Application based Evaluation of an Efficient Spike-Encoder, "Spiketrum"
MHD Anas Alsakkal, Runze Wang, Jayawan Wijekoon, and Huajin Tang

TL;DR
This paper introduces Spiketrum, an efficient spike-encoder that compresses data for neural applications, demonstrating superior performance and low power consumption compared to existing encoders in hardware and software benchmarks.
Contribution
The paper presents Spiketrum, a novel spike-encoder with adaptable hardware/software implementation, offering high accuracy, efficiency, and lossless signal reconstruction for neural data processing.
Findings
Spiketrum outperforms state-of-the-art encoders in classification accuracy.
It demonstrates low power consumption and efficient hardware resource utilization.
Spiketrum achieves high compression quality and supports both spiking and non-spiking classifiers.
Abstract
Spike-based encoders represent information as sequences of spikes or pulses, which are transmitted between neurons. A prevailing consensus suggests that spike-based approaches demonstrate exceptional capabilities in capturing the temporal dynamics of neural activity and have the potential to provide energy-efficient solutions for low-power applications. The Spiketrum encoder efficiently compresses input data using spike trains or code sets (for non-spiking applications) and is adaptable to both hardware and software implementations, with lossless signal reconstruction capability. The paper proposes and assesses Spiketrum's hardware, evaluating its output under varying spike rates and its classification performance with popular spiking and non-spiking classifiers, and also assessing the quality of information compression and hardware resource utilization. The paper extensively benchmarks…
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Taxonomy
TopicsNeural Networks and Applications · Modular Robots and Swarm Intelligence
