Looking Inside the Blackbox Anatomies of Real and Imaginary Neural Networks
Overview
The ‘Real’ portion is represented by exploiting Striatal Beat Frequencies in an EEG with the patented Single-Period Single-Frequency (SPSF) method and the ‘Imaginary’ is represented by a convolutional neural network transformed into bi-directional associative memory matrices. We demonstrated that we could interconnect, i.e., bridge, the intermediate layers of two broken CNNs both of which were trained for object detection and still make a good prediction. In this work we will use a dual sensory CNN implementation of speech and object detection and we will incorporate Neural Decoding into the EEG SPSF method to emulate how to circumvent the broken neural networks in a human-computer interface situation.
Speaker:
Dr. James LaRue has been a scientist/consultant for over 20 years. He has multiple publications. He earned his PhD in Engineering/Applied Science from University of New Orleans in 2003. He got his Masters in Math from Tulane University in 1995. He got his BA in Math/Education in 1992.But it all started out with an AAS in Instrumentation Electronics Technology at Monroe Community College, Rochester, NY in 1979.
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Highlights
- 2 hours
- Online
Location
Online event
Organized by
Washington DC Quantum Computing Meetup
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