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Keywords = social odometry

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20 pages, 22712 KiB  
Article
Adaptive Route Memory Sequences for Insect-Inspired Visual Route Navigation
by Efstathios Kagioulis, James Knight, Paul Graham, Thomas Nowotny and Andrew Philippides
Biomimetics 2024, 9(12), 731; https://doi.org/10.3390/biomimetics9120731 - 1 Dec 2024
Viewed by 1251
Abstract
Visual navigation is a key capability for robots and animals. Inspired by the navigational prowess of social insects, a family of insect-inspired route navigation algorithms—familiarity-based algorithms—have been developed that use stored panoramic images collected during a training route to subsequently derive directional information [...] Read more.
Visual navigation is a key capability for robots and animals. Inspired by the navigational prowess of social insects, a family of insect-inspired route navigation algorithms—familiarity-based algorithms—have been developed that use stored panoramic images collected during a training route to subsequently derive directional information during route recapitulation. However, unlike the ants that inspire them, these algorithms ignore the sequence in which the training images are acquired so that all temporal information/correlation is lost. In this paper, the benefits of incorporating sequence information in familiarity-based algorithms are tested. To do this, instead of comparing a test view to all the training route images, a window of memories is used to restrict the number of comparisons that need to be made. As ants are able to visually navigate when odometric information is removed, the window position is updated via visual matching information only and not odometry. The performance of an algorithm without sequence information is compared to the performance of window methods with different fixed lengths as well as a method that adapts the window size dynamically. All algorithms were benchmarked on a simulation of an environment used for ant navigation experiments and showed that sequence information can boost performance and reduce computation. A detailed analysis of successes and failures highlights the interaction between the length of the route memory sequence and environment type and shows the benefits of an adaptive method. Full article
(This article belongs to the Special Issue Bio-Inspired Robotics and Applications)
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18 pages, 314 KiB  
Article
Improving Social Odometry Robot Networks with Distributed Reputation Systems for Collaborative Purposes
by David Fraga, Álvaro Gutiérrez, Juan Carlos Vallejo, Alexandre Campo and Zorana Bankovic
Sensors 2011, 11(12), 11372-11389; https://doi.org/10.3390/s111211372 - 30 Nov 2011
Cited by 6 | Viewed by 7945
Abstract
The improvement of odometry systems in collaborative robotics remains an important challenge for several applications. Social odometry is a social technique which confers the robots the possibility to learn from the others. This paper analyzes social odometry and proposes and follows a methodology [...] Read more.
The improvement of odometry systems in collaborative robotics remains an important challenge for several applications. Social odometry is a social technique which confers the robots the possibility to learn from the others. This paper analyzes social odometry and proposes and follows a methodology to improve its behavior based on cooperative reputation systems. We also provide a reference implementation that allows us to compare the performance of the proposed solution in highly dynamic environments with the performance of standard social odometry techniques. Simulation results quantitatively show the benefits of this collaborative approach that allows us to achieve better performances than social odometry. Full article
(This article belongs to the Special Issue Collaborative Sensors)
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