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Publicações

2023

A hybrid heuristics artificial intelligence feature selection for intrusion detection classifiers in cloud of things

Autores
Sangaiah, AK; Javadpour, A; Ja'fari, F; Pinto, P; Zhang, WZ; Balasubramanian, S;

Publicação
CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS

Abstract
Cloud computing environments provide users with Internet-based services and one of their main challenges is security issues. Hence, using Intrusion Detection Systems (IDSs) as a defensive strategy in such environments is essential. Multiple parameters are used to evaluate the IDSs, the most important aspect of which is the feature selection method used for classifying the malicious and legitimate activities. We have organized this research to determine an effective feature selection method to increase the accuracy of the classifiers in detecting intrusion. A Hybrid Ant-Bee Colony Optimization (HABCO) method is proposed to convert the feature selection problem into an optimization problem. We examined the accuracy of HABCO with BHSVM, IDSML, DLIDS, HCRNNIDS, SVMTHIDS, ANNIDS, and GAPSAIDS. It is shown that HABCO has a higher accuracy compared with the mentioned methods.

2023

Deep Minutiae Fingerprint Extraction Using Equivariance Priors

Autores
Gouveia, M; Castro, E; Rebelo, A; Cardoso, JS; Patrão, B;

Publicação
BIOSIGNALS

Abstract

2023

CreoPhonPt: a collaborative database saving Portuguese creoles from digital obliteration

Autores
Silva, CRSe; Pimentel Trigo, LM;

Publicação
Annual International Conference of the Alliance of Digital Humanities Organizations, DH 2022, Graz, Austria, July 10-14, 2023, Conference Abstracts

Abstract

2023

Visual Place Recognition for Harbour Infrastructures Inspection

Autores
Gaspar, AR; Nunes, A; Matos, A;

Publicação
OCEANS 2023 - LIMERICK

Abstract
The harbour infrastructures have some structures that still need regular inspection. However, the nature of this environment presents a number of challenges when it comes to determining an accurate vehicle position and consequently performing successful image similarity detection. In addition, the underwater environment is highly dynamic, making place recognition harder because the appearance of a place can change over time. In these close-range operations, the visual sensors have a major impact. There are some factors that degrade the quality of the captured images, but image preprocessing steps are increasingly used. Therefore, in this paper, a purely visual similarity detection with enhancement technique is proposed to overcome the inherent perceptual problems in a port scenario. Considering the lack of available data in this context and to facilitate the variation of environmental parameters, a harbour scenario was simulated using the Stonefish simulator. The experiments were performed on some predefined trajectories containing the poor visibility conditions typical of these scenarios. The place recognition approach improves the performance by up to 10% compared to the results obtained with captured images. In general, it provides a good balance in coping with turbidity and light incidence at low computational cost and achieves a performance of about 80%.

2023

The Impact of Active Power Electronics (V2G Charger) to a Represantitive Austrian Electrical Distribution Grid

Autores
Grasel, B; Baptista, J; Tragner, M;

Publicação
2023 International Conference on Smart Energy Systems and Technologies (SEST)

Abstract

2023

Feature-Based Place Recognition Using Forward-Looking Sonar

Autores
Gaspar, AR; Matos, A;

Publicação
JOURNAL OF MARINE SCIENCE AND ENGINEERING

Abstract
Some structures in the harbour environment need to be inspected regularly. However, these scenarios present a major challenge for the accurate estimation of a vehicle's position and subsequent recognition of similar images. In these scenarios, visibility can be poor, making place recognition a difficult task as the visual appearance of a local feature can be compromised. Under these operating conditions, imaging sonars are a promising solution. The quality of the captured images is affected by some factors but they do not suffer from haze, which is an advantage. Therefore, a purely acoustic approach for unsupervised recognition of similar images based on forward-looking sonar (FLS) data is proposed to solve the perception problems in harbour facilities. To simplify the variation of environment parameters and sensor configurations, and given the need for online data for these applications, a harbour scenario was recreated using the Stonefish simulator. Therefore, experiments were conducted with preconfigured user trajectories to simulate inspections in the vicinity of structures. The place recognition approach performs better than the results obtained from optical images. The proposed method provides a good compromise in terms of distinctiveness, achieving 87.5% recall considering appropriate constraints and assumptions for this task given its impact on navigation success. That is, it is based on a similarity threshold of 0.3 and 12 consistent features to consider only effective loops. The behaviour of FLS is the same regardless of the environment conditions and thus this work opens new horizons for the use of these sensors as a great aid for underwater perception, namely, to avoid degradation of navigation performance in muddy conditions.

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