Cristóbal Bordiu - Academia.edu (original) (raw)

Cristóbal Bordiu

Related Authors

Daniel D. Hutto

Galen Strawson

Don Ross

Katherine Butler Schofield

Shaun Gallagher

Egil Bakka

Egil Bakka

Norwegian University of Science and Technology

Armando Marques-Guedes

Giulia Sissa

Rob S E A N Wilson

Harry Cleaver

Uploads

Papers by Cristóbal Bordiu

Research paper thumbnail of Radio astronomical images object detection and segmentation: a benchmark on deep learning methods

Experimental Astronomy

In recent years, deep learning has been successfully applied in various scientific domains. Follo... more In recent years, deep learning has been successfully applied in various scientific domains. Following these promising results and performances, it has recently also started being evaluated in the domain of radio astronomy. In particular, since radio astronomy is entering the Big Data era, with the advent of the largest telescope in the world-the Square Kilometre Array (SKA), the task of automatic object detection and instance segmentation is crucial for source finding and analysis. In this work, we explore the performance of the most affirmed deep learning approaches, applied to astronomical images obtained by radio interferometric instrumentation, to solve the task of automatic source detection. This is carried out by applying models designed to accomplish two different kinds of tasks: object detection and semantic segmentation. The goal is 1

Research paper thumbnail of Astronomical research in the next decade: trends, barriers and needs in data access, management, visualization and analysis

arXiv: Instrumentation and Methods for Astrophysics, 2020

We report the outcomes of a survey that explores the current practices, needs and expectations of... more We report the outcomes of a survey that explores the current practices, needs and expectations of the astrophysics community, concerning four research aspects: open science practices, data access and management, data visualization, and data analysis. The survey, involving 329 professionals from several research institutions, pinpoints significant gaps in matters such as results reproducibility, availability of visual analytics tools and adoption of Machine Learning techniques for data analysis. This research is conducted in the context of the H2020 NEANIAS project.

Research paper thumbnail of Radio astronomical images object detection and segmentation: a benchmark on deep learning methods

Experimental Astronomy

In recent years, deep learning has been successfully applied in various scientific domains. Follo... more In recent years, deep learning has been successfully applied in various scientific domains. Following these promising results and performances, it has recently also started being evaluated in the domain of radio astronomy. In particular, since radio astronomy is entering the Big Data era, with the advent of the largest telescope in the world-the Square Kilometre Array (SKA), the task of automatic object detection and instance segmentation is crucial for source finding and analysis. In this work, we explore the performance of the most affirmed deep learning approaches, applied to astronomical images obtained by radio interferometric instrumentation, to solve the task of automatic source detection. This is carried out by applying models designed to accomplish two different kinds of tasks: object detection and semantic segmentation. The goal is 1

Research paper thumbnail of Astronomical research in the next decade: trends, barriers and needs in data access, management, visualization and analysis

arXiv: Instrumentation and Methods for Astrophysics, 2020

We report the outcomes of a survey that explores the current practices, needs and expectations of... more We report the outcomes of a survey that explores the current practices, needs and expectations of the astrophysics community, concerning four research aspects: open science practices, data access and management, data visualization, and data analysis. The survey, involving 329 professionals from several research institutions, pinpoints significant gaps in matters such as results reproducibility, availability of visual analytics tools and adoption of Machine Learning techniques for data analysis. This research is conducted in the context of the H2020 NEANIAS project.

Log In