A Fast Network Exploration Strategy to Profile Low Energy Consumption for Keyword Spotting
Keyword Spotting nowadays is an integral part of speech-oriented user interaction targeted for smart devices. To this extent, neural networks are extensively used for their flexibility and high accuracy. However, coming up with a suitable configuration for both accuracy requirements and hardware deployment is a challenge. We propose a regression-based network exploration technique that considers the scaling of the network filters (s) and quantization (q) of the network layers, leading to a friendly and energy-efficient configuration for FPGA hardware implementation. We experiment with different combinations of š©š©āØ q, sā© on the FPGA to profile the energy consumption of the deployed network so that the user can choose the most energy-efficient network configuration promptly. Our accelerator design is deployed on the Xilinx AC 701 platform and has at least 2.1Ć and 4Ć improvements on energy and energy efficiency results, respectively, compared to recent hardware implementations for keyword spotting.
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