2023
Authors
Dionisio, JMM; Pereira, PNAAS; Leite, PN; Neves, FS; Tavares, JMRS; Pinto, AM;
Publication
OCEANS 2023 - LIMERICK
Abstract
Structures associated with offshore wind energy production require an arduous and cyclical inspection and maintenance (O&M) procedure. Moreover, the harsh challenges introduced by sub-sea phenomena hamper visibility, considerably affecting underwater missions. The lack of quality 3D information within these environments hinders the applicability of autonomous solutions in close-range navigation, fault inspection and intervention tasks since these have a very poor perception of the surrounding space. Deep learning techniques are widely used to solve these challenges in aerial scenarios. The developments in this subject are limited regarding underwater environments due to the lack of publicly disseminated underwater information. This article presents a new underwater dataset: NEREON, containing both 2D and 3D data gathered within real underwater environments at the ATLANTIS Coastal Test Centre. This dataset is adequate for monocular depth estimation tasks, which can provide useful information during O&M missions. With this in mind, a benchmark comparing different deep learning approaches in the literature was conducted and presented along with the NEREON dataset.
2023
Authors
Francisco, M; Ribeiro, F; Metrolho, J; Dionisio, R;
Publication
APPLIED SCIENCES-BASEL
Abstract
Plant diseases and pests significantly influence food production and the productivity and economic profitability of agricultural crops. This has led to great interest in developing technological solutions to enable timely and accurate detection. This systematic review aimed to find studies on the automation of processes to detect, identify and classify diseases and pests in agricultural crops. The goal is to characterize the class of algorithms, models and their characteristics and understand the efficiency of the various approaches and their applicability. The literature search was conducted in two citation databases. The initial search returned 278 studies and, after removing duplicates and applying the inclusion and exclusion criteria, 48 articles were included in the review. As a result, seven research questions were answered that allowed a characterization of the most studied crops, diseases and pests, the datasets used, the algorithms, their inputs and the levels of accuracy that have been achieved in automatic identification and classification of diseases and pests. Some trends that have been most noticed are also highlighted.
2023
Authors
Ribeiro, E; Sampaio, A; Gonçalves, MM; Taveira, MDC; Cunha, J; Maia, Â; Matos, M; Gonçalves, S; Figueiredo, B; Freire, T; Soares, T;
Publication
How the COVID-19 Pandemic Transformed the Mental Health Landscape
Abstract
2023
Authors
Cruz Cunha, MM; Martinho, R; Rijo, R; Domingos, D; Peres, E;
Publication
Procedia Computer Science
Abstract
2023
Authors
Anuradha, K; Iria, J; Mediwaththe, CP;
Publication
2023 IEEE Region 10 Symposium (TENSYMP)
Abstract
2023
Authors
Pinto, VH; Ribeiro, FM; Brito, T; Pereira, AI; Lima, J; Costa, P;
Publication
2023 IEEE INTERNATIONAL CONFERENCE ON AUTONOMOUS ROBOT SYSTEMS AND COMPETITIONS, ICARSC
Abstract
The robot presented in this paper was developed with the main focus on participating in robotic competitions. Therefore, the subsystems here presented were developed taking into account performance criteria instead of simplicity. Nonetheless, this paper also presents background knowledge in some basic concepts regarding robot localization, navigation, color identification and control, all of which are key for a more competitive robot.
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