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Dive into the research topics where Volodymyr Turchenko is active.

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Featured researches published by Volodymyr Turchenko.


intelligent data acquisition and advanced computing systems: technology and applications | 2003

Smart license plate recognition system based on image processing using neural network

Vasyl Koval; Volodymyr Turchenko; Volodymyr Kochan; Anatoly Sachenko; George Markowsky

We describe the smart vehicle screening system, which can be installed into a tollbooth for automated recognition of vehicle license plate information using a photograph of a vehicle. An automated system could then be implemented to control the payment of fees, parking areas, highways, bridges or tunnels, etc. There are considered an approach to identify vehicle through recognizing of it license plate using image fusion, neural networks and threshold techniques as well as some experimental results to recognize the license plate successfully


international symposium on neural networks | 2000

Sensor errors prediction using neural networks

Anatoly Sachenko; Volodymyr Kochan; Volodymyr Turchenko; Vladimir Golovko; J.Savitsky; A.Dunets; Th. Laopoulos

The features of neural networks used for increasing the accuracy of physical quantity measurement are considered by prediction of sensor drift. The technique of data volume increasing for predicting neural network training is offered at the expense of various data types replacement for neural network training and at the expense of the separate approximating neural network use.


instrumentation and measurement technology conference | 1998

Intelligent distributed sensor network

Anatoly Sachenko; Volodymyr Kochan; Volodymyr Turchenko

The intelligent functions of sensor measurement instrumentation are formed on basis of the original calibration and prediction methods. Measuring module structure as basic distributed sensor network (DSN) component is considered and an intelligent DSN (IDSN) structure is proposed. Procedures and functions of various levels of information processing in IDSN are formed. Developed IDSN is tested on design and exploitation stages.


instrumentation and measurement technology conference | 1999

Intelligent nodes for distributed sensor network

Anatoly Sachenko; Volodymyr Kochan; Volodymyr Turchenko; V. Tymchyshyn; Nadiya Vasylkiv

Neural networks models and their training algorithms on a central computer with reference to a previously developed distributed sensor network are considered. The requirements for its intelligent node are formulated. Also the nodes structure is offered which realises such intelligent functions, as sensor and other measuring channel components drift prediction using remote reprogramming.


international symposium on neural networks | 2004

Approach to recognition of license plate numbers using neural networks

I. Paliy; Volodymyr Turchenko; V. Koval; Anatoly Sachenko; G. Markowsky

We considered an approach to identify vehicle through recognizing of it license plate using image fusion, neural networks and threshold techniques as well as some experimental results to recognize the license plate successfully.


instrumentation and measurement technology conference | 2001

Error compensation in an intelligent sensing instrumentation system

Anatoly Sachenko; Volodymyr Kochan; R. Kochan; Volodymyr Turchenko; K. Tsahouridis; Th. Laopoulos

Methods of improving the measurement accuracy by estimation and correction of the maximum error components, are analyzed. The functional structure of the measurement channel in an intelligent sensing instrumentation system is described along with the procedures of component error correction. An experimental setup, implementing such methods in a multi-processing neural network configuration, is presented.


international conference on move to meaningful internet systems | 2005

Computational grid vs. parallel computer for coarse-grain parallelization of neural networks training

Volodymyr Turchenko

Development of a coarse-grain parallel algorithm of artificial neural networks training with dynamic mapping onto processors of parallel computer system is considered in this paper. Parallelization of this algorithm done on the computational grid operated under Globus middleware is compared with the results obtained on the parallel computer Origin 300. Experiments show better efficiency for computational grid instead of parallel computer with an efficiency/price criterion.


international conference on artificial neural networks | 2001

Estimation of Computational Complexity of Sensor Accuracy Improvement Algorithm Based on Neural Networks

Volodymyr Turchenko; Volodymyr Kochan; Anatoly Sachenko

The estimation method of computational complexity of sensor data acquisition and processing algorithm based on neural networks is considered in this paper. An application of this method allows to propose a three-level structure of distributed sensor network with improved accuracy.


intelligent data acquisition and advanced computing systems technology and applications | 2017

Creation of a deep convolutional auto-encoder in Caffe

Volodymyr Turchenko; Artur Luczak

The development of a deep (stacked) convolutional auto-encoder in the Caffe deep learning framework is presented in this paper. We describe simple principles which we used to create this model in Caffe. The proposed model of convolutional auto-encoder does not have pooling/unpooling layers yet. The results of our experimental research show comparable accuracy of dimensionality reduction in comparison with a classic autoencoder on the example of MNIST dataset.


intelligent data acquisition and advanced computing systems technology and applications | 2014

Mobile Ad Hoc wireless network for pre- and post-emergency situations in nuclear power plant

Robert E. Hiromoto; Anatoliy Sachenko; Volodymyr Kochan; Vasyl Koval; Volodymyr Turchenko; Oleksiy Roshchupkin; Vasyl Yatskiv; Kostiantyn Kovalok

This paper describes the mobile Ad-Hoc (wireless) network (MANET) for emergency scenarios in nuclear power plant (NPP). Authors proposed the system with such properties as flexibility and a self-forming and self-healing network topology that dynamically adjusts to the moving configuration per each intermediate routing node. It is also proposed to integrate MANET and Bluetooth-like technologies to create an unmanned formation of autonomous quadcopters that provides both indoor and outdoor communications coverage inside and outside of the NPP.

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Anatoly Sachenko

Ternopil National Economic University

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Volodymyr Kochan

Ternopil National Economic University

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Vasyl Koval

Ternopil National Economic University

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Th. Laopoulos

Aristotle University of Thessaloniki

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Vladimir Golovko

Brest State Technical University

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Vladimir Golovko

Brest State Technical University

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Andrii Borovyi

Ternopil National Economic University

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Iryna Turchenko

Ternopil National Economic University

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