A Low-Power Convolutional Neural Network Face Recognition Processor and a CIS Integrated With Always-on Face Detector

Autor: Hoi-Jun Yoo, Changhyeon Kim, Kyeongryeol Bong, Donghyeon Han, Sungpill Choi
Rok vydání: 2018
Předmět:
Zdroj: IEEE Journal of Solid-State Circuits. 53:115-123
ISSN: 1558-173X
0018-9200
DOI: 10.1109/jssc.2017.2767705
Popis: A Low-power convolutional neural network (CNN)-based face recognition system is proposed for the user authentication in smart devices. The system consists of two chips: an always-on CMOS image sensor (CIS)-based face detector (FD) and a low-power CNN processor. For always-on FD, analog–digital Hybrid Haar-like FD is proposed to improve the energy efficiency of FD by 39%. For low-power CNN processing, the CNN processor with 1024 MAC units and 8192-bit-wide local distributed memory operates at near threshold voltage, 0.46 V with 5-MHz clock frequency. In addition, the separable filter approximation is adopted for the workload reduction of CNN, and transpose-read SRAM using 7T SRAM cell is proposed to reduce the activity factor of the data read operation. Implemented in 65-nm CMOS technology, the $3.30 \times 3.36$ mm2 CIS chip and the $4 \times 4$ mm2 CNN processor consume 0.62 mW to evaluate one face at 1 fps and achieved 97% accuracy in LFW dataset.
Databáze: OpenAIRE