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A Multi-Modal Person Perception Framework for Socially Interactive Mobile Service Robots

Steffen Müller, Tim Wengefeld, Thanh Q. Trinh, Dustin Aganian, Markus Eisenbach, Horst–Michael Groß

Year
2020
Citations
18
Access
Open access

Abstract

In order to meet the increasing demands of mobile service robot applications, a dedicated perception module is an essential requirement for the interaction with users in real-world scenarios. In particular, multi sensor fusion and human re-identification are recognized as active research fronts. Through this paper we contribute to the topic and present a modular detection and tracking system that models position and additional properties of persons in the surroundings of a mobile robot. The proposed system introduces a probability-based data association method that besides the position can incorporate face and color-based appearance features in order to realize a re-identification of persons when tracking gets interrupted. The system combines the results of various state-of-the-art image-based detection systems for person recognition, person identification and attribute estimation. This allows a stable estimate of a mobile robot's user, even in complex, cluttered environments with long-lasting occlusions. In our benchmark, we introduce a new measure for tracking consistency and show the improvements when face and appearance-based re-identification are combined. The tracking system was applied in a real world application with a mobile rehabilitation assistant robot in a public hospital. The estimated states of persons are used for the user-centered navigation behaviors, e.g., guiding or approaching a person, but also for realizing a socially acceptable navigation in public environments.

Keywords

Computer scienceMobile robotIdentification (biology)Artificial intelligenceRobotHuman–computer interactionBenchmark (surveying)Computer visionService robotConsistency (knowledge bases)

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