Contribucions a Congressos (D-ATC)http://hdl.handle.net/10256/166672025-08-13T09:16:55Z2025-08-13T09:16:55ZA novel approach to obstacle avoidance for an I-AUV: Preliminary Simulation ResultsSimoni, RobertoRidao Rodríguez, PereCieśląk, PatrykYouakim Isaac, Dina Naguihttp://hdl.handle.net/10256/177682020-02-18T15:29:48Z2018-01-01T00:00:00ZA novel approach to obstacle avoidance for an I-AUV: Preliminary Simulation Results
Simoni, Roberto; Ridao Rodríguez, Pere; Cieśląk, Patryk; Youakim Isaac, Dina Nagui
This paper presents a novel approach to obstacle
avoidance approach for an I-AUV in a framework of setbased task-priority kinematic control algorithm. The approach
is divided into two modes: Mode (1) navigation and inspection
and Mode (2) intervention. For navigation we fully wrap the
I-AUV with two safety spheres at the vehicle and one at
the arm. For intervention we use more safety spheres with
smaller sizes to fully wrap the I-AUV to allow more precise
movements of the I-AUV near the intervention areas.The novel
approach was implemented and simulated with the 8-DOF IAUV GIRONA500 in a scenario for inspection and maintenance
(valve turning) of a BOP (blowout preventer) structure used in
oil and gas industry. The BOP structure was represented by an
octomap and each occupied cell of the octomap was considered
as an obstacle in our model
Comunicació de congrés presentada a: IROS 2018 Workshop (5 octubre 2018: Madrid): New Horizon For Underwater Intervention Missions: From Current Technologies to Future Applications. https://www.iros2018.org/workshops
2018-01-01T00:00:00ZTackling the Problem of Data Imbalancing for Melanoma ClassificationRastgoo, MojdehLemaitre, GuillaumeMassich i Vall, JoanMorel, OlivierMarzani, FrankGarcía Campos, RafaelMeriaudeau, Fabricehttp://hdl.handle.net/10256/177152020-02-11T12:53:01Z2016-02-21T00:00:00ZTackling the Problem of Data Imbalancing for Melanoma Classification
Rastgoo, Mojdeh; Lemaitre, Guillaume; Massich i Vall, Joan; Morel, Olivier; Marzani, Frank; García Campos, Rafael; Meriaudeau, Fabrice
Malignant melanoma is the most dangerous type of skin cancer, yet melanoma is the most treatable kind of
cancer when diagnosed at an early stage. In this regard, Computer-Aided Diagnosis systems based on machine
learning have been developed to discern melanoma lesions from benign and dysplastic nevi in dermoscopic
images. Similar to a large range of real world applications encountered in machine learning, melanoma classification
faces the challenge of imbalanced data, where the percentage of melanoma cases in comparison
with benign and dysplastic cases is far less. This article analyzes the impact of data balancing strategies at
the training step. Subsequently, Over-Sampling (OS) and Under-Sampling (US) are extensively compared in
both feature and data space, revealing that NearMiss-2 (NM2) outperform other methods achieving Sensitivity
(SE) and Specificity (SP) of 91.2% and 81.7%, respectively. More generally, the reported results highlight that
methods based on US or combination of OS and US in feature space outperform the others
Comunicació de congrés presentada a: 3rd International Conference on Bioimaging, BIOIMAGING 2016 - Part of 9th International Joint Conference on Biomedical Engineering Systems and Technologies, BIOSTEC 2016, Roma, Italy
2016-02-21T00:00:00ZROSPlan: Planning in the Robot Operating SystemCashmore, MichaelFox, MariaLong, DerekMagazzeni, DanieleRidder, BramCarrera Viñas, ArnauPalomeras Rovira, NarcísHurtós Vilarnau, NatàliaCarreras Pérez, Marchttp://hdl.handle.net/10256/177122020-02-11T12:00:36Z2015-06-07T00:00:00ZROSPlan: Planning in the Robot Operating System
Cashmore, Michael; Fox, Maria; Long, Derek; Magazzeni, Daniele; Ridder, Bram; Carrera Viñas, Arnau; Palomeras Rovira, Narcís; Hurtós Vilarnau, Natàlia; Carreras Pérez, Marc
The Robot Operating System (ROS) is a set of software libraries
and tools used to build robotic systems. ROS is known
for a distributed and modular design. Given a model of the
environment, task planning is concerned with the assembly
of actions into a structure that is predicted to achieve goals.
This can be done in a way that minimises costs, such as time
or energy. Task planning is vital in directing the actions of
a robotic agent in domains where a causal chain could lock
the agent into a dead-end state. Moreover, planning can be
used in less constrained domains to provide more intelligent
behaviour. This paper describes the ROSPLAN framework,
an architecture for embedding task planning into ROS systems.
We provide a description of the architecture and a case
study in autonomous robotics. Our case study involves autonomous
underwater vehicles in scenarios that demonstrate
the flexibility and robustness of our approach
Comunicació de congrés presentada a: International Conference on Automated Planning and Scheduling (25th: 7-11 Juny 2015: Jerusalen, Israel), Session 2b: Robotics II
2015-06-07T00:00:00ZLearning by demonstration applied to underwater interventionCarrera Viñas, ArnauPalomeras Rovira, NarcísHurtós Vilarnau, NatàliaKormushev, PetarCarreras Pérez, Marchttp://hdl.handle.net/10256/173562021-07-01T10:18:18Z2014-01-01T00:00:00ZLearning by demonstration applied to underwater intervention
Carrera Viñas, Arnau; Palomeras Rovira, Narcís; Hurtós Vilarnau, Natàlia; Kormushev, Petar; Carreras Pérez, Marc
Performing subsea intervention tasks is a challenge due to the complexities of the underwater domain. We propose to use a learning by demonstraition
algorithm to intuitively teach an intervention autonomous underwater vehicle (IAUV) how to perform a given task. Taking as an input few operator demonstrations, the algorithm generalizes the task into a model and simultaneously controls
the vehicle and the manipulator (using 8 degrees of freedom) to reproduce the task.
A complete framework has been implemented in order to integrate the LbD algorithm with the different onboard sensors and actuators. A valve turning intervention
task is used to validate the full framework through real experiments conducted in a
water tank
Comunicació de congrés presentada a: 17th International Conference of the Catalan Association for Artificial Intelligence, Barcelona, Catalonia, Spain, October 22-24, 2014
2014-01-01T00:00:00Z