Modeling a Sensor to Improve its Efficacy

Date

2013-05-20

ORCID

Journal Title

Journal ISSN

Volume Title

Publisher

Hindawi Publishing Corporation

item.page.doi

Abstract

Robots rely on sensors to provide them with information about their surroundings. However, high-quality sensors can be extremely expensive and cost-prohibitive. Thus many robotic systems must make due with lower-quality sensors. Here we demonstrate via a case study how modeling a sensor can improve its efficacy when employed within a Bayesian inferential framework. As a test bed we employ a robotic arm that is designed to autonomously take its own measurements using an inexpensive LEGO light sensor to estimate the position and radius of a white circle on a black field. The light sensor integrates the light arriving from a spatially distributed region within its field of view weighted by its spatial sensitivity function (SSF). We demonstrate that by incorporating an accurate model of the light sensor SSF into the likelihood function of a Bayesian inference engine, an autonomous system can make improved inferences about its surroundings. The method presented here is data based, fairly general, and made with plug-and-play in mind so that it could be implemented in similar problems.

Description

Keywords

Optical detectors, Machine learning, Robots, Bayesian statistical decision theory

item.page.sponsorship

Rights

CC BY 3.0 (Attribution), ©2013 The Authors

Citation

Malakar, Nabin K., Daniil Gladkov, and Kevin H. Knuth. 2013. "Modeling a sensor to improve its efficacy." Journal of Sensors 2013(481054): 1-11.

Collections