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LiCo-Net: Linearized Convolution Network for Hardware-efficient Keyword Spotting

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arxiv 2211.04635 v1 pith:4NK4IJ6S submitted 2022-11-09 cs.LG cs.AIeess.AS

LiCo-Net: Linearized Convolution Network for Hardware-efficient Keyword Spotting

classification cs.LG cs.AIeess.AS
keywords lico-netoperatorsconvolutionefficiencyefficienthardwarehardware-efficientint8
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This paper proposes a hardware-efficient architecture, Linearized Convolution Network (LiCo-Net) for keyword spotting. It is optimized specifically for low-power processor units like microcontrollers. ML operators exhibit heterogeneous efficiency profiles on power-efficient hardware. Given the exact theoretical computation cost, int8 operators are more computation-effective than float operators, and linear layers are often more efficient than other layers. The proposed LiCo-Net is a dual-phase system that uses the efficient int8 linear operators at the inference phase and applies streaming convolutions at the training phase to maintain a high model capacity. The experimental results show that LiCo-Net outperforms single-value decomposition filter (SVDF) on hardware efficiency with on-par detection performance. Compared to SVDF, LiCo-Net reduces cycles by 40% on HiFi4 DSP.

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