Energy Aware Camera Location Search Algorithm for Increasing Precision of Observation in Automated Manufacturing
Journal:
arXiv
Published Date:
Jun 12, 2025
Abstract
Visual servoing technology has been well developed and applied in many
automated manufacturing tasks, especially in tools' pose alignment. To access a
full global view of tools, most applications adopt eye-to-hand configuration or
eye-to-hand/eye-in-hand cooperation configuration in an automated manufacturing
environment. Most research papers mainly put efforts into developing control
and observation architectures in various scenarios, but few of them have
discussed the importance of the camera's location in eye-to-hand configuration.
In a manufacturing environment, the quality of camera estimations may vary
significantly from one observation location to another, as the combined effects
of environmental conditions result in different noise levels of a single image
shot at different locations. In this paper, we propose an algorithm for the
camera's moving policy so that it explores the camera workspace and searches
for the optimal location where the images' noise level is minimized. Also, this
algorithm ensures the camera ends up at a suboptimal (if the optimal one is
unreachable) location among the locations already searched, with limited energy
available for moving the camera. Unlike a simple brute force approach, the
algorithm enables the camera to explore space more efficiently by adapting the
search policy from learning the environment. With the aid of an image averaging
technique, this algorithm, in use of a solo camera, achieves the observation
accuracy in eye-to-hand configurations to a desirable extent without filtering
out high-frequency information in the original image. An automated
manufacturing application has been simulated and the results show the success
of this algorithm's improvement of observation precision with limited energy.