11 results on '"Gutiérrez Maestro, Eduardo"'
Search Results
2. Collision Anticipation via Deep Reinforcement Learning for Visual Navigation
- Author
-
Gutiérrez-Maestro, Eduardo, primary, López-Sastre, Roberto J., additional, and Maldonado-Bascón, Saturnino, additional
- Published
- 2019
- Full Text
- View/download PDF
3. Stress Lingers : Recognizing the Impact of Task Order on Design of Stress and Emotion Detection Systems
- Author
-
Gutiérrez Maestro, Eduardo, Banaee, Hadi, Loutfi, Amy, Gutiérrez Maestro, Eduardo, Banaee, Hadi, and Loutfi, Amy
- Abstract
This paper examines the significance of the priming effect in designing and developing models for recognizing of affective states. Using a public dataset, often considered a benchmark in automatic stress recognition, the significance of the priming effect is explicated. Two experimental setups confirm the importance of task ordering in this problem. The results demonstrate the statistical significance of the model's confusion when the subject has previously experienced stress and illustrate the importance for the Affective Computing community to develop methods to mitigate the priming effect where the order of tasks impacts how data should be modelled.
- Published
- 2023
4. THÖR-Magni : Comparative Analysis of Deep Learning Models for Role-Conditioned Human Motion Prediction
- Author
-
Almeida, Tiago, Rudenko, Andrey, Schreiter, Tim, Zhu, Yufei, Gutiérrez Maestro, Eduardo, Morillo-Mendez, Lucas, Kucner, Tomasz P., Martinez Mozos, Oscar, Magnusson, Martin, Palmieri, Luigi, Arras, Kai O., Lilienthal, Achim, Almeida, Tiago, Rudenko, Andrey, Schreiter, Tim, Zhu, Yufei, Gutiérrez Maestro, Eduardo, Morillo-Mendez, Lucas, Kucner, Tomasz P., Martinez Mozos, Oscar, Magnusson, Martin, Palmieri, Luigi, Arras, Kai O., and Lilienthal, Achim
- Abstract
Autonomous systems, that need to operate in human environments and interact with the users, rely on understanding and anticipating human activity and motion. Among the many factors which influence human motion, semantic attributes, such as the roles and ongoing activities of the detected people, provide a powerful cue on their future motion, actions, and intentions. In this work we adapt several popular deep learning models for trajectory prediction with labels corresponding to the roles of the people. To this end we use the novel THOR-Magni dataset, which captures human activity in industrial settings and includes the relevant semantic labels for people who navigate complex environments, interact with objects and robots, work alone and in groups. In qualitative and quantitative experiments we show that the role-conditioned LSTM, Transformer, GAN and VAE methods can effectively incorporate the semantic categories, better capture the underlying input distribution and therefore produce more accurate motion predictions in terms of Top-K ADE/FDE and log-likelihood metrics.
- Published
- 2023
- Full Text
- View/download PDF
5. Wearable-Based Intelligent Emotion Monitoring in Older Adults during Daily Life Activities
- Author
-
Gutiérrez Maestro, Eduardo, Almeida, Tiago Rodrigues de, Schaffernicht, Erik, Martinez Mozos, Oscar, Gutiérrez Maestro, Eduardo, Almeida, Tiago Rodrigues de, Schaffernicht, Erik, and Martinez Mozos, Oscar
- Abstract
We present a system designed to monitor the well-being of older adults during their daily activities. To automatically detect and classify their emotional state, we collect physiological data through a wearable medical sensor. Ground truth data are obtained using a simple smartphone app that provides ecological momentary assessment (EMA), a method for repeatedly sampling people's current experiences in real time in their natural environments. We are making the resulting dataset publicly available as a benchmark for future comparisons and methods. We are evaluating two feature selection methods to improve classification performance and proposing a feature set that augments and contrasts domain expert knowledge based on time-analysis features. The results demonstrate an improvement in classification accuracy when using the proposed feature selection methods. Furthermore, the feature set we present is better suited for predicting emotional states in a leave-one-day-out experimental setup, as it identifies more patterns.
