davydova, graduate of the HSE Graduate School of Business and Head of the AI Implementation Unit at the Artificial Intelligence Department of Alfa-Bank, received a prize at the TECH & AI Awards. She was awarded for the best AI solution for optimising business processes. The winners were determined as part of the VII Russian Summit and Awards on Digital Transformation (CDO/CDTO Summit & Awards).
May 20, 2026
HSE University Opens First Representative Office of Satellite Laboratory in Brazil
HSE University-St Petersburg opened a representative office of the Satellite Laboratory on Social Entrepreneurship at the University of Campinas in Brazil. The platform is going to unite research and educational projects in the spheres of sustainable development, communications and social innovations.
May 18, 2026
The 'Second Shift' Is Not Why Women Avoid News
Women are more likely than men to avoid political and economic news, but the reasons for this behaviour are linked less to structural inequality or family-related stress than to personal attitudes and the emotional perception of news content. This conclusion was reached by HSE researchers after analysing data from a large-scale survey of more than 10,000 residents across 61 regions of Russia. The study findings have been published in Woman in Russian Society.

 

Have you spotted a typo?
Highlight it, click Ctrl+Enter and send us a message. Thank you for your help!

Publications
  • Books
  • Articles
  • Chapters of books
  • Working papers
  • Report a publication
  • Research at HSE

?

Sequential Analysis with Specified Confidence Level and Adaptive Convolutional Neural Networks in Image Recognition

P. 1–8.
Savchenko A.

In this paper the problem of high computational complexity of deep convolutional nets in image recognition is considered. An existing framework of adaptive neural networks is extended by appending the separate classifier to intermediate layers. The hierarchical representations of the input image are sequentially analyzed. If the first classifier returns rather high confidence score, the inference process will be terminated. Otherwise, the inference to the next intermediate layer with attached classifier is continued until the reliable solution is obtained or the penultimate layer is reached. The thresholds for classifier scores at each layer are automatically chosen based on the Benjamini-Hochberg multiple comparisons for a specified confidence level. Experimental study for both pre-trained and fine-tuned deep convolutional neural networks demonstrates that the proposed approach reduces the running time by up to 1.7 times without significant accuracy degradation. Moreover, the larger is the training sample, the more noticeable is the gain in performance.

Language: English
Full text
DOI
Text on another site
Keywords: распознавание изображенийImage recognitionsequential analysisстатистический последовательный анализDeep Convolutional Neural Networksсверточная нейронная сетьadaptive neural networksадаптивные нейронные сети
Publication based on the results of:
Research of robustness of network analysis algorithms (2020)

