A 141.4 mW Low-Power Online Deep Neural Network Training Processor for Real-time Object Tracking in Mobile Devices

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A low-power online deep neural network (DNN) training processor is proposed for a real-time object tracking in mobile devices. For a real-time object tracking, a homogeneous core architecture is proposed to achieve 1.33 x higher throughput than previous DNN training processor. To reduce the external memory access (EMA), a binary feedback alignment (BFA) algorithm and an integral run-length compression (iRLC) decoder are proposed. While the BFA reduces the EMA by 11.4% compared to the conventional back-propagation approach, the iRLC decoder achieves 29.7% EMA reduction without throughput degradation. Finally, a dropout controller is proposed and achieves 43.9% power reduction through clock-gating. Implemented with 65 nm CMOS technology, the 4.4 mm(2) DNN training processor achieves 141.1 mW power consumption at 30.4 frames-per-second (fps) real-time object tracking in mobile devices.
Publisher
IEEE International Symposium on Circuits & Systems
Issue Date
2018-05
Language
English
Citation

IEEE International Symposium on Circuits & Systems

DOI
10.1109/ISCAS.2018.8351398
URI
http://hdl.handle.net/10203/254224
Appears in Collection
EE-Conference Papers(학술회의논문)
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