Pushing the AI envelope: merging deep networks to accelerate edge artificial intelligence in consumer electronics devices and systems
Date
2018-02-08Author
Bazrafkan, Shabab
Corcoran, Peter
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Bazrafkan, S., & Corcoran, P. M. (2018). Pushing the AI Envelope: Merging Deep Networks to Accelerate Edge Artificial Intelligence in Consumer Electronics Devices and Systems. IEEE Consumer Electronics Magazine, 7(2), 55-61. doi: 10.1109/MCE.2017.2775245
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Abstract
Deep neural networks (DNNs) are widely used by both academic and industry researchers to solve many long-standing problems in machine learning. There has been such a growth of research in this field, and it has been applied to so many varying problems, that it would be accurate to say that we may be living through the precursor of the singularity [1]. But regardless of one's views on artificial intelligence (AI), there is no doubt that there is a wealth of recent research that leverages the use of various DNNs to solve a broad range of pattern recognition and classification problems. Examples range from the introduction of smart speakers with intelligent assistants to the application of DNNs to solve recalcitrant problems in computer vision for autonomous vehicles. Many of these problems can have very useful applications in the design of smarter consumer electronics (CE) systems and devices. The question for CE engineers is how to leverage this wealth of academic and industry research efforts, turning them into practical DNN solutions suitable for deployment in practical devices and electronic systems.