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Dive into the research topics where Anaís Garrell is active.

Publication


Featured researches published by Anaís Garrell.


intelligent robots and systems | 2013

Robot companion: A social-force based approach with human awareness-navigation in crowded environments

Gonzalo Ferrer; Anaís Garrell; Alberto Sanfeliu

Robots accompanying humans is one of the core capacities every service robot deployed in urban settings should have. We present a novel robot companion approach based on the so-called Social Force Model (SFM). A new model of robot-person interaction is obtained using the SFM which is suited for our robots Tibi and Dabo. Additionally, we propose an interactive scheme for robots human-awareness navigation using the SFM and prediction information. Moreover, we present a new metric to evaluate the robot companion performance based on vital spaces and comfortableness criteria. Also, a multimodal human feedback is proposed to enhance the behavior of the system. The validation of the model is accomplished throughout an extensive set of simulations and real-life experiments.


The International Journal of Robotics Research | 2012

Cooperative social robots to accompany groups of people

Anaís Garrell; Alberto Sanfeliu

This study proposes a new model for guiding people in urban settings using multiple robots that work cooperatively. More specifically, this investigation describes the circumstances in which people might stray from the formation when following different robots’ instructions. To this end, we introduce a ‘prediction and anticipation model’ that predicts the position of the group using a particle filter, while determining the optimal robot behavior to help people stay in the group in areas where they may become distracted. As a result, this article presents a novel approach to locally optimizing the work performed by robots and people using the minimum robots’ work criterion and determining human-friendly types of movements. The guidance missions were carried out in urban areas that included multiple conflict areas and obstacles. This study also provides an analysis of robots’ behavioral reactions to people by simulating different situations in the locations that were used for the investigation. The method was tested through simulations that took into account the difficulties and technological constraints derived from real-life situations. Despite these problematic issues, we were able to demonstrate the robots’ effect on people in real-life situations in terms of pushing and dragging forces.


intelligent robots and systems | 2009

Discrete time motion model for guiding people in urban areas using multiple robots

Anaís Garrell; Alberto Sanfeliu; Francesc Moreno-Noguer

We present a new model for people guidance in urban settings using several mobile robots, that overcomes the limitations of existing approaches, which are either tailored to tightly bounded environments, or based on unrealistic human behaviors. Although the robots motion is controlled by means of a standard particle filter formulation, the novelty of our approach resides in how the environment and human and robot motions are modeled. In particular we define a ¿Discrete-Time- Motion¿ model, which from one side represents the environment by means of a potential field, that makes it appropriate to deal with open areas, and on the other hand the motion models for people and robots respond to realistic situations, and for instance human behaviors such as ¿leaving the group¿ are considered.


intelligent robots and systems | 2010

Model validation: Robot behavior in people guidance mission using DTM model and estimation of human motion behavior

Anaís Garrell; Alberto Sanfeliu

This paper describes the validation process of a simulation model that have been used to explore the new possibilities of interaction when humans are guided by teams of robots that work cooperatively in urban areas. The set of experiments, which have been recorded as video sequences, show a group of people being guided by a team of three people (who play the role of the guide robots). The model used in the simulation process is called Discrete Time Motion model (DTM) described in [7], where the environment is modeled using a set of potential fields, and peoples motion is represented through tension functions. The video sequences were recorded in an urban space of 10:000 m2 denominated Barcelona Robot Lab, where people move in the urban space following diverse trajectories. The motion (pose and velocity) of people and robots extracted from the video sequences were compared against the predictions of the DTM model. Finally, we checked the proper functioning of the model by studying the position error differences of the recorded and simulated sequences.


intelligent robots and systems | 2010

Local optimization of cooperative robot movements for guiding and regrouping people in a guiding mission

Anaís Garrell; Alberto Sanfeliu

This article presents a novel approach for optimizing locally the work of cooperative robots and obtaining the minimum displacement of humans in a guiding people mission. Unlike other methods, we consider situations where individuals can move freely and can escape from the formation, moreover they must be regrouped by multiple mobile robots working cooperatively. The problem is addressed by introducing a “Discrete Time Motion” model (DTM) and a new cost function that minimizes the work required by robots for leading and regrouping people. The guiding mission is carried out in urban areas containing multiple obstacles and building constraints. Furthermore, an analysis of forces actuating among robots and humans is presented throughout simulations of different situations of robot and human configurations and behaviors.


european conference on mobile robots | 2013

Social-aware robot navigation in urban environments

Gonzalo Ferrer; Anaís Garrell; Alberto Sanfeliu

In this paper we present a novel robot navigation approach based on the so-called Social Force Model (SFM). First, we construct a graph map with a set of destinations that completely describe the navigation environment. Second, we propose a robot navigation algorithm, called social-aware navigation, which is mainly driven by the social-forces centered at the robot. Third, we use a MCMC Metropolis-Hastings algorithm in order to learn the parameters values of the method. Finally, the validation of the model is accomplished throughout an extensive set of simulations and real-life experiments.


