Peterson, 2021 - Google Patents
A biologically inspired supervised learning rule for audio classification with spiking neural networksPeterson, 2021
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- 18284517799406156187
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- Peterson D
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Audio classification has many practical applications such as noise pollution monitoring, wildlife monitoring, audio surveillance, speech recognition, and more. For many of these applications, deploying classifiers on low powered devices for persistent monitoring is …
- 230000001537 neural 0 title abstract description 10
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