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Studies of Information Coding in the Auditory Nerve Laurel H. Carney Syracuse University Institute for Sensory Research Departments of Biomedical & Chemical Engineering and Electrical Engineering & Computer Science Physiology Psychophysics Modeling

Studies of Information Coding in the Auditory Nerve

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Physiology. Modeling. Psychophysics. Studies of Information Coding in the Auditory Nerve. Laurel H. Carney Syracuse University Institute for Sensory Research Departments of Biomedical & Chemical Engineering and Electrical Engineering & Computer Science. Outline. - PowerPoint PPT Presentation

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Page 1: Studies of Information Coding  in the Auditory Nerve

Studies of Information Coding in the Auditory Nerve

Laurel H. Carney Syracuse University

Institute for Sensory ResearchDepartments of Biomedical & Chemical Engineering and

Electrical Engineering & Computer Science

Physiology PsychophysicsModeling

Page 2: Studies of Information Coding  in the Auditory Nerve

Outline• Background - Siebert’s Analytical Studies of Coding in the Auditory-Nerve

– Rate-Place(frequency) Model

– All-Information Model (Temporal & Rate cues)

• Extending the approach with Computation

• Examples:

– Freq. Discrimination (tones)

– “Formant” Freq. Discrimination

– Level Discrimination (tones)

• From Ideal Observers to more ‘Realistic’ Models:

– Coincidence Detectors for Level Decoding that combine Rate & Temporal

Information

Page 3: Studies of Information Coding  in the Auditory Nerve

Coding of Sound in Auditory Nerve:Tuning Curves suggest a “Rate vs. Place” code

But…..(After Kiang)

Page 4: Studies of Information Coding  in the Auditory Nerve

Saturation of rate is a problem for the rate-place encoding scheme

Rate is not adequate to encode stimulus energy at the fiber’s CF.

Note: as Rate ’s, Variability ’s

Page 5: Studies of Information Coding  in the Auditory Nerve

Additional information is present

in the timing of

AN responses

Page 6: Studies of Information Coding  in the Auditory Nerve

Siebert (‘68,‘70): Can the Limits of Human Perception for Frequency and Level be explained by basic properties of Auditory-Nerve responses?

Log Frequency

dB S

PL - Analytical model

- Simple tuning; Place map

- Saturating rate-level functions

- Steady-state responses

- Phaselocking included (results limited to low freqs)

- Random nature of AN responses described by Non-homogeneous Poisson process

Page 7: Studies of Information Coding  in the Auditory Nerve

(from Heinz et al., 2001, Neural Computation)

Siebert’s Approach Applied to Frequency Discrimination

Page 8: Studies of Information Coding  in the Auditory Nerve

Use of Cramer-Rao Bound to estimate jnd

[1/ variance] can be summed over population of fibers (assuming independence between fibers)

Discrimination Threshold, or Just-Noticeable Difference (jnd), corresponds to difference in parameter of interest that equals standard deviation.

Lower Bound on variance of frequency estimate [based on r(t)] depends on rate (Poisson assumption) and on partial derivative of rate w.r.t. parameter of interest

Page 9: Studies of Information Coding  in the Auditory Nerve

Comparison of Siebert’s Predictions to Human Performance: Frequency Discrimination

Rate-Place

All-Info

Rate-Place

All-Info

(after Heinz et al., 2001, Neural Computation)

Page 10: Studies of Information Coding  in the Auditory Nerve

Siebert’s (‘68,’70) results suggest Rate-Place model for Human Frequency Discrimination at low frequencies.

But Frequency discrimination gets Worse at High Freqs, and Rate-Place model doesn’t !

- Siebert’s analysis was limited by simple peripheral model.

- Can extend the approach using a Computational Model for AN fibers (Heinz et al., 2001) :

-Allows phase-locking to rolloff accurately vs. Freq.

Does a more complete AN model change our conclusion?

Rate-Place

All-Info

Page 11: Studies of Information Coding  in the Auditory Nerve

Detailed AN response properties included in

Computational AN model:

- Phase-locking

- Onset/offsets

Page 12: Studies of Information Coding  in the Auditory Nerve

Comparison of Siebert’s Predictions to Human Performance: Frequency Discrimination

Rate-Place

All-Info

Rate-Place

All-Info

(after Heinz et al., 2001, Neural Computation)

Page 13: Studies of Information Coding  in the Auditory Nerve

Summary of Heinz et al.’s results:

• All-Info model matches trends in Human data, for Frequency (and Level) Discrimination.• Rate-Place model can’t explain Freq Discrim at high freqs.• But, Thresholds of Optimal model are too low.

Optimal models help identify cues that are consistent with overall performance of listeners.

More realistic (sub-optimal) processing mechanisms will have elevated thresholds that do a better job of predicting both the trends and absolute thresholds of human performance.

Page 14: Studies of Information Coding  in the Auditory Nerve

Extension of Siebert/Heinz approach to Complex Stimuli

• Modeling Discrimination of Center Frequency of Formant-like Harmonic Complexes (Tan & Carney, JASA, 2005)

Page 15: Studies of Information Coding  in the Auditory Nerve

Results for Human Listeners (Lyzenga & Horst, 1995)

Center Frequency (Hz)

Lowest thresholds are for Center Freqs between Harmonics

Highest thresholds are for Center Freqs at Harmonic freqs

Energy-based model predicts the opposite

Center Freq Discrim JNDs for 3 spectral slopes

Page 16: Studies of Information Coding  in the Auditory Nerve

AN Models require Timing Info to Predict correct Threshold Trends

AN Population Model Predictions

AN Model based on Timing Info in Small # of Fibers Provides Best Predictions

Page 17: Studies of Information Coding  in the Auditory Nerve

• For Harmonic Complexes Timing Information is required to predict trends in human performance

• But, Optimal Detector uses all timing information -

What aspect of ‘timing’ is critical for these results?

• Can use Sub-Optimal Detectors to explore different aspects of timing:

e.g. Across-fiber timing (spatio-temporal patterns) vs. Within-fiber timing patterns (intervals)

Page 18: Studies of Information Coding  in the Auditory Nerve

Level Coding in the Auditory Nerve based on Sub-Optimal Processing: Coincidence-Detection

• Level-dependent tuning of Basilar Membrane results in level-dependent timing of AN responses (Anderson et al., 1971).

• At low frequencies, this neural cue may contribute to level coding over a wide dynamic range.

• At high frequencies, level-dependent gain results in wide dynamic ranges of AN fibers.

• Cross-frequency Coincidence Detection can take advantage of both rate and timing cues.

Page 19: Studies of Information Coding  in the Auditory Nerve

Timing (phase) of AN spikes varies systematically with Level

(Response Area from Anderson et al., 1971, J. Acoust.Soc.Am.)

Page 20: Studies of Information Coding  in the Auditory Nerve

Level-dependent BW, Gain, & Phase are included in computational AN model

Phase

Magnitude

Low SPL

Hi SPL

(Zhang et al., 2001, J. Acoust. Soc. Am.)

Page 21: Studies of Information Coding  in the Auditory Nerve

Phase

Magnitude

Low SPL

Hi SPL

Nonlinear Auditory-Nerve model has:

- Nonlinear timing (dominant @ low Frequencies)

- Wide-dynamic ranges (dominant @ high Frequencies)

(Heinz et al., ARLO, 2001)

Page 22: Studies of Information Coding  in the Auditory Nerve

Coincidence Detector

CDs are sensitive to rate and/or timing!

Page 23: Studies of Information Coding  in the Auditory Nerve

Level Discrimination Predictions based on Coincidence Detection (CD) Model

(Heinz et al., 2001, J. Acoust. Soc. Am.)

1 kHz 10 kHz

Inputs to CD from Nonlinear Computational AN model

Decision variable based on Rate of CD

---Nonlinear Temporal cues important at low frequencies

---Wide-dynamic-range rate-level functions important at high frequencies

Page 24: Studies of Information Coding  in the Auditory Nerve

Conclusions:

• Can quantify info in computational Auditory-Nerve model response and compare to psychophysical performance.

• Combined Rate and Temporal info (“All-Info”) explains trends in listeners across a wide range of tone frequencies and levels, and for harmonic complex freq discrim task.

• Coincidence Detection (CD) is a simple mechanism for decoding Temporal and/or Rate info.

• CD is consistent with trends & absolute thresholds of Human Performance for Level Discrimination.

• CD does not explain performance in Harmonic Complex task. Prelim results suggest that an interval-based strategy to coding Instantaneous Frequency or a modulation-based strategy are more promising.

Page 25: Studies of Information Coding  in the Auditory Nerve

Collaborators:Michael Heinz - PhD 2000, HST-MIT; now at Hopkins

Steve Colburn - Dept. of Biomedical Engr., Boston University

Qing Tan - PhD, 2003 Boston University

• Supported by NIH-NIDCD, NSF, & The Gerber Fund

•NOTE: Code and papers are available at:

http://web.syr.edu/~lacarney/