Visible to the public Biblio

Filters: Keyword is Sound  [Clear All Filters]
2022-09-30
Wüstrich, Lars, Schröder, Lukas, Pahl, Marc-Oliver.  2021.  Cyber-Physical Anomaly Detection for ICS. 2021 IFIP/IEEE International Symposium on Integrated Network Management (IM). :950–955.
Industrial Control Systems (ICS) are complex systems made up of many components with different tasks. For a safe and secure operation, each device needs to carry out its tasks correctly. To monitor a system and ensure the correct behavior of systems, anomaly detection is used.Models of expected behavior often rely only on cyber or physical features for anomaly detection. We propose an anomaly detection system that combines both types of features to create a dynamic fingerprint of an ICS. We present how a cyber-physical anomaly detection using sound on the physical layer can be designed, and which challenges need to be overcome for a successful implementation. We perform an initial evaluation for identifying actions of a 3D printer.
2020-12-11
Hassan, S. U., Khan, M. Zeeshan, Khan, M. U. Ghani, Saleem, S..  2019.  Robust Sound Classification for Surveillance using Time Frequency Audio Features. 2019 International Conference on Communication Technologies (ComTech). :13—18.

Over the years, technology has reformed the perception of the world related to security concerns. To tackle security problems, we proposed a system capable of detecting security alerts. System encompass audio events that occur as an outlier against background of unusual activity. This ambiguous behaviour can be handled by auditory classification. In this paper, we have discussed two techniques of extracting features from sound data including: time-based and signal based features. In first technique, we preserve time-series nature of sound, while in other signal characteristics are focused. Convolution neural network is applied for categorization of sound. Major aim of research is security challenges, so we have generated data related to surveillance in addition to available datasets such as UrbanSound 8k and ESC-50 datasets. We have achieved 94.6% accuracy for proposed methodology based on self-generated dataset. Improved accuracy on locally prepared dataset demonstrates novelty in research.