Abstract:
Deep learning neural networks have achieved success in a large number of visual processing tasks and are currently utilized for many real-world applications like image se...Show MoreMetadata
Abstract:
Deep learning neural networks have achieved success in a large number of visual processing tasks and are currently utilized for many real-world applications like image search and speech recognition among others. However, in spite of achieving high accuracy in such classification problems, they involve significant computational resources. Over the past few years, artificial neural network models have evolved into the biologically realistic and event-driven spiking neural networks. Recent research efforts have been directed at developing mechanisms to convert traditional deep artificial nets to spiking nets where the neurons communicate by means of spikes. However, there have been limited studies providing insights on the specific power, area and energy benefits offered by deep spiking neural nets in comparison to their non-spiking counterparts. In this paper, we perform a case study for a hardware implementation of a spiking/non-spiking deep net on the MNIST dataset and clearly outline the design prospects involved in implementing neural computing platforms in the spiking mode of operation.
Date of Conference: 24-29 July 2016
Date Added to IEEE Xplore: 03 November 2016
ISBN Information:
Electronic ISSN: 2161-4407
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Deep Network ,
- Deep Neural Network ,
- Energy Benefits ,
- Special Session Paper ,
- Deep Learning ,
- Artificial Neural Network ,
- Speech Recognition ,
- Artificial Neural Network Model ,
- Spiking Neural Networks ,
- Image Retrieval ,
- Hardware Implementation ,
- MNIST Dataset ,
- Neural Net ,
- Neural Computation ,
- Recent Research Efforts ,
- Time Step ,
- Classification Accuracy ,
- Convolutional Layers ,
- Power Consumption ,
- Firing Rate ,
- Firing Probability ,
- Deep Layer Neurons ,
- Synaptic Weights ,
- Sparse Representation ,
- High Latency ,
- Spike Trains ,
- Hardware Level ,
- Acceptable Accuracy ,
- Output Neurons
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Deep Network ,
- Deep Neural Network ,
- Energy Benefits ,
- Special Session Paper ,
- Deep Learning ,
- Artificial Neural Network ,
- Speech Recognition ,
- Artificial Neural Network Model ,
- Spiking Neural Networks ,
- Image Retrieval ,
- Hardware Implementation ,
- MNIST Dataset ,
- Neural Net ,
- Neural Computation ,
- Recent Research Efforts ,
- Time Step ,
- Classification Accuracy ,
- Convolutional Layers ,
- Power Consumption ,
- Firing Rate ,
- Firing Probability ,
- Deep Layer Neurons ,
- Synaptic Weights ,
- Sparse Representation ,
- High Latency ,
- Spike Trains ,
- Hardware Level ,
- Acceptable Accuracy ,
- Output Neurons