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Biological Cybernetics By: Jay Barra Sean Cain Biological Cybernetics • An interdisciplinary medium for experimental, theoretical and applicationoriented aspects of information processing in organisms. • Sensory, motor, cognitive, and ecological phenomena • Experimental studies of biological systems Biological Cybernetics • Topics Covered: • Experimental studies of biological systems • Quantitative modeling • Computational, technical, or theoretical studies • Understanding biological information processing • Artificial implementation of biological information processing and self-organizing principles Biological Cybernetics • Performance and Function of systems: • Communication between life sciences and technical or theoretical disciplines • Neural Interactions a specific interest Coupled Van der Pol Oscillators - A model of excitatory and inhibitory neural interactions • Relate basic neural activities on the cellular level to: • The various observed electroencephalograms (EEG) • Potential differences in the cortex • Interactions between and within excitatory and inhibitory neurons • Modeled by Wilson and Cowan • EEG phenomena studied in relation to such models • Simple models explaining the rhythmicity of the EEG • Based on Wilson and Cowan model • A feedback loop through a third set of neurons – Lopes da Silva et al. • Positive and negative feedback loops with two excitatory and one inhibitory subsets of neurons – Zetterberg et al. Coupled Van der Pol Oscillators • Van der Pol Oscillators: • Mutually coupled relaxation oscillators • Done as a mathematical model for the electrical activity of the human and animal gastro-intestinal tract • Reasonable to model EEG phenomena by a number of coupled oscillators • Distribution of entrained oscillator frequencies can show the peakdip shape of the EEG • Phenomenological mathematical models: • Explain EEG data • Offer a guide for experiments on the EEG Biological Systems • Biological clocks consist of: • A group of interacting oscillators. • Circadian rhythms, biochemical oscillators, pacemaker neurons, etc. • May be related to biological oscillators • Interesting subject in biological systems: • The entrainment of oscillators under periodic forces • The entrainment of a number of interacting oscillators Biological Systems • Apart from biological systems • Nonlinear circuit theory • Can be combined with biological systems for a better understanding of EEG phenomena • Relation of physiological parameters to the coefficients in the circuits Study Conclusions • Hope to further the understanding of very generalized cortex-like tissue in conjunction with the EEG phenomena System-Theoretical Analysis of the Clare Bishop Area (CBA) in the Cat • Clare Bishop Area: • Retinotypically organized cortical area of the cat brain • Connected to a great variety of visual areas in a very complex way Experimental Analysis • Difficult because: • The greater the distance from the retina, the more specific the signal combinations necessary to analyze the system become • Feedback loops cannot be opened, unequivocal identification of CBA cell properties is impossible • Nonlinear character has a great influence on signal processing Experimental Analysis • Circumvent Difficulties: • Specific signal combinations have been developed, being restricted to: • Deterministic and stochastic signals • Determination of a number of cell properties • Hypotheses on the function of the CBA are tested Conclusions