Small-footprint Spiking Neural Networks for Power-efficient Keyword Spotting

Author(s):  
Bruno U. Pedroni ◽  
Sadique Sheik ◽  
Hesham Mostafa ◽  
Somnath Paul ◽  
Charles Augustine ◽  
...  
Author(s):  
Daniel Auge ◽  
Julian Hille ◽  
Etienne Mueller ◽  
Alois Knoll

AbstractBiologically inspired spiking neural networks are increasingly popular in the field of artificial intelligence due to their ability to solve complex problems while being power efficient. They do so by leveraging the timing of discrete spikes as main information carrier. Though, industrial applications are still lacking, partially because the question of how to encode incoming data into discrete spike events cannot be uniformly answered. In this paper, we summarise the signal encoding schemes presented in the literature and propose a uniform nomenclature to prevent the vague usage of ambiguous definitions. Therefore we survey both, the theoretical foundations as well as applications of the encoding schemes. This work provides a foundation in spiking signal encoding and gives an overview over different application-oriented implementations which utilise the schemes.


Author(s):  
Yu Qi ◽  
Jiangrong Shen ◽  
Yueming Wang ◽  
Huajin Tang ◽  
Hang Yu ◽  
...  

Spiking neural networks (SNNs) are considered to be biologically plausible and power-efficient on neuromorphic hardware. However, unlike the brain mechanisms, most existing SNN algorithms have fixed network topologies and connection relationships. This paper proposes a method to jointly learn network connections and link weights simultaneously. The connection structures are optimized by the spike-timing-dependent plasticity (STDP) rule with timing information, and the link weights are optimized by a supervised algorithm. The connection structures and the weights are learned alternately until a termination condition is satisfied. Experiments are carried out using four benchmark datasets. Our approach outperforms classical learning methods such as STDP, Tempotron, SpikeProp, and a state-of-the-art supervised algorithm. In addition, the learned structures effectively reduce the number of connections by about 24%, thus facilitate the computational efficiency of the network.


2020 ◽  
Author(s):  
Emre Yılmaz ◽  
Özgür Bora Gevrek ◽  
Jibin Wu ◽  
Yuxiang Chen ◽  
Xuanbo Meng ◽  
...  

Author(s):  
Sercan Ö. Arık ◽  
Markus Kliegl ◽  
Rewon Child ◽  
Joel Hestness ◽  
Andrew Gibiansky ◽  
...  

2012 ◽  
Vol 35 (12) ◽  
pp. 2633 ◽  
Author(s):  
Xiang-Hong LIN ◽  
Tian-Wen ZHANG ◽  
Gui-Cang ZHANG

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