Experimental Study of Convolutional Neural Network Architecture for Pattern Recognition in Images; Lecture Notes in Networks and Systems; Vol. 1118 : Software Engineering Methods Design and Application
| Parent link: | Lecture Notes in Networks and Systems.— .— Cham: Springer Vol. 1118 : Software Engineering Methods Design and Application.— 2024.— P. 656-667 |
|---|---|
| Glavni avtor: | Botygin I. A. Igor Aleksandrovich |
| Drugi avtorji: | Sherstnev V. S. Vladislav Stanislavovich, Sherstneva A. I. Anna Igorevna |
| Izvleček: | Title screen The choice of optimal tools and instruments of synthesis and modelling of neural network for pattern recognition in images is carried out. A comparative analysis of the results of training a neural network using the open library of machine learning TensorFlow, libraries Keras and NumPy, data sets from the open database MNIST in the recognition of handwritten input has been carried out. The software based on the neural network of the convolutional type by topology is developed, which solves the problems of handwritten numerical symbols recognition. The main design, technological and technical-operational characteristics: accuracy 99.2%, mini-packages - 200 pieces, the ratio of training and training sets - 0.2, the number of epochs - 10. The created software can be used in areas of visual analysis of data of paper documentation of enterprises, where it is necessary to transfer data from paper to electronic form. And also, to serve as a starting point for the development of the core of more powerful software for handwriting recognition, namely, a bunch of digits, symbols (car numbers, postal codes, etc.) Текстовый файл AM_Agreement |
| Jezik: | angleščina |
| Izdano: |
2024
|
| Teme: | |
| Online dostop: | https://doi.org/10.1007/978-3-031-70285-3_50 |
| Format: | Elektronski Book Chapter |
| KOHA link: | https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=680012 |
Podobne knjige/članki
Text detection algorithm on real scenes images and videos on the base of discrete cosine transform and convolutional neural network; Control and Communications (SIBCON-2017)
Izdano: (2017)
Izdano: (2017)
Precise cancer detection via the combination of functionalized SERS surfaces and convolutional neural network with independent inputs; Sensors and Actuators B: Chemical; Vol. 308
Izdano: (2020)
Izdano: (2020)
Convolutional neural networks of the YOLO class in computer vision systems for mobile robotic complexes; Control and Communications (SIBCON-2019)
od: Zoev I. V. Ivan Vladimirovich
Izdano: (2019)
od: Zoev I. V. Ivan Vladimirovich
Izdano: (2019)
FPGA-based device for handwritten digit recognition in images; Компьютерная оптика; Т. 41, № 6
Izdano: (2017)
Izdano: (2017)
Analytic Learning Methods for Pattern Recognition
od: Toh, Kar-Ann, et al.
Izdano: (2025)
od: Toh, Kar-Ann, et al.
Izdano: (2025)
Technical Analysis for Algorithmic Pattern Recognition
od: Tsinaslanidis, Prodromos E., et al.
Izdano: (2016)
od: Tsinaslanidis, Prodromos E., et al.
Izdano: (2016)
Classification of audio samples by convolutional networks in audiobeehive monitoring; Вестник Томского государственного университета. Управление, вычислительная техника и информатика; № 45
od: Кулюкин В. А. Владимир Алексеевич
Izdano: (2018)
od: Кулюкин В. А. Владимир Алексеевич
Izdano: (2018)
Time-Space, Spiking Neural Networks and Brain-Inspired Artificial Intelligence
od: Kasabov, Nikola K.
Izdano: (2019)
od: Kasabov, Nikola K.
Izdano: (2019)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2019 /
Izdano: (2020)
Izdano: (2020)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2020 /
Izdano: (2020)
Izdano: (2020)
Label-free surface-enhanced Raman spectroscopy with artificial neural network technique for recognition photoinduced DNA damage; Biosensors and Bioelectronics; Vol. 145
Izdano: (2019)
Izdano: (2019)
Progress in Image Processing, Pattern Recognition and Communication Systems Proceedings of the Conference (CORES, IP&C, ACS) - June 28-30 2021 /
Izdano: (2022)
Izdano: (2022)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2022 /
Izdano: (2022)
Izdano: (2022)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2021 /
Izdano: (2022)
Izdano: (2022)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2023 /
Izdano: (2023)
Izdano: (2023)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2024, Volume 1 /
Izdano: (2025)
Izdano: (2025)
Computational Intelligence in Pattern Recognition Proceedings of CIPR 2024, Volume 2 /
Izdano: (2025)
Izdano: (2025)
Deep Learning Classifiers with Memristive Networks Theory and Applications /
Izdano: (2020)
Izdano: (2020)
Progress in Computer Recognition Systems
Izdano: (2020)
Izdano: (2020)
Применение методов машинного обучения для решения задачи классификации эмоции на изображении по ключевым точкам; Информационные технологии в науке, управлении, социальной сфере и медицине
od: Коровкин В. А. Виталий Александрович
Izdano: (2019)
od: Коровкин В. А. Виталий Александрович
Izdano: (2019)
Convolutional neural networks for brain lesion segmentation in MRI images; Современные проблемы машиностроения
od: Wang Yuqian
Izdano: (2024)
od: Wang Yuqian
Izdano: (2024)
Robust Machine Learning Predictive Models for Real-Time Determination of Confined Compressive Strength of Rock Using Mudlogging Data; Rock Mechanics and Rock Engineering; Vol. 57
Izdano: (2024)
Izdano: (2024)
Progress in Pattern Classification and Machine Learning Proceedings of the 14th International Conference on Computer Recognition Systems 2025 /
Izdano: (2025)
Izdano: (2025)
Neural Representations of Natural Language
od: White, Lyndon, et al.
