At-scale evaluation of weight clustering to enable energy-efficient object detection

Journal of Systems Architecture(2022)

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摘要
Accelerators implementing Deep Neural Networks (DNNs) for image-based object detection operate on large volumes of data due to fetching images and neural network parameters, especially if they need to process video streams, hence with high power dissipation and bandwidth requirements to fetch all those data. While some solutions exist to mitigate power and bandwidth demands for data fetching, they are often assessed in the context of limited evaluations with a scale much smaller than that of the target application, which challenges finding the best tradeoff in practice.
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关键词
Embedded systems,Energy efficiency,Neural network application,Autonomous driving
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