MobileNets
A class of efficient models named MobileNets was proposed by Howard, et al.[65]. MobileNets are often considered as light weight deep neural networks. They aim to reduce computational cost and make CNN feasible on mobile devices by using depth-wise separable convolutions. Two simple global-hyperparameters were introduced to efficiently tradeoff between latency and accuracy.
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