Paper

Neuromorphic Vision Hybrid RRAM-CMOS Architecture

Volume Number:
26
Issue Number:
12
Pages:
Starting page
2816
Ending page
2829
Publication Date:
Publication Date
May 2018

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Abstract

The development of a bioinspired image sensor, which can match the functionality of the vertebrate retina, has provided new opportunities for vision systems and processing through the realization of new architectures. Research in both retinal cellular systems and nanodriven memristive technology has made a challenging arena more accessible to emulate features of the retina that are closer to biological systems. This paper synthesizes the signal flow path of photocurrent throughout a retina in a scalable 180-nm CMOS technology, which initiates at a 128 × 128 active pixel image sensor, and converges to a 16 × 16 array, where each node emits a spike train synonymous to the function of the retinal ganglionic output cell. This signal can be sent to the visual cortex for image interpretation as part of an artificial vision system. Layers of memristive networks are used to emulate the functions of horizontal and amacrine cells in the retina, which average and converge signals. The resulting image matches biologically verified results within an error margin of 6% and exhibits the following features of the retina: lateral inhibition, asynchronous adaptation, and a low-dynamic-range integration active pixel sensor to perceive a high-dynamic-range scene.

Description

J. K. Eshraghian et al., "Neuromorphic Vision Hybrid RRAM-CMOS Architecture," in IEEE Transactions on Very Large Scale Integration (VLSI) Systems, vol. 26, no. 12, pp. 2816-2829, Dec. 2018, doi: 10.1109/TVLSI.2018.2829918.

Country
AUS
Affiliation
University of Western Australia, Australia
IEEE Region
Region 10 (Asia and Pacific)
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