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A Dependency Capturing Code for Robust Object Representation

Authors :
Raj, Rishabh
Dahlen, Dar
Duyck, Kyle
Yu, C. Ron
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

The brain has a remarkable ability to recognize objects from noisy or corrupted sensory inputs. How this cognitive robustness is achieved computationally remains unknown. We present a coding paradigm, which encodes structural dependence among features of the input and transforms various forms of the same input into the same representation. The paradigm, through dimensionally expanded representation and sparsity constraint, allows redundant feature coding to enhance robustness and is efficient in representing objects. We demonstrate consistent representations of visual and olfactory objects under conditions of occlusion, high noise or with corrupted coding units. Robust face recognition is achievable without deep layers or large training sets. The paradigm produces both complex and simple receptive fields depending on learning experience, thereby offers a unifying framework of sensory processing. One line abstract We present a framework of efficient coding of objects as a combination of structurally dependent feature groups that is robust against noise and corruption.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.sharebioRxiv..816d9b6967a200bed77da0f3a8c90afb
Full Text :
https://doi.org/10.1101/662130