Broadcasted Residual Learning for Efficient Keyword Spotting

8 Jun 2021  ·  Byeonggeun Kim, Simyung Chang, Jinkyu Lee, Dooyong Sung ·

Keyword spotting is an important research field because it plays a key role in device wake-up and user interaction on smart devices. However, it is challenging to minimize errors while operating efficiently in devices with limited resources such as mobile phones. We present a broadcasted residual learning method to achieve high accuracy with small model size and computational load. Our method configures most of the residual functions as 1D temporal convolution while still allows 2D convolution together using a broadcasted-residual connection that expands temporal output to frequency-temporal dimension. This residual mapping enables the network to effectively represent useful audio features with much less computation than conventional convolutional neural networks. We also propose a novel network architecture, Broadcasting-residual network (BC-ResNet), based on broadcasted residual learning and describe how to scale up the model according to the target device's resources. BC-ResNets achieve state-of-the-art 98.0% and 98.7% top-1 accuracy on Google speech command datasets v1 and v2, respectively, and consistently outperform previous approaches, using fewer computations and parameters. Code is available at https://github.com/Qualcomm-AI-research/bcresnet.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Keyword Spotting Google Speech Commands BC-ResNet-8 Google Speech Commands V1 12 98.0 # 2
Google Speech Commands V2 12 98.7 # 1

Methods