Stevan Jokic

Stevan Jokić

Docent • Repozitorijum radova

Biografske reference

Publikacije i radovi autora prikazani su u kompaktnim karticama.

2025. godina

Mel-Frequency Cepstral Coefficients and Spectrum Based Additional Features in Automatic Speaker Recognition

M23
Naziv publikacije / časopisa

Facta Universitatis-Series Electronics And Energetics

Naslov rada

Mel-Frequency Cepstral Coefficients and Spectrum Based Additional Features in Automatic Speaker Recognition

Autori

Ivan Jokić, Stevan Jokić, Vlado Delić, Zoran Perić

Godina izdanja

2025

Vol/No.

38

ISSN

0353-3670 (Print); 2217-5997

ISBN

DOI

10.2298/FUEE2504663J

Stranice

663-680

Apstrakt

The efficiency of the proposed automatic speaker recognizer is evaluated using two speech databases. The feature vector consists of 21 mel-frequency cepstral coefficients (MFCCs), along with up to three additional features derived from the amplitude spectrum. The additional features are calculated based on the logarithm of the energy around the appropriate local maximum in the spectrum, the frequency of that maximum, and the logarithm of the energy of the maximum component in the spectrum across all frames of the observed signal. The speaker identification procedure for a closed set of speakers is tested on the Solo section of the CHAINS database and a speech database with expressed emotions, developed within the S-ADAPT project. The achieved maximum mean recognition accuracies are 97.11% on the CHAINS database and up to 98.72% on the S-ADAPT database.

Ključne reči

accuracy, audio recording, human voice, speaker recognition, spectral analysis

Kategorija objave

M23

Ethical and Innovative Smartphone-Based Blood Vessel Assessment: Privacy and Data Protection in the "ECG for Everybody" App for Smart Cities

M33
Naziv publikacije / časopisa

AlfaTech

Naslov rada

Ethical and Innovative Smartphone-Based Blood Vessel Assessment: Privacy and Data Protection in the "ECG for Everybody" App for Smart Cities

Autori

Stevan Jokić, Ivan Jokić, Branislav Gerazov, Nenad Gligorić, Ana Kovačević

Godina izdanja

2025

Vol/No.

ISSN

ISBN

978-86-6461-093-3

DOI

10.46793/ALFATECHproc25.176J

Stranice

176-180

Apstrakt

The growing emphasis on personalized healthcare within the paradigm of smart cities highlights the need for innovative, accessible solutions that enable early detection and continuous monitoring of cardiovascular health. This study proposes a methodology for assessing blood vessel elasticity (vascular "biological age") through analysis of PPG signals acquired via the mobile application "ECG for Everybody". The approach introduces a dominant PPG beat obtained by averaging signals across the recording and uses deep neural networks and signal processing techniques to estimate vascular health parameters. Initial results validate the efficacy of the approach and support accessible, real-time healthcare solutions for smart city environments.

Ključne reči

Photoplethysmography (PPG) analysis, vascular elasticity, biological age, neural networks, healthcare technology, smart cities

Kategorija objave

M33

Use of Covariance Matrix in Automatic Speaker Recognition

Rad
Naziv publikacije / časopisa

AlfaTech

Naslov rada

Use of Covariance Matrix in Automatic Speaker Recognition

Autori

Ivan Jokić, Stevan Jokic

Godina izdanja

2025

Vol/No.

ISSN

ISBN

978-86-6461-093-3

DOI

10.46793/ALFATECHproc25.204J

Stranice

204-207

Apstrakt

One procedure for automatic speaker recognition based on 21 mel-frequency cepstral coefficients as speaker features and a covariance matrix as the speaker model is tested in this paper. Tests are conducted on the Solo part of the CHAINS speech database. Recognition results are compared for two cases: with and without sigmoid function applied to covariance matrix elements. Across the test stages, applying the sigmoid function significantly improves recognition accuracy, increasing the mean recognition accuracy from 87.84% to 94.64%.

Ključne reči

Automatic speaker recognition; Mel-Frequency Cepstral Coefficients; Covariance matrix

Kategorija objave

PPG signal analysis and wavelet selection for feature extraction

M33
Naziv publikacije / časopisa

AlfaTech

Naslov rada

PPG signal analysis and wavelet selection for feature extraction

Autori

Zlatko Radovanović, Stevan Jokić, Ivan Jokić, Branislav Gerazov, Ana Kovačević, Nenad Gligorić

Godina izdanja

2025

Vol/No.

ISSN

ISBN

978-86-6461-093-3

DOI

10.46793/ALFATECHproc25.220R

Stranice

220-231

Apstrakt

This paper analyzes photoplethysmography (PPG) biosignals and examines wavelet transformation for feature extraction. Biosignals carry important information about physiological mechanisms and health states, and PPG is particularly useful in modern diagnostics. The paper applies artificial intelligence methods and places special focus on selecting wavelets suitable for machine learning tasks based on PPG signal characteristics.