In book

Proceedings of International Joint Conference on Neural Networks 2020 (IJCNN 2020)
Piscataway: IEEE, 2020.
Similar publications
Распознавание кашля с помощью анализа спектрограмм
Dvoynikova A., В кн.: Альманах научных работ молодых ученых Университета ИТМОТ. 2.: Университет ИТМО, 2022. С. 230–234.
В работе рассматривается метод автоматического распознавания кашля с использованием анализа спектрограмм и сверточной нейронной сети. Описывается методика сбора базы данных, содержащей экстралингвистические события, такие как кашель и другие звуковые события, и ее описание. Проводятся экспериментальные исследования с различными методами аугментации изображений спектрограмм, такие как угол сдвига, изменение масштаба, сдвиг по ширине, изменение яркости и горизонтальный ...
Added: April 25, 2026
Распознавание вовлеченности собеседников с помощью анализа мел-спектрограмм
Dvoynikova A., В кн.: Сборник трудов XI Конгресса молодых учёныхТ. 2.: Университет ИТМО, 2022.
В работе разрабатывается система для автоматического распознавания вовлеченности собеседников по речи дикторов. В качестве аудиальных признаков используются мел- спектрограммы, которые потом подаются на вход сверточной нейронной сети. Для экспериментальных исследований извлекались как узкополосные мел-спектрограммы, так и широкополосные, отличающие шириной полос (разрешающей способностью). Обучение и тестирование системы проходило на данных корпуса RECOLA, который включал в себя ...
Added: April 25, 2026
Обучение распознаванию эмоций посредством мобильного приложения «ТРОПЭМО»
Shadrina E. V., Мохова В. О., Загоскин В. А. et al., Нижегородский психологический альманах 2024 № 2
The article considers the problem of learning of recognizing emotions from pictures. A review and analysis of domestic and foreign works of scientists dealing with the problem of emotional intelligence was carried out. Its formation, influence on human activity and existing variants of its structure were considered, and common features in the understanding of emotional ...
Added: April 9, 2026
Использование генеративных моделей в высшем гуманитарном образовании: опыт Института медиа НИУ ВШЭ
Sharikov A., Dzhura A., Magera T. et al., Коммуникации. Медиа. Дизайн 2025 Т. 10 № 1 С. 5–37
The article delves into the theoretical foundations and practical applications of generative models in higher humanitarian education in Russia. It explores some ethical concerns surrounding the use of generative artificial intelligence. The paper describes how HSE University has been setting up a regulatory framework for its use since 2023. This includes legalizing the use of ...
Added: May 7, 2025
Astrocytes mediate analogous memory in a multi-layer neuron–astrocyte network
Tsybina Y., Kastalskiy I., Krivonosov M. et al., Neural Computing and Applications 2023 Vol. 34 No. 11 P. 9147 –9160
Modeling the neuronal processes underlying short-term working memory remains the focus of many theoretical studies in neuroscience. In this paper, we propose a mathematical model of a spiking neural network (SNN) which simulates the way a fragment of information is maintained as a robust activity pattern for several seconds and the way it completely disappears ...
Added: April 9, 2025
Three-way classification for sequences of observations
A. V. Savchenko, L. V. Savchenko, Information Sciences 2023 Vol. 648 Article 119540
This article introduces the novel technique to reduce the computation time for classifying a sequence of observations (frames), such as a video stream, where each observation is described by high-dimensional embeddings extracted by a deep neural network. By using the methodology of granular computing, an observed sequence is represented at various scales using different frame ...
Added: August 27, 2023
Effective face recognition based on anomaly image detection and sequential analysis of neural descriptors
Sokolova A., Savchenko A., , in: 2023 IX International Conference on Information Technology and Nanotechnology (ITNT).: IEEE, 2023. P. 1–5.
In this paper, we explore the possibility to improve efficiency of face recognition using information about anomaly input images. Indeed, modern publicly-available datasets typically contain images of mostly middle-aged and Caucasian people, which cause most algorithms to fail on photos of older people or children, rarer ethnicities, poor-quality images, etc. Detection of such anomaly data ...
Added: June 13, 2023
Face Recognition from Video using Deep Learning
Manna S., Ghildiyal S., Bhimani K. R., IEEE Access 2020 Article 1
Face recognition (FR) and verification is the immeasurable technology to encounter any criminal activities nowadays. With the remarkable applications extending from criminal ID, security, and observation to amusement sites. This system (recognition of faces) is exceptionally helpful in banks, air terminals, and different associations for screening customers. In deep learning, convolutional neural networks (CNN) have ...
Added: October 14, 2022
Сравнение различных методов реализации нейронных сетей для распознавания изображений
Головин Р. Д., Zunin V., В кн.: Межвузовская научно-техническая конференция студентов, аспирантов и молодых специалистов имени Е.В. Арменского. Материалы конференции.: М.: МИЭМ НИУ ВШЭ, 2021. С. 120–122.
В работе проводится обзор различных способов реализации нейронной сети для распознавания изображения на примере набора данных MNIST. Дается анализ используемых библиотек и методов их применения в области распознавания объектов. ...
