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Dive into the research topics where Viacheslav Vasylovych Moskalenko is active.

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Featured researches published by Viacheslav Vasylovych Moskalenko.


Technology Transfer: fundamental principles and innovative technical solutions | 2017

DEVELOPMENT OF THE METHOD OF UNSUPERVISED TRAINING OF CONVOLUTIONAL NEURAL NETWORKS BASED ON NEURAL GAS MODIFICATION

Viacheslav Vasylovych Moskalenko

Technologies for computer analysis of visual information based on convolutional neural networks have been widely used, but there is still a shortage of working algorithms for continuous unsupervised training and re-training of neural networks in real time, limiting the effectiveness of their functioning under conditions of nonstationarity and a priori uncertainty. In addition, the back propagation method for learning multi-layer neural networks requires significant computational resources and the amount of marked learning data, which makes it difficult to implement them in autonomous systems with limited resources. One approach to reducing the computational complexity of deep machine learning and overfitting is use of the neural gas principles to implement learning in the process of direct information propagation and sparse coding to increase the compactness and informativeness of feature representation. The paper considers the use of sparse coding neural gas for learning ten layers of the VGG-16 neural network on selective data from the ImageNet database. At the same time, it is suggested that the evaluation of the effectiveness of the feature extractor learning be carried out according to the results of so-called information-extreme machine learning with the teacher of the output classifier. Information-extreme learning is based on the principles of population optimization methods for binary coding of observations and the construction of radial-basic decision rules optimal in the information criterion in the binary Hamming space. According to the results of physical modeling, it is shown that learning without a teacher ensures the accuracy of decision rules to 96.4 %, which is inferior to the accuracy of learning with the teacher, which is equal to 98.7 %. However, the absence of an error in the training algorithm for the backward propagation of the error causes the prospect of further research towards the development of meta-optimization algorithms to refine the feature extractors filters and parameters of the unsupervised training algorithm


2018 IEEE Second International Conference on Data Stream Mining & Processing (DSMP) | 2018

Model and Training Methods of Autonomous Navigation System for Compact Drones

Viacheslav Vasylovych Moskalenko; Alona Moskalenko; Artem Korobov; Olha Boiko; Serhii Serhiiovych Martynenko; Oleksandr Borovenskyi


Archive | 2017

Feature learning for information-extreme classifier

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; А. Moskalenko; A. Korobov


Archive | 2016

Information-Extreme Algorithm of Learning for System Identification of Objects on the Terrain

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; A.G Korobov; R.S. Prihodchenko


Archive | 2016

Результати моделювання течії рідини у проточній частині відцентрового насосу

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; Микола Іванович Сотник; Николай Иванович Сотник; Mykola Ivanovych Sotnyk


Archive | 2016

Інформаційно-екстремальне машинне навчання системи ідентифікації об’єктів на місцевості

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; А.Г. Коробов


Archive | 2015

Інтелектуальна система ідентифікації мережевого трафіка

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; А.Г. Коробов


Archive | 2015

Інтелектуальна система прогнозування зниження продуктивності віртуальних машин у середовищі хмарних обчислень

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; С.В. Пімоненко


Archive | 2015

Інтелектуальна діагностична система для радіонуклідного статичного обстеження

В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; А.С. Рижова


Archive | 2015

Інтелектуальна система керування навантаженням і ресурсами розподіленого обчислювального середовища з підвищеною інформаційною безпекою

Анатолій Степанович Довбиш; Анатолий Степанович Довбыш; Anatolii Stepanovych Dovbysh; Ігор Володимирович Шелехов; Игорь Владимирович Шелехов; Ihor Volodymyrovych Shelekhov; В`ячеслав Васильович Москаленко; Вячеслав Васильевич Москаленко; Viacheslav Vasylovych Moskalenko; Ганна В`ячеславівна Токаренко; Анна Вячеславовна Токаренко; Hanna Viacheslavivna Tokarenko; Надія Володимирівна Тиркусова; Надежда Владимировна Тыркусова; Nadiia Volodymyrivna Tyrkusova; Михайло Семенович Бабій; Михаил Семенович Бабий; Mykhailo Semenovych Babii; А.С. Москаленко; С.О. Болгов; М.А. Литюга; В.Ю. П'ятаченко

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