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LCNN: Lookup-Based Convolutional Neural Network

机译:LCNN:基于查找的卷积神经网络

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Porting state of the art deep learning algorithms to resource constrained compute platforms (e.g. VR, AR, wearables) is extremely challenging. We propose a fast, compact, and accurate model for convolutional neural networks that enables efficient learning and inference. We introduce LCNN, a lookup-based convolutional neural network that encodes convolutions by few lookups to a dictionary that is trained to cover the space of weights in CNNs. Training LCNN involves jointly learning a dictionary and a small set of linear combinations. The size of the dictionary naturally traces a spectrum of trade-offs between efficiency and accuracy. Our experimental results on ImageNet challenge show that LCNN can offer 3.2x speedup while achieving 55.1% top-1 accuracy using AlexNet architecture. Our fastest LCNN offers 37.6x speed up over AlexNet while maintaining 44.3% top-1 accuracy. LCNN not only offers dramatic speed ups at inference, but it also enables efficient training. In this paper, we show the benefits of LCNN in few-shot learning and few-iteration learning, two crucial aspects of on-device training of deep learning models.
机译:艺术深度学习算法的移植状态为资源受限计算平台(例如,VR,AR,可穿戴物)非常具有挑战性。我们为卷积神经网络提出了一种快速,紧凑,准确的模型,可实现高效的学习和推理。我们介绍LCNN,一种基于查找的卷积神经网络,其将卷积少量查找到被培训的字典中覆盖CNN中的权重空间。培训LCNN涉及联合学习字典和一小组线性组合。字典的大小自然地追踪效率和准确性之间的频谱。我们对Imagenet挑战的实验结果表明,LCNN可以提供3.2倍的加速,同时使用AlexNet架构实现55.1 %Top-1精度。我们最快的LCNN提供37.6倍的速度超过AlexNet,同时保持44.3 %Top-1精度。 LCNN不仅在推理提供了戏剧性的速度,而且还可以实现高效的培训。在本文中,我们展示了LCNN在几次学习和少数迭代学习中的好处,对深层学习模型的设备培训的两个关键方面。

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