Microphone-Based Context Awareness and Coverage Planner for a Service Robot Using Deep Learning Techniques

Author:

Jia Yin1,Veerajagadheswar Prabakaran1,Mohan Rajesh Elara1ORCID,Ramalingam Balakrishnan1ORCID,Yang Zhenyuan1

Affiliation:

1. Engineering Product Development Pillar, Singapore University of Technology and Design (SUTD), Singapore 487372, Singapore

Abstract

Floor-cleaning robots are becoming popular and operating in public places to ensure the places are clean and tidy. These robots are often operated in a dynamic environment that is less safe and has a high probability of ending up in accidents. Sound event-based context detection is expected to overcome drawbacks in a robot’s visual sensing to avoid a hazardous environment, especially in improper illumination and occlusion situations. Even though numerous studies in the literature discuss the benefits of sound-based context detection, there is no work reported related to context avoidance for cleaning robots. To this end, we propose a novel context avoidance framework based on a deep-learning method that can detect and classify a specific sound and localize the source from a robot’s frame to avoid that environment. The proposed model receives the spectrogram from the array of microphones as the input and produces two parallel outputs. The first output provides information about the spectrum class after running the classification task. The second output contains the localization message of the identified sound source. With the identity of the location that needs to be avoided, the proposed module will generate an alternative trajectory. The proposed model is evaluated in two real-world scenarios, wherein the model is trained to detect the escalator sound in the robot’s surroundings and avoid its location. In all considered scenarios, the developed system accomplished a significantly higher success rate in detecting and avoiding the escalator.

Funder

National Robotics R&D Program Office, Singapore

Singapore University of Technology and Design

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference29 articles.

1. Data Bridge Market Research (2023, February 05). Cleaning Robot Market Expected to Reach $38,142.05 Million by 2029 with Product Type, Components, End-User, Top Players and Global Industry Analysis. Available online: https://www.databridgemarketresearch.com/press-release/global-cleaning-robot-market.

2. Safety for mobile robotic systems: A systematic mapping study from a software engineering perspective;Bozhinoski;J. Syst. Softw.,2019

3. Review of SLAM algorithms for indoor mobile robot with LIDAR and RGB-D camera technology;Kolhatkar;Innov. Electr. Electron. Eng.,2021

4. Autonomous quadrotor flight despite rotor failure with onboard vision sensors: Frames vs. events;Sun;IEEE Robot. Autom. Lett.,2021

5. Odor source localization algorithms on mobile robots: A review and future outlook;Chen;Robot. Auton. Syst.,2019

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1. A 4-channel acoustic sensor system for sound source detection of the service robot;2024 IEEE International Conference on Real-time Computing and Robotics (RCAR);2024-06-24

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