Signal-to-event encoding parameter selection for multiple event classification with spiking neural networks
Mateusz Pabian, Dominik Rzepka, Mirosław Pawlak, Marek Miśkowicz, Ryszard Sroka

TL;DR
This paper introduces a method to optimize event-based signal encoding for machine learning models, achieving high accuracy with fewer data samples.
Contribution
A model-agnostic method for selecting optimal signal-to-event encoding parameters using Bayesian optimization and k-NN classification.
Findings
The proposed encoding parameter selection achieves up to 91.2% accuracy with 97.8% fewer samples than traditional methods.
Spiking neural networks trained on optimized encoding parameters reach up to 94.6% classification accuracy.
The method is validated using vehicle monitoring data with three encoding schemes.
Abstract
Event-driven systems can operate either on discrete-time event streams or on analog signals transformed into the event domain by a predefined encoding scheme. This paper studies the problem of optimal event-based signal encoding if data are to be processed by a machine learning model, such as the spiking neural network (SNN). We introduce a method of encoding parameter selection that evaluates a k-Nearest Neighbor (k-NN) classifier operating on a measure of the event stream distance in multiple trials of a Bayesian optimization process. The efficiency of the proposed method is assessed by relating the classification performance with the number of events produced by a signal-to-event encoding scheme. The proposed method is validated for vehicle monitoring sensor data with three event-based encoding schemes: level-crossing encoding, send-on-delta, and leaky integrate-and-fire encoder. The…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Advanced Chemical Sensor Technologies · Neural Networks and Applications
