no code implementations • 28 Jan 2025 • Melani Sanchez-Garcia, Ruben Martinez-Cantin, Jesus Bermudez-Cameo, Jose J. Guerrero
In this work, we evaluate the influence of field of view with respect to spatial resolution in visual prostheses, measuring the accuracy and response time in a search and recognition task.
no code implementations • 2 Feb 2024 • Bruno Berenguel-Baeta, Jesus Bermudez-Cameo, Jose J. Guerrero
In this work we present a novel approach for 3D layout recovery of indoor environments using single non-central panoramas.
1 code implementation • 2 Feb 2024 • Bruno Berenguel-Baeta, Antoine N. Andre, Guillaume Caron, Jesus Bermudez-Cameo, Jose J. Guerrero
In this article we present a visual gyroscope based on equirectangular panoramas.
1 code implementation • 2 Feb 2024 • Bruno Berenguel-Baeta, Maria Santos-Villafranca, Jesus Bermudez-Cameo, Alejandro Perez-Yus, Jose J. Guerrero
Convolution kernels are the basic structural component of convolutional neural networks (CNNs).
1 code implementation • 30 Jan 2024 • Bruno Berenguel-Baeta, Jesus Bermudez-Cameo, Jose J. Guerrero
Omnidirectional images are one of the main sources of information for learning based scene understanding algorithms.
no code implementations • 30 Jan 2024 • Bruno Berenguel-Baeta, Manuel Guerrero-Viu, Alejandro de Nova, Jesus Bermudez-Cameo, Alejandro Perez-Yus, Jose J. Guerrero
In this work it is proposed a combination of sensors and algorithms that can lead to the building of a navigation system for visually impaired people.
1 code implementation • 30 Jan 2024 • Bruno Berenguel-Baeta, Jesus Bermudez-Cameo, Jose J. Guerrero
Our new pipeline aims to extract the boundaries of the structural lines of an indoor environment with a neural network and exploit the properties of non-central projection systems in a new geometrical processing to recover an scaled 3D layout.
1 code implementation • 30 Jan 2024 • Bruno Berenguel-Baeta, Jesus Bermudez-Cameo, Jose J. Guerrero
In this paper, we present a tool for generating datasets of omnidirectional images with semantic and depth information.
1 code implementation • ICCV 2023 • Lorenzo Mur-Labadia, Jose J. Guerrero, Ruben Martinez-Cantin
We use this method to build the largest and most complete dataset on affordances based on the EPIC-Kitchen dataset, EPIC-Aff, which provides interaction-grounded, multi-label, metric and spatial affordance annotations.
no code implementations • 2 Mar 2023 • Lorenzo Mur-Labadia, Ruben Martinez-Cantin, Jose J. Guerrero
We present a novel Bayesian deep network to detect affordances in images, at the same time that we quantify the distribution of the aleatoric and epistemic variance at the spatial level.
1 code implementation • 4 Oct 2022 • Bruno Berenguel-Baeta, Jesus Bermudez-Cameo, Jose J. Guerrero
Our experiments show that FreDSNet has similar performance as specific state of the art methods for semantic segmentation and depth estimation.
Ranked #2 on
Depth Estimation
on Stanford2D3D Panoramic
no code implementations • 20 May 2022 • Melani Sanchez-Garcia, Roberto Morollon-Ruiz, Ruben Martinez-Cantin, Jose J. Guerrero, Eduardo Fernandez-Jover
The development of new artificial vision simulation systems can be useful to guide the development of new visual devices and the optimization of field of view and resolution to provide a helpful and valuable visual aid to profoundly or totally blind patients.
no code implementations • 31 Mar 2022 • Semih Orhan, Jose J. Guerrero, Yalin Bastanlar
Since semantic content is more robust to such changes, we exploit semantic information to improve visual localization.
no code implementations • 30 Sep 2021 • Melani Sanchez-Garcia, Alejandro Perez-Yus, Ruben Martinez-Cantin, Jose J. Guerrero
In this work, we propose an augmented reality navigation system for visual prosthesis that incorporates a software of reactive navigation and path planning which guides the subject through convenient, obstacle-free route.
1 code implementation • ECCV 2020 • Clara Fernandez-Labrador, Ajad Chhatkuli, Danda Pani Paudel, Jose J. Guerrero, Cédric Demonceaux, Luc van Gool
This paper aims at learning category-specific 3D keypoints, in an unsupervised manner, using a collection of misaligned 3D point clouds of objects from an unknown category.
no code implementations • 14 Oct 2019 • Julia Guerrero-Viu, Clara Fernandez-Labrador, Cédric Demonceaux, Jose J. Guerrero
In the last few years, there has been a growing interest in taking advantage of the 360 panoramic images potential, while managing the new challenges they imply.
3 code implementations • 19 Mar 2019 • Clara Fernandez-Labrador, Jose M. Facil, Alejandro Perez-Yus, Cédric Demonceaux, Javier Civera, Jose J. Guerrero
The problem of 3D layout recovery in indoor scenes has been a core research topic for over a decade.
no code implementations • 25 Sep 2018 • Melani Sanchez-Garcia, Ruben Martinez-Cantin, Jose J. Guerrero
Prosthetic vision is being applied to partially recover the retinal stimulation of visually impaired people.
no code implementations • 29 Aug 2018 • Clara Fernandez-Labrador, Jose M. Facil, Alejandro Perez-Yus, Cedric Demonceaux, Jose J. Guerrero
We outperform the state of the art not only in accuracy of the 3D models but also in speed.
1 code implementation • 22 Jul 2018 • Daniel Gutierrez-Gomez, Jose J. Guerrero
The presented approach is a dense direct SLAM method with the main characteristic of working with the depth maps in inverse depth parametrisation for the routines of dense alignment or keyframe fusion.
1 code implementation • 21 Jun 2018 • Clara Fernandez-Labrador, Alejandro Perez-Yus, Gonzalo Lopez-Nicolas, Jose J. Guerrero
In this paper, we propose a novel procedure for 3D layout recovery of indoor scenes from single 360 degrees panoramic images.