Median Binary-Connect Method and a Binary Convolutional Neural Nework for Word Recognition

Abstract

We propose and study a new projection formula for training binary weight convolutional neural networks. The projection formula measures the error in approximating a full precision (32 bit) vector by a 1-bit vector in the l1 norm instead of the standard l2 norm. The l1 projector is in closed analytical form and involves a median computation instead of an arithmatic average in the l2 projector. Experiments on 10 keywords classification show that the l1 (median) BinaryConnect (BC) method outperforms the regular BC, regardless of cold or warm start. The binary network trained by median BC and a recent blending technique reaches test accuracy 92.4%, which is 1.1% lower than the full-precision network accuracy 93.5%. On Android phone app, the trained binary network doubles the speed of full-precision network in spoken keywords recognition.

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