Izdano: (2019)
od: White, Lyndon, et al.
Izdano: (2019)
Physical Layer Security in N-Pair NOMA-PLNC Wireless Networks; IEEE Access; Vol. 10
Izdano: (2022)
Izdano: (2022)
Complex Pattern Mining New Challenges, Methods and Applications /
Izdano: (2020)
Izdano: (2020)
Prediction performance advantages of deep machine learning algorithms for two-phase flow rates through wellhead chokes; Journal of Petroleum Exploration and Production; Vol. ХХ, iss. XX
Izdano: (2021)
Izdano: (2021)
Solving Some Problems of Predictive Analytics for Time Series Data; Lecture Notes in Networks and Systems; Vol. 501 : Software Engineering Perspectives in Systems
od: Botygin I. A. Igor Aleksandrovich
Izdano: (2022)
od: Botygin I. A. Igor Aleksandrovich
Izdano: (2022)
Цифровые видеоинформационные системы. Теория и практика
od: Дворкович В. П.
Izdano: (Москва, Техносфера, 2012)
od: Дворкович В. П.
Izdano: (Москва, Техносфера, 2012)
Progress on Pattern Classification, Image Processing and Communications Proceedings of the CORES and IP&C Conferences 2023 /
Izdano: (2023)
Izdano: (2023)
Artificial Neural Networks
Izdano: (2021)
Izdano: (2021)
Artificial Neural Networks
Izdano: (2015)
Izdano: (2015)
Application of Convolutional Neural Networks for Automatic Number Plate Recognition on Complex Background Images; Applied Mechanics and Materials; Vol. 756 : Mechanical Engineering, Automation and Control Systems (MEACS2014)
od: Druki A. A. Aleksey Alekseevich
Izdano: (2015)
od: Druki A. A. Aleksey Alekseevich
Izdano: (2015)
Biomimetic materials based on hydroxyapatite patterns for studying extracellular cell communication; Materials & Design; Vol. 238
Izdano: (2024)
Izdano: (2024)
Исследование аппаратно-реализованных сверточных нейронных сетей класса U-Net; Известия Томского политехнического университета [Известия ТПУ]. Промышленная кибернетика; Т. 1, № 1
Izdano: (2023)
Izdano: (2023)
Artificial Neural Networks Methods and Applications /
Izdano: (2009)
Izdano: (2009)
A Systematic Literature Review of Security in 5G based Social Networks; International Conference on Cyber Resilience (ICCR)
Izdano: (2022)
Izdano: (2022)
Pattern Recognition
od: Theodoridis S. Sergios
Izdano: (Amsterdam, Elsevier, 2009)
od: Theodoridis S. Sergios
Izdano: (Amsterdam, Elsevier, 2009)
Sensing and Secure NOMA-Assisted mMTC Wireless Networks; Electronics; Vol. 12, iss. 10
Izdano: (2023)
Izdano: (2023)
Apraxia: The Neural Network Model
od: Wasserman, Theodore, et al.
Izdano: (2023)
od: Wasserman, Theodore, et al.
Izdano: (2023)
Podobne knjige/članki
-
Text detection algorithm on real scenes images and videos on the base of discrete cosine transform and convolutional neural network; Control and Communications (SIBCON-2017)
Izdano: (2017) -
Precise cancer detection via the combination of functionalized SERS surfaces and convolutional neural network with independent inputs; Sensors and Actuators B: Chemical; Vol. 308
Izdano: (2020) -
Convolutional neural networks of the YOLO class in computer vision systems for mobile robotic complexes; Control and Communications (SIBCON-2019)
od: Zoev I. V. Ivan Vladimirovich
Izdano: (2019) -
FPGA-based device for handwritten digit recognition in images; Компьютерная оптика; Т. 41, № 6
Izdano: (2017) -
Analytic Learning Methods for Pattern Recognition
od: Toh, Kar-Ann, et al.
Izdano: (2025)