Kontakt:
- email:
- dariusz.kobiela@pg.edu.pl
Zajmowane stanowiska:
Asystent
- miejsce pracy:
- Katedra Inżynierii Oprogramowania
Budynek A Wydziału Elektroniki, Telekomunikacji i Informatyki, EA 623
- telefon:
- +48 58 347 11 18

Publikacje:
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Publikacja
- D. Kobiela
- M. Hajdasz
- M. Erezman
- K. Nurzyńska
- S. Zaporowski
- A. Kurowski
- P. Weichbroth
- Rok 2025
Identifying different vehicle types can help manage traffic more efficiently, reduce congestion, and improve public safety. This study aims to create a classification model that can recognize vehicle types based on the sound of passing vehicles. To achieve this, a database of raw audio files containing 1763 samples from two sources was assembled. The time-domain signals were converted to a time-frequency representation using the...
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Publikacja
- Rok 2024
This study investigates the application of graph neural networks (GNN) in session-based recommendation systems (SR), focusing on a key modification involving the use of a global vector. Session-based recommendation systems often face challenges in accurately capturing user behavior due to the limited data available within individual sessions. The SR-GNN model, originally designed for automatic feature extraction from session graphs...
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Publikacja
- Rok 2024
The objective of this work was to provide an app that can automatically recognize hand gestures from the American Sign Language (ASL) on mobile devices. The app employs a model based on Convolutional Neural Network (CNN) for gesture classification. Various CNN architectures and optimization strategies suitable for devices with limited resources were examined. InceptionV3 and VGG-19 models exhibited negligibly higher accuracy than...
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Publikacja
- Procedia Computer Science - Rok 2024
The goal of the research was to demonstrate the full data science lifecycle through a use case of the MobileNetv2 model for vehicle image Classification task using various validation and test sets, each with different difficulty level. Diverse model variations were employed, each designed to recognize images of ground vehicles and classify them into one of five possible classes: car, truck, motorcycle, bicycle, or bus. In terms...
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Publikacja
The aim of the project was to analyze the possibility of using machine learning and computer vision to identify (indicate the location) of all sea-going vessels located in the selected area of the open sea and to classify the main attributes of the vessel. The key elements of the project were to download data from the Sentinel-1 satellite [1], download data on the sea vessels [2], then automatically tag data and develop a detection...
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