Ključne reči

characteristic parameters, diastolic peak, photoplethysmography (PPG), pulse width, machine learning, systolic peak, wavelet transform

Kategorija objave

M33

Using machine learning techniques for age prediction based on PPG signal analysis

M33
Naziv publikacije / časopisa

AlfaTech

Naslov rada

Using machine learning techniques for age prediction based on PPG signal analysis

Autori

Mirjana Tomic, Stevan Jokic, Ivan Jokić, Nenad Gligorić, Ana Kovačević, Branislav Gerazov

Godina izdanja

2025

Vol/No.

ISSN

ISBN

978-86-6461-093-3

DOI

10.46793/ALFATECHproc25.154T

Stranice

154-159

Apstrakt

This paper explores machine learning and neural networks for age prediction based on PPG signals as a non-invasive and cost-effective method for health assessment, especially in cardiovascular medicine. Multiple neural network architectures, activation functions (tanh and ReLU), and preprocessing techniques were tested. Evaluation used MAE and MSE metrics. Results indicate that models with more hidden layers improved performance, reducing errors by about 30% compared to single-layer models, while highlighting the importance of data balance and signal-specific characteristics for further optimization.

Ključne reči

PPG signals, machine learning, neural networks, age prediction, data processing, cardiovascular health

Kategorija objave

M33

2024. godina

Mapping Computer Vision Syndrome: An Engineering Problem in Human–Computer Interaction

M22
Naziv publikacije / časopisa

Electronics

Naslov rada

Mapping Computer Vision Syndrome: An Engineering Problem in Human–Computer Interaction

Autori

Viduka Dejan, Vanja Dimitrijević, Dragan Rastovac, Milan Gligorijević, Ana Bašić, Srđan Maričić, and Stevan Jokić

Godina izdanja

2024

Vol/No.

22

ISSN

2079-9292

ISBN

DOI

10.3390/electronics13224460

Stranice

4460 (article number)

Apstrakt

Computer Vision Syndrome (CVS) is highly prevalent but remains relatively understudied. This bibliometric study aims to raise awareness and encourage further research. Data were retrieved from PubMed, Lens, Scopus, and Google Scholar for the period 1 January–31 December 2023, and analyzed using Zotero, VOSviewer, and Microsoft Excel. Out of 893 reviewed papers, 578 were included. The study presents analyses of top authors and publishers, publication trends, sources, and keywords, highlighting increasing research trends and leading countries while emphasizing the need for further research and user awareness.

Ključne reči

bibliometric analysis; computer vision syndrome; human–computer interaction; occupational diseases; computer users; computer terminals

Kategorija objave

M22

Decentralized Identities for Enhanced Security in Vehicle-to-Everything

M33
Naziv publikacije / časopisa

Telfor

Naslov rada

Decentralized Identities for Enhanced Security in Vehicle-to-Everything

Autori

Ana Kovačević, Nenad Gligorić, Stevan Jokić

Godina izdanja

2024

Vol/No.

ISSN

ISBN

979-8-3503-9105-3

DOI

10.1109/TELFOR63250.2024.10819158

Stranice

554-558

Apstrakt

The rise of Vehicle-to-Everything (V2X) communication in Intelligent Transportation Systems enhances road safety and traffic management but introduces security vulnerabilities. This paper proposes a decentralized identity framework using Decentralized Identifiers (DIDs), Verifiable Credentials (VCs), Distributed Ledger Technology (DLT), and Zero-Knowledge Proofs (ZKPs) for secure identity management in V2X systems. The framework improves authentication, reduces centralization risks, and enables privacy-preserving mechanisms with enhanced scalability and resilience.

Ključne reči

Vehicle-to-Everything; Decentralized Identifiers; Verifiable Credentials; Zero-Knowledge Proofs; Autonomous Vehicles

Kategorija objave

M33

2023. godina

Web ontology design for data and services in CLIMOS project

M33
Naziv publikacije / časopisa

IcETRAN

Naslov rada

Web ontology design for data and services in CLIMOS project

Autori

Nenad Gligorić, Milan Dordevic, Daniel San Martín, Stevan Jokić, Ivan Jokić

Godina izdanja

2023

Vol/No.

ISSN

979-8-3503-0712-2

ISBN

979-8-3503-0712-2

DOI

10.1109/IcETRAN59631.2023.10192131

Stranice

46-50

Apstrakt

This paper presents web ontology design and realization in Protégé for collected data and services in the CLIMOS project. CLIMOS addresses climate change-induced emergence and spread of zoonotic pathogens and relies on large datasets and forecasting services. Web ontologies are used to describe contents and services in machine-readable form and to support annotation, discovery, publication, advertising, and automated service composition, improving data and service reusability and interoperability.

Ključne reči

Web ontology, connected data

Kategorija objave

M33

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