Added: September 25, 2022
Научные труды Санкт-Петербургской академии художеств. Вып. 59. Вопросы теории культуры. 2021
Alshanskaia E., СПб.: [б.и.], 2021.
Artificial Intelligence and Art The article deals with the influence of the development of artificial intelligence technology on contemporary art, describes technologies, and gives examples of their use in various fields of art. The possibilities of attribution, restoration, and creation of works of art using artificial intelligence are discussed. Keywords: artificial intelligence; attribution; restoration; neural ...
Added: September 20, 2022
Sequential analysis in Fourier probabilistic neural networks
Savchenko A., Belova N. S., Expert Systems with Applications 2022 Vol. 207 Article 117885
In this paper, the computational complexity of the probabilistic neural network for the classification of high-dimensional data is improved. At first, the class probability densities are estimated by using only a few principal components of an observed point. The Gaussian–Parzen kernel is replaced by the orthogonal series estimates of class-conditional densities for each principal component using the Fourier series to speed ...
Added: June 29, 2022
Self-supervised recurrent depth estimation with attention mechanisms
Makarov I., Bakhanova M., Nikolenko S. et al., PeerJ Computer Science 2022 Vol. 8 Article e865
Depth estimation has been an essential task for many computer vision applications, especially in autonomous driving, where safety is paramount. Depth can be estimated not only with traditional supervised learning but also via a self-supervised approach that relies on camera motion and does not require ground truth depth maps. Recently, major improvements have been introduced ...
Added: February 1, 2022
On the generalization ability of data-driven models in the problem of total cloud cover retrieval
Krinitskiy M., Alexandrova M., Verezemskaya P. et al., Remote Sensing 2021 Vol. 13 No. 2 Article 326
Total Cloud Cover (TCC) retrieval from ground-based optical imagery is a problem that has been tackled by several generations of researchers. The number of human-designed algorithms for the estimation of TCC grows every year. However, there has been no considerable progress in terms of quality, mostly due to the lack of systematic approach to the ...
Added: September 24, 2021
Instagram Hashtag Prediction Using Deep Neural Networks
Anna Beketova, Makarov I., , in: Advances in Computational Intelligence: 16th International Work-Conference on Artificial Neural Networks, IWANN 2021, Virtual Event, June 16–18, 2021, Proceedings, Part II.: Cham: Springer, 2021. Ch. 3 P. 28–42.
*Реализация соц. сети Instagram запрещена на территории России по основаниям осуществления экстремистской деятельности. Instagram is one of the most popular photos sharing services. For more convenient content search people use hashtags (#nature, #love, etc.) in posts with photos. The author’s aim is to make hashtag prediction possible and convenient for users. The paper provides a reader with ...
Added: September 1, 2021
Fast Depth Reconstruction Using Deep Convolutional Neural Networks
Dmitrii Maslov, Makarov I., , in: Advances in Computational Intelligence: 16th International Work-Conference on Artificial Neural Networks, IWANN 2021, Virtual Event, June 16–18, 2021, Proceedings, Part I* 1. Vol. 12861.: Springer, 2021. Ch. 38 P. 456–467.
In this paper, we study depth reconstruction via RGB-based, Sparse-Depth, and RGBd approaches. We showed that combination of RGB and Sparse Depth approach in RGBd scenario provides the best results. We also proved that the models performance can be further tuned via proper selection of architecture blocks and number of depth points guiding RGB-to-depth reconstruction. ...
Added: September 1, 2021
Deep Convolutional Neural Networks Help Scoring Tandem Mass Spectrometry Data in Database-Searching Approaches
Kudriavtseva P., Kashkinov M., Kertész-Farkas A., Journal of Proteome Research 2021 Vol. 20 No. 10 P. 4708–4717
Spectrum annotation is a challenging task due to the presence of unexpected peptide fragmentation ions as well as the inaccuracy of the detectors of the spectrometers. We present a deep convolutional neural network, called Slider, which learns an optimal feature extraction in its kernels for scoring mass spectrometry (MS)/MS spectra to increase the number of ...
Added: August 30, 2021
  • About
  • About
  • Key Figures & Facts
  • Sustainability at HSE University
  • Faculties & Departments
  • International Partnerships
  • Faculty & Staff
  • HSE Buildings
  • HSE University for Persons with Disabilities
  • Public Enquiries
  • Studies
  • Admissions
  • Programme Catalogue
  • Undergraduate
  • Graduate
  • Exchange Programmes
  • Summer University
  • Summer Schools
  • Semester in Moscow
  • Business Internship
  • Research
  • International Laboratories
  • Research Centres
  • Research Projects
  • Monitoring Studies
  • Conferences & Seminars
  • Academic Jobs
  • Yasin (April) International Academic Conference on Economic and Social Development
  • Media & Resources
  • Publications by staff
  • HSE Journals
  • Publishing House
  • iq.hse.ru: commentary by HSE experts
  • Library
  • Economic & Social Data Archive
  • Video
  • HSE Repository of Socio-Economic Information
  • HSE1993–2026
  • Contacts
  • Copyright
  • Privacy Policy
  • Site Map
Edit