A Camera-Direction Dependent Visual-Motor Coordinate Transformation for a Visually Guided Neural Robot
Applications and Innovations in Intelligent Systems XIII - International Conference on Innovative Techniques and Applications of Artificial Intelligence,
Editors: Macintosh, Ann; Ellis, Richard; Allen, Tony,
pages 151--164,
- 2005
Objects of interest are represented in the brain simultaneously in different frames of reference. Knowing the positions of ones head
and eyes, for example, one can compute the body-centred position of an object from its perceived coordinates on the retinae. We propose
a simple and fully trained attractor network which computes head-centred coordinates given eye position and a perceived retinal object
position. We demonstrate this system on artificial data and then apply it within a fully neurally implemented control system which visually guides a simulated robot to a table for grasping an object. The integrated system has as input a primitive visual system with a what
where pathway which localises the target object in the visual field. The coordinate transform network considers the visually perceived
object position and the camera pan-tilt angle and computes the target position in a body-centred frame of reference. This position is
used by a reinforcement-trained network to dock a simulated PeopleBot robot at a table for reaching the object. Hence, neurally computing coordinate transformations by an attractor network has biological relevance and technical use for this important class of
computations.
@InProceedings{WMEW05, author = {Weber, Cornelius and Muse, David and Elshaw, Mark I. and Wermter, Stefan}, title = {A Camera-Direction Dependent Visual-Motor Coordinate Transformation for a Visually Guided Neural Robot}, booktitle = {Applications and Innovations in Intelligent Systems XIII - International Conference on Innovative Techniques and Applications of Artificial Intelligence}, editors = {Macintosh, Ann; Ellis, Richard; Allen, Tony}, number = {}, volume = {}, pages = {151--164}, year = {2005}, month = {}, publisher = {Springer}, doi = {}, }