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ICRA 1996

Surface sensing and classification for efficient mobile robot navigation

Conference Paper Accepted Paper Artificial Intelligence ยท Robotics

Abstract

Mobile robot navigation and localization is frequently aided by, or even dependent upon, a good estimate of the rate of dead-reckoning error accumulation. Sensor data can be used for position estimation, but this often involves overheads in acquiring and processing the data. By sensing and then classifying the surface type, an estimate of the rate of error accumulation for dead-reckoning allows one to estimate accurately how often localization, including sensor data acquisition, must be performed. The authors describe experiments in which a boom-mounted microphone is tapped on different floor materials, much as a blind man might tap his cane. The acoustic signature arising from the contact is then used to classify the floor type by comparing a windowed power spectrum of the acoustic signature with one of a family of prototypical signatures generated statistically from the same material. The technique is low-cost, involves limited computational expense, and performs very well.

Authors

Keywords

  • Mobile robots
  • Navigation
  • Floors
  • Tactile sensors
  • Robot sensing systems
  • Microphones
  • Probes
  • Prototypes
  • Data acquisition
  • Laboratories
  • Sensor Data
  • Microphone
  • Accumulation Rate
  • Surface Type
  • Acoustic Signals
  • Position Estimation
  • Mobile Robot
  • Error Accumulation
  • Robot Navigation
  • Blind Man
  • Cross-correlation
  • Characteristic Spectrum
  • Tactile Sensor
  • Obstacle Avoidance
  • Human Hand
  • Odometry
  • Unknown Signal
  • Floor Surface
  • Floor Type
  • Blind Person

Context

Venue
IEEE International Conference on Robotics and Automation
Archive span
1984-2025
Indexed papers
30179
Paper id
7943765981533006