Low Power Dendritic Computation for Wordspotting

oleh: Stephen Nease, Jennifer Hasler, Shubha Ramakrishnan, Scott Koziol, Suma George

Format: Article
Diterbitkan: MDPI AG 2013-05-01

Deskripsi

In this paper, we demonstrate how a network of dendrites can be used to build the state decoding block of a wordspotter similar to a Hidden Markov Model (HMM) classifier structure. We present simulation and experimental data for a single line dendrite and also experimental results for a dendrite-based classifier structure. This work builds on previously demonstrated building blocks of a neural network: the channel, synapses and dendrites using CMOS circuits. These structures can be used for speech and pattern recognition. The computational efficiency of such a system is >10 MMACs/μW as compared to Digital Systems which perform 10 MMACs/mW.