Contact:
- email:
- wojwalos@pg.edu.pl
Positions:
Assistant professor
- workplace:
- Katedra Inżynierii Oprogramowania
Budynek A Wydziału Elektroniki, Telekomunikacji i Informatyki, EA 608
- phone:
- (58) 347 24 75

Publications:
-
Publication
- IEEE Access - Year 2023
Most of the research in the field of emotion recognition is based on datasets that contain data obtained during affective computing experiments. However, each dataset is described by different metadata, stored in various structures and formats. This research can be counted among those whose aim is to provide a structural and semantic pattern for affective computing datasets, which is an important step to solve the problem of data...
Full text available to download
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Publication
- T. Zawadzka
- W. Waloszek
- A. Karpus
- S. Zapalowska
- M. Wróbel
- IEEE Access - Year 2021
One of the major challenges facing the field of Affective Computing is the reusability of datasets. Existing affective-related datasets are not consistent with each other, they store a variety of information in different forms, different formats, and the terms used to describe them are not unified. This paper proposes a new ontology, ROAD, as a solution to this problem, by formally describing the datasets and unifying the terms...
Full text available to download
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Publication
- Procedia Computer Science - Year 2021
Ontologies are formal systems of concepts used to describe numerous domains of interest. Ontologies are usually very expressive, but it comes at a price of computationally expensive reasoning over them. In our previous work we discussed the possible performance benefits that can be obtained by decomposing an ontology into contexts. While the benefits are appealing, we discovered that, in our case, the main obstacle against using...
Full text available to download
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Publication
- Year 2020
We present an experimental case study of a novel and original framework for classifying aggregate objects, i.e. objects that consist of other objects. The features of the aggregated objects are converted into the features of aggregate ones, by use of aggregate functions. The choice of the functions, along with the specific method of classification can be automated by choosing of one of several process paths, and different paths...
Full text to download in external service
-
Publication
We present an experimental case study of a novel and original framework for classifying aggregate objects, i.e. objects that consist of other objects. The features of the aggregated objects are converted into the features of aggregate ones, by use of aggregate functions. The choice of the functions, along with the specific method of classification can be automated by choosing of one of several process paths, and different paths...
Full text to download in external service