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Tomasz Andrysiak

Researcher at University of Technology and Life Sciences in Bydgoszcz

Publications -  40
Citations -  320

Tomasz Andrysiak is an academic researcher from University of Technology and Life Sciences in Bydgoszcz. The author has contributed to research in topics: Anomaly detection & Statistical model. The author has an hindex of 6, co-authored 39 publications receiving 278 citations.

Papers
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Journal Article

Image retrieval based on hierarchical Gabor filters

TL;DR: A salient (characteristic) point detection algorithm is presented so that texture parameters are computed only in a neighborhood of salient points and used as image content descriptors and efficiently emply them to retrieve images.
Journal ArticleDOI

Integrated color, texture and shape information for content-based image retrieval

TL;DR: The main focus in this paper is on integrated color, texture and shape extraction methods for CBIR that uses Gabor filtration for determining the number of regions of interest (ROIs), in which fast and effective feature extraction is performed.
Book ChapterDOI

Network Traffic Prediction and Anomaly Detection Based on ARFIMA Model

TL;DR: In the presented method, it is proposed to use statistical relationships between predicted and original network traffic to determine if the examined trace is normal or attacked, and the efficiency of the method is verified with the use of extended set of benchmark test real traces.
Journal ArticleDOI

Anomaly Detection in Smart Metering Infrastructure with the Use of Time Series Analysis

TL;DR: The article presents solutions to anomaly detection in network traffic for critical smart metering infrastructure, realized with the use of radio sensory network and the choice of optimal parameter values of statistical models was realized as forecast error minimization.
Book ChapterDOI

DDoS Attacks Detection by Means of Greedy Algorithms

TL;DR: The major contribution of the paper is the proposition of 1D KSVD algorithm as well as its tree based structure representation (clusters) that can be successfully applied to DDos attacks and network anomaly detection.