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arxiv: 1603.06777 · v1 · pith:H2VWCL7Knew · submitted 2016-03-22 · 💻 cs.CV

Energy-Efficient ConvNets Through Approximate Computing

classification 💻 cs.CV
keywords classificationenergyaccuracyalgorithmsapproximatecomputingconsumptionconvnet
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Recently ConvNets or convolutional neural networks (CNN) have come up as state-of-the-art classification and detection algorithms, achieving near-human performance in visual detection. However, ConvNet algorithms are typically very computation and memory intensive. In order to be able to embed ConvNet-based classification into wearable platforms and embedded systems such as smartphones or ubiquitous electronics for the internet-of-things, their energy consumption should be reduced drastically. This paper proposes methods based on approximate computing to reduce energy consumption in state-of-the-art ConvNet accelerators. By combining techniques both at the system- and circuit level, we can gain energy in the systems arithmetic: up to 30x without losing classification accuracy and more than 100x at 99% classification accuracy, compared to the commonly used 16-bit fixed point number format.

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