robot and human interactive communication | 2013

Proactive behavior of an autonomous mobile robot for human-assisted learning

Anaís Garrell; Michael Villamizar; Francesc Moreno-Noguer; Alberto Sanfeliu

During the last decade, there has been a growing interest in making autonomous social robots able to interact with people. However, there are still many open issues regarding the social capabilities that robots should have in order to perform these interactions more naturally. In this paper we present the results of several experiments conducted at the Barcelona Robot Lab in the campus of the “Universitat Politècnica de Catalunya” in which we have analyzed different important aspects of the interaction between a mobile robot and nontrained human volunteers. First, we have proposed different robot behaviors to approach a person and create an engagement with him/her. In order to perform this task we have provided the robot with several perception and action capabilities, such as that of detecting people, planning an approach and verbally communicating its intention to initiate a conversation. Once the initial engagement has been created, we have developed further communication skills in order to let people assist the robot and improve its face recognition system. After this assisted and online learning stage, the robot becomes able to detect people under severe changing conditions, which, in turn enhances the number and the manner that subsequent human-robot interactions are performed.


Multimodal Interaction in Image and Video Applications | 2013

Robot interactive learning through human assistance

Gonzalo Ferrer; Anaís Garrell; Michael Villamizar; Ivan Huerta; Alberto Sanfeliu

This chapter presents some real-life examples using the interactive multimodal framework; in this work, the robot is capable of learning through human assistance. The basic idea is to use the human feedback to improve the learning behavior of the robot when it deals with human beings.We show two different prototypes that have been developed for the following topics: interactive motion learning for robot companion; and on-line face learning using robot vision. On the one hand, the objective of the first prototype is to learn how a robot has to approach to a pedestrian who is going to a destination, minimizing the disturbances to the expected person’s path. On the other hand, the objectives of the second prototype are twofold, first, the robot invites a person to approach the robot to initiate a dialogue, and second, the robot learns the face of the person that is invited for a dialogue. The two prototypes have been tested in real-life conditions and the results are very promising.


International Journal of Social Robotics | 2017

Teaching robot's proactive behavior using human assistance

Anaís Garrell; Michael Villamizar; Francesc Moreno-Noguer; Alberto Sanfeliu

In recent years, there has been a growing interest in enabling autonomous social robots to interact with people. However, many questions remain unresolved regarding the social capabilities robots should have in order to perform this interaction in an ever more natural manner. In this paper, we tackle this problem through a comprehensive study of various topics involved in the interaction between a mobile robot and untrained human volunteers for a variety of tasks. In particular, this work presents a framework that enables the robot to proactively approach people and establish friendly interaction. To this end, we provided the robot with several perception and action skills, such as that of detecting people, planning an approach and communicating the intention to initiate a conversation while expressing an emotional status. We also introduce an interactive learning system that uses the person’s volunteered assistance to incrementally improve the robot’s perception skills. As a proof of concept, we focus on the particular task of online face learning and recognition. We conducted real-life experiments with our Tibi robot to validate the framework during the interaction process. Within this study, several surveys and user studies have been realized to reveal the social acceptability of the robot within the context of different tasks.


ieee-ras international conference on humanoid robots | 2014

Continuous real time POMCP to find-and-follow people by a humanoid service robot

Alex Goldhoorn; Anaís Garrell; René Alquézar; Alberto Sanfeliu

This study describes and evaluates two new methods for finding and following people in urban settings using a humanoid service robot: the Continuous Real-time POMCP method, and its improved extension called Adaptive Highest Belief Continuous Real-time POMCP follower. They are able to run in real-time, in large continuous environments. These methods make use of the online search algorithm Partially Observable Monte-Carlo Planning (POMCP), which in contrast to other previous approaches, can plan under uncertainty on large state spaces. We compare our new methods with a heuristic person follower and demonstrate that they obtain better results by testing them extensively in both simulated and real-life experiments. More than two hours, over 3 km, of autonomous navigation during real-life experiments have been done with a mobile humanoid robot in urban environments.

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Alberto Sanfeliu

Spanish National Research Council

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Michael Villamizar

Spanish National Research Council

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Francesc Moreno-Noguer

Spanish National Research Council

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Alex Goldhoorn

Spanish National Research Council

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René Alquézar

Spanish National Research Council

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Ely Repiso

Spanish National Research Council

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Fernando Herrero

Spanish National Research Council

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Josep M. Mirats Tur

Spanish National Research Council

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Luis Garza-Elizondo

Spanish National Research Council

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