- Published
- 2023
- Full Text
- View/download PDF
6. The Magni Human Motion Dataset : Accurate, Complex, Multi-Modal, Natural, Semantically-Rich and Contextualized
- Author
-
Schreiter, Tim, Almeida, Tiago Rodrigues de, Zhu, Yufei, Gutiérrez Maestro, Eduardo, Morillo-Mendez, Lucas, Rudenko, Andrey, Kucner, Tomasz P., Martinez Mozos, Oscar, Magnusson, Martin, Palmieri, Luigi, Arras, Kai O., Lilienthal, Achim, Schreiter, Tim, Almeida, Tiago Rodrigues de, Zhu, Yufei, Gutiérrez Maestro, Eduardo, Morillo-Mendez, Lucas, Rudenko, Andrey, Kucner, Tomasz P., Martinez Mozos, Oscar, Magnusson, Martin, Palmieri, Luigi, Arras, Kai O., and Lilienthal, Achim
- Abstract
Rapid development of social robots stimulates active research in human motion modeling, interpretation and prediction, proactive collision avoidance, human-robot interaction and co-habitation in shared spaces. Modern approaches to this end require high quality datasets for training and evaluation. However, the majority of available datasets suffers from either inaccurate tracking data or unnatural, scripted behavior of the tracked people. This paper attempts to fill this gap by providing high quality tracking information from motion capture, eye-gaze trackers and on-board robot sensors in a semantically-rich environment. To induce natural behavior of the recorded participants, we utilise loosely scripted task assignment, which induces the participants navigate through the dynamic laboratory environment in a natural and purposeful way. The motion dataset, presented in this paper, sets a high quality standard, as the realistic and accurate data is enhanced with semantic information, enabling development of new algorithms which rely not only on the tracking information but also on contextual cues of the moving agents, static and dynamic environment., DARKO
- Published
- 2022
- Full Text
- View/download PDF
7. Context-free Self-Conditioned GAN for Trajectory Forecasting
- Author
-
Almeida, Tiago Rodrigues de, Gutiérrez Maestro, Eduardo, Martinez Mozos, Oscar, Almeida, Tiago Rodrigues de, Gutiérrez Maestro, Eduardo, and Martinez Mozos, Oscar
- Abstract
In this paper, we present a context-free unsupervised approach based on a self-conditioned GAN to learn different modes from 2D trajectories. Our intuition is that each mode indicates a different behavioral moving pattern in the discriminator's feature space. We apply this approach to the problem of trajectory forecasting. We present three different training settings based on self-conditioned GAN, which produce better forecasters. We test our method in two data sets: human motion and road agents. Experimental results show that our approach outperforms previous context-free methods in the least representative supervised labels while performing well in the remaining labels. In addition, our approach outperforms globally in human motion, while performing well in road agents.
- Published
- 2022
- Full Text
- View/download PDF
8. Robotic-Based Well-Being Monitoring and Coaching System for the Elderly in Their Daily Activities
- Author
-
Calatrava-Nicolás, Francisco M., primary, Gutiérrez-Maestro, Eduardo, additional, Bautista-Salinas, Daniel, additional, Ortiz, Francisco J., additional, González, Joaquín Roca, additional, Vera-Repullo, José Alfonso, additional, Jiménez-Buendía, Manuel, additional, Méndez, Inmaculada, additional, Ruiz-Esteban, Cecilia, additional, and Mozos, Oscar Martínez, additional
- Published
- 2021
- Full Text
- View/download PDF
9. Robotic-based well-being monitoring and coaching system for the elderly in their daily activities
- Author
-
Ministerio de Ciencia, Innovación y Univesidades, Fondo Europeo de Desarrollo Regional, Calatrava Nicolás, Francisco Miguel, Gutiérrez Maestro, Eduardo, Bautista Salinas, Daniel, Ortiz Zaragoza, Francisco José, Roca González, Joaquín Francisco, Vera Repullo, José Alfonso, Jiménez Buendía, Manuel, Méndez, Inmaculada, Ruíz Esteban, Cecilia María, Martínez Mozos, Óscar, Ministerio de Ciencia, Innovación y Univesidades, Fondo Europeo de Desarrollo Regional, Calatrava Nicolás, Francisco Miguel, Gutiérrez Maestro, Eduardo, Bautista Salinas, Daniel, Ortiz Zaragoza, Francisco José, Roca González, Joaquín Francisco, Vera Repullo, José Alfonso, Jiménez Buendía, Manuel, Méndez, Inmaculada, Ruíz Esteban, Cecilia María, and Martínez Mozos, Óscar
- Abstract
The increasingly ageing population and the tendency to live alone have led science and engineering researchers to search for health care solutions. In the COVID 19 pandemic, the elderly have been seriously affected in addition to suffering from isolation and its associated and psychological consequences. This paper provides an overview of the RobWell (Robotic-based Well-Being Monitoring and Coaching System for the Elderly in their Daily Activities) system. It is a system focused on the field of artificial intelligence for mood prediction and coaching. This paper presents a general overview of the initially proposed system as well as the preliminary results related to the home automation subsystem, autonomous robot navigation and mood estimation through machine learning prior to the final system integration, which will be discussed in future works. The main goal is to improve their mental well-being during their daily household activities. The system is composed of ambient intelligence with intelligent sensors, actuators and a robotic platform that interacts with the user. A test smart home system was set up in which the sensors, actuators and robotic platform were integrated and tested. For artificial intelligence applied to mood prediction, we used machine learning to classify several physiological signals into different moods. In robotics, it was concluded that the ROS autonomous navigation stack and its autodocking algorithm were not reliable enough for this task, while the robot’s autonomy was sufficient. Semantic navigation, artificial intelligence and computer vision alternatives are being sought.
- Published
- 2021
10. Robotic-Based Well-Being Monitoring and Coaching System for the Elderly in Their Daily Activities
- Author
-
Calatrava-Nicolás, Francisco M., Gutiérrez-Maestro, Eduardo, Bautista-Salinas, Daniel, Ortiz, Francisco J., González, Joaquín Roca, Vera-Repullo, José Alfonso, Jiménez-Buendía, Manuel, Méndez, Inmaculada, Ruiz-Esteban, Cecilia, Martinez Mozos, Oscar, Calatrava-Nicolás, Francisco M., Gutiérrez-Maestro, Eduardo, Bautista-Salinas, Daniel, Ortiz, Francisco J., González, Joaquín Roca, Vera-Repullo, José Alfonso, Jiménez-Buendía, Manuel, Méndez, Inmaculada, Ruiz-Esteban, Cecilia, and Martinez Mozos, Oscar
- Abstract
The increasingly ageing population and the tendency to live alone have led science and engineering researchers to search for health care solutions. In the COVID 19 pandemic, the elderly have been seriously affected in addition to suffering from isolation and its associated and psychological consequences. This paper provides an overview of the RobWell (Robotic-based Well-Being Monitoring and Coaching System for the Elderly in their Daily Activities) system. It is a system focused on the field of artificial intelligence for mood prediction and coaching. This paper presents a general overview of the initially proposed system as well as the preliminary results related to the home automation subsystem, autonomous robot navigation and mood estimation through machine learning prior to the final system integration, which will be discussed in future works. The main goal is to improve their mental well-being during their daily household activities. The system is composed of ambient intelligence with intelligent sensors, actuators and a robotic platform that interacts with the user. A test smart home system was set up in which the sensors, actuators and robotic platform were integrated and tested. For artificial intelligence applied to mood prediction, we used machine learning to classify several physiological signals into different moods. In robotics, it was concluded that the ROS autonomous navigation stack and its autodocking algorithm were not reliable enough for this task, while the robot's autonomy was sufficient. Semantic navigation, artificial intelligence and computer vision alternatives are being sought., Funding agencies:Spanish Ministerio de Ciencia, Innovacion y Univesidades, Agencia Estatal de Investigacion (AEI) RTI2018-095599-A-C22Wallenberg AI, Autonomous Systems and Software Program (WASP) - Knut and Alice Wallenberg Foundation
- Published
- 2021
- Full Text
- View/download PDF
11. Soluciones de navegación inteligente para plataformas robóticas entrenadas en entornos virtuales
- Author
-
Gutiérrez Maestro, Eduardo, López Sastre, Roberto Javier, and Universidad de Alcalá. Escuela Politécnica Superior
- Subjects
Deep reinforcement learning ,Telecomunicaciones ,Navegación visual ,Telecommunication ,Computer vision ,Robotics ,Robótica ,Visión por ordenador - Abstract
La navegación visual es la capacidad que tiene un agente autónomo de encontrar su camino en un entorno amplio y complejo basado únicamente en información visual. De hecho, es un problema fundamental en la visión por computador y la robótica. En este proyecto se propone un modelo basado en deep reinforcement learning que es capaz de navegar en una escena para alcanzar un objetivo visual, pero anticipando las posibles colisiones dentro del entorno. Técnicamente, se propone un modelo de tipo map-less, que sigue un método de reinforcement learning conocido como actor-critic, en donde la función de recompensa ha sido diseñada para evitar colisiones. Se expone una evaluación exhaustiva del modelo para el entorno virtual AI2-THOR, donde los resultados muestran que el modelo propuesto: 1) mejora el estado del arte en términos de número de pasos y de colisiones; 2) es capaz de converger más rápido que un modelo que no tiene en cuenta las colisiones, buscando únicamente el camino más corto; y 3) ofrece una interesante capacidad de generalización para alcanzar objetivos visuales que no han sido nunca vistos durante el entrenamiento., Visual navigation is the ability of an autonomous agent to find its way in a large and complex environment based on visual information. It is indeed a fundamental problem in computer vision and robotics. In this project, it is proposed a deep reinforcement learning approach which is able to learn to navigate a scene to reach a given visual target, but anticipating the possible collisions with the environment. Technically, it is proposed a map-less-based model, which follows an actor-critic reinforcement learning method where the reward function has been designed to be collision aware. It is offered a thorough experimental evaluation of our solution in the AI2-THOR virtual environment, where the results show that the proposed method: 1) improves the state of the art in terms of number of steps and collisions; 2) is able to converge faster than a model which does not care about the collisions, simply searching for the shortest paths; and 3) offers an interesting generalization capability to reach visual targets that have never been seen during training., Máster Universitario en Ingeniería de Telecomunicación (M125)
- Published
- 2019
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.