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Stochastic Properties of Neural Coincidence Detector cells Ram Krips and Miriam Furst
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TOC Neural Processing Neural Processing Stochastic Analysis Stochastic Analysis Auditory Examples Auditory Examples Boundary Evaluation Boundary Evaluation
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Spiking information Data within the brain travels in the form of neural spiking trains. Data within the brain travels in the form of neural spiking trains. The information is encoded both in the rate and timing of the spiking events. The information is encoded both in the rate and timing of the spiking events. The signal is stochastic in nature The signal is stochastic in nature
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Neural Cells The receivers/processors and transmitters of the spiking information within the brains are the neural cells The receivers/processors and transmitters of the spiking information within the brains are the neural cells Common functionalities associated are: Common functionalities associated are: –Timing analysis –Memory –Signal generation
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Statistical Models of Spiking Behaviour The stochastic behavior of neural cells can be described as NHPP. The stochastic behavior of neural cells can be described as NHPP. Considering the discharge history, a more general form of representation is obtained: self excitatory models such as renewal or doubly stochastic. Considering the discharge history, a more general form of representation is obtained: self excitatory models such as renewal or doubly stochastic.
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NHPP Model Definitions Poisson process is a pure birth process: Poisson process is a pure birth process: In an interval dt only one arrival with probability Number of arrivals N(t) in a finite interval of length t obeys: Number of arrivals N(t) in a finite interval of length t obeys: non-overlapping intervals are independent. The inter arrival times are independent and obey the Exponential distribution: The inter arrival times are independent and obey the Exponential distribution:
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Neural Cells Models I&F SimplificationSimplification MathematicalMathematicalInsight MoreMoreassumptions With regards to the model No mathematicalNo mathematicalUnderstanding Not suited forNot suited for Large scale simulation CD
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Coincidence Detection Cells Coincidence detection (CD) is one of the common ways to describe the functionality of a single neural cell. Coincidence detection (CD) is one of the common ways to describe the functionality of a single neural cell. Correlation Correlation There are several type of such cells: There are several type of such cells: –Excitatory Inhibitory (EI) –Excitatory Excitatory (EE) –Cumulative
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Neural mechanisms – EE Type cells Spikes when inputs coincide. Spikes when inputs coincide.
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EE Formulation
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Neural mechanisms – EI Type cells Spikes with excitatory input unless inhibited. Spikes with excitatory input unless inhibited.
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EI Formulation
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Complex Cells
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Cumulative Type Cells Spikes if the number of excitatory events during exceeds inhibitory by P Spikes if the number of excitatory events during exceeds inhibitory by P
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EI Cells Signal Separation Signal separation ability is considered as most important in tasks such as cocktail party, BMLD. Signal separation ability is considered as most important in tasks such as cocktail party, BMLD.
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EE Cells spontaneous rate The spontaneous rate of cells that results from external noise reduced at higher levels The spontaneous rate of cells that results from external noise reduced at higher levels
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EE Cells Harmonic Signals Enhancement Harmonic signals are most desirable in mammals Harmonic signals are most desirable in mammals
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Neural Networks
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Auditory Lateralization Cues Interaural Time delay – The sound reaches the closest ear before the other Interaural Time delay – The sound reaches the closest ear before the other Interaural Level delay – The sound at the closest ear is louder Interaural Level delay – The sound at the closest ear is louder
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Auditory cues analysis - ITD
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Auditory cues analysis - ILD
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Auditory signals analysis Pitch
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Before going on… We have presented the mathematical building blocks for CD cells and networks analysis We have presented the mathematical building blocks for CD cells and networks analysis Before going on to building networks we will develop another tool that allows us to evaluate the quality of the processor formed: Before going on to building networks we will develop another tool that allows us to evaluate the quality of the processor formed: Bound evaluation
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Overall Localization Performance - MAA Minimal Audible Angle is a common test for evaluating human localization ability. Minimal Audible Angle is a common test for evaluating human localization ability.
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Methodology The first point of stochastic behaviour is at the auditory nerve. The first point of stochastic behaviour is at the auditory nerve. An optimal neural response was considered An optimal neural response was considered
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Ambiguity in Sound Lateralization For 1 kHz, the phase difference between signals arriving at right and left ears is 180 o. It is impossible to distinguish between the possibility of the sound arriving from the right or left speaker. For 1 kHz, the phase difference between signals arriving at right and left ears is 180 o. It is impossible to distinguish between the possibility of the sound arriving from the right or left speaker. Frequency: 1kHz Wavelength: 30cm Head size: 15cm Frequency: 2kHz Wavelength: 15cm Head size: 15cm
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Bounds Evaluation
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MAA evaluation using CRLB and BBLB for NHPP
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Going into the Brain - ITD CRLB for single neuron. CRLB for single neuron.
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Summary Analytical tools for analysis and evaluation of CD cells and networks were introduced. Analytical tools for analysis and evaluation of CD cells and networks were introduced. Validity demonstrated comparing to biological findings Validity demonstrated comparing to biological findings
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