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2022-02-03
Rishikesh, Bhattacharya, Ansuman, Thakur, Atul, Banda, Gourinath, Ray, Rajarshi, Halder, Raju.  2021.  Secure Communication System Implementation for Robot-based Surveillance Applications. 2021 International Symposium of Asian Control Association on Intelligent Robotics and Industrial Automation (IRIA). :270—275.
Surveillance systems involve a camera module (at a fixed location) connected/streaming video via Internet Protocol to a (video) server. In our IMPRINT consortium project, by mounting miniaturised camera module/s on mobile quadruped-lizard like robots, we developed a stealth surveillance system, which could be very useful as a monitoring system in hostage situations. In this paper, we report about the communication system that enables secure transmission of: Live-video from robots to a server, GPS-coordinates of robots to the server and Navigation-commands from server to robots. Since the end application is for stealth surveillance, often can involve sensitive data, data security is a crucial concern, especially when data is transmitted through the internet. We use the RC4 algorithm for video transmission; while the AES algorithm is used for GPS data and other commands’ data transmission. Advantages of the developed system is easy to use for its web interface which is provided on the control station. This communication system, because of its internet-based communication, it is compatible with any operating system environment. The lightweight program runs on the control station (on the server side) and robot body that leads to less memory consumption and faster processing. An important requirement in such hostage surveillance systems is fast data processing and data-transmission rate. We have implemented this communication systems with a single-board computer having GPU that performs better in terms of speed of transmission and processing of data.
2020-12-01
Nam, C., Li, H., Li, S., Lewis, M., Sycara, K..  2018.  Trust of Humans in Supervisory Control of Swarm Robots with Varied Levels of Autonomy. 2018 IEEE International Conference on Systems, Man, and Cybernetics (SMC). :825—830.

In this paper, we study trust-related human factors in supervisory control of swarm robots with varied levels of autonomy (LOA) in a target foraging task. We compare three LOAs: manual, mixed-initiative (MI), and fully autonomous LOA. In the manual LOA, the human operator chooses headings for a flocking swarm, issuing new headings as needed. In the fully autonomous LOA, the swarm is redirected automatically by changing headings using a search algorithm. In the mixed-initiative LOA, if performance declines, control is switched from human to swarm or swarm to human. The result of this work extends the current knowledge on human factors in swarm supervisory control. Specifically, the finding that the relationship between trust and performance improved for passively monitoring operators (i.e., improved situation awareness in higher LOAs) is particularly novel in its contradiction of earlier work. We also discover that operators switch the degree of autonomy when their trust in the swarm system is low. Last, our analysis shows that operator's preference for a lower LOA is confirmed for a new domain of swarm control.

2019-02-21
Bi, Q., Huang, Y..  2018.  A Self-organized Shape Formation Method for Swarm Controlling. 2018 37th Chinese Control Conference (CCC). :7205–7209.
This paper presents a new approach for the shape formation based on the artificial method. It refers to the basic concept in the swarm intelligence: complex behaviors of the swarm can be formed with simple rules designed in the agents. In the framework, the distance image is used to generate not only an attraction field to keep all the agents in the given shape, but also repulsive force field among the agents to make them distribute uniformly. Compared to the traditional methods based on centralized control, the algorithm has properties of distributed and simple computation, convergence and robustness, which is very suitable for the swarm robots in the real world considering the limitation of communication, collision avoidance and calculation problems. We also show that some initial sensitive method can be improved in the similar way. The simulation results prove the proposed approach is suitable for convex. non-convex and line shapes.