Implicit Learning in 3D Object Recognition: The Importance of Temporal Context
Abstract
A novel architecture and set of learning rules for cortical self-organization is proposed. The model is based on the idea that multiple information channels can modulate one another's plasticity. Features learned from bottom-up information sources can thus be influenced by those learned from contextual pathways, and vice versa. A maximum likelihood cost function allows this scheme to be implemented in a biologically feasible, hierarchical neural circuit. In simulations of the model, we first demonstrate the utility of temporal context in modulating plasticity. The model learns a representation that categorizes people's faces according to identity, independent of viewpoint, by taking advantage of the temporal continuity in image sequences. In a second set of simulations, we add plasticity to the contextual stream and explore variations in the architecture. In this case, the model learns a two-tiered representation, starting with a coarse view-based clustering and proceeding to a finer clustering of more specific stimulus features. This model provides a tenable account of how people may perform 3D object recognition in a hierarchical, bottom-up fashion.
Cite
Text
Becker. "Implicit Learning in 3D Object Recognition: The Importance of Temporal Context." Neural Computation, 1999. doi:10.1162/089976699300016683Markdown
[Becker. "Implicit Learning in 3D Object Recognition: The Importance of Temporal Context." Neural Computation, 1999.](https://mlanthology.org/neco/1999/becker1999neco-implicit/) doi:10.1162/089976699300016683BibTeX
@article{becker1999neco-implicit,
title = {{Implicit Learning in 3D Object Recognition: The Importance of Temporal Context}},
author = {Becker, Suzanna},
journal = {Neural Computation},
year = {1999},
pages = {347-374},
doi = {10.1162/089976699300016683},
volume = {11},
url = {https://mlanthology.org/neco/1999/becker1999neco-implicit/}
}