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arxiv: 1607.02720 · v2 · pith:SD2MKVO3new · submitted 2016-07-10 · 💻 cs.CV

Intra-layer Nonuniform Quantization for Deep Convolutional Neural Network

classification 💻 cs.CV
keywords quantizationnonuniformschemememoryproposedrequiredaccuracybetter
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Deep convolutional neural network (DCNN) has achieved remarkable performance on object detection and speech recognition in recent years. However, the excellent performance of a DCNN incurs high computational complexity and large memory requirement. In this paper, an equal distance nonuniform quantization (ENQ) scheme and a K-means clustering nonuniform quantization (KNQ) scheme are proposed to reduce the required memory storage when low complexity hardware or software implementations are considered. For the VGG-16 and the AlexNet, the proposed nonuniform quantization schemes reduce the number of required memory storage by approximately 50\% while achieving almost the same or even better classification accuracy compared to the state-of-the-art quantization method. Compared to the ENQ scheme, the proposed KNQ scheme provides a better tradeoff when higher accuracy is required.

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