14.6 A 0.62mW ultra-low-power convolutional-neural-network face-recognition processor and a CIS integrated with always-on haar-like face detector.

ISSCC(2017)

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摘要
Recently, face recognition (FR) based on always-on CIS has been investigated for the next-generation UI/UX of wearable devices. A FR system, shown in Fig. 14.6.1, was developed as a life-cycle analyzer or a personal black box, constantly recording the people we meet, along with time and place information. In addition, FR with always-on capability can be used for user authentication for secure access to his or her smart phone and other personal systems. Since wearable devices have a limited battery capacity for a small form factor, extremely low power consumption is required, while maintaining high recognition accuracy. Previously, a 23mW FR accelerator [1] was proposed, but its accuracy was low due to its hand-crafted feature-based algorithm. Deep learning using a convolutional neural network (CNN) is essential to achieve high accuracy and to enhance device intelligence. However, previous CNN processors (CNNP) [2–3] consume too much power, resulting in u003c10 hours operation time with a 190mAh coin battery.
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关键词
ultra-low-power convolutional-neural-network face-recognition processor,CIS,always-on Haar-like face detector,next-generation UI-UX,wearable devices,life-cycle analyzer,personal black box,user authentication,personal systems,battery capacity,power consumption,FR accelerator,hand-crafted feature-based algorithm,deep learning,convolutional neural network,device intelligence,CNN processors,CNNP,power 0.62 mW
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