DocumentCode
3605449
Title
New Twin Crossbar Architecture of Binary Memristors for Low-Power Image Recognition With Discrete Cosine Transform
Author
Son Ngoc Truong ; SangHak Shin ; Sang-Don Byeon ; JaeSang Song ; Kyeong-sik Min
Author_Institution
Sch. of Electr. Eng., Kookmin Univ., Seoul, South Korea
Volume
14
Issue
6
fYear
2015
Firstpage
1104
Lastpage
1111
Abstract
In this paper, we propose a new twin crossbar architecture of binary memristors for low-power image recognition. In the new twin crossbar, we use two identical memristor arrays instead of using the previous complementary memristor arrays of M+ and M-. Thereby, we can apply the discrete cosine transform (DCT) algorithm to reduce the number of low-resistance state (LRS) cells in the two identical M+ arrays. With the reduced number of LRS cells in two M+ arrays, the power consumption in the crossbar can be significantly saved compared to the previous complementary crossbar that is not suitable to DCT. When the number of discarded coefficients in the DCT matrix is 56.25%, 67.19%, 76.56%, and 84.38%, the power consumption of the new twin crossbar is reduced by 51.7%, 61.3%, 69.9%, and 77.4%, respectively, compared to the previous complementary one.
Keywords
discrete cosine transforms; image processing equipment; image recognition; low-power electronics; memristors; binary memristor; complementary memristor arrays; discrete cosine transform; low-power image recognition; power consumption reduction; twin crossbar architecture; Discrete cosine transforms; Image recognition; Memristors; Neuromorphic engineering; Power demand; Signal to noise ratio; Binary memristors; Twin crossbar; binary memristors; complementary crossbar; discrete cosine transform; low-power image recognition; twin crossbar;
fLanguage
English
Journal_Title
Nanotechnology, IEEE Transactions on
Publisher
ieee
ISSN
1536-125X
Type
jour
DOI
10.1109/TNANO.2015.2473666
Filename
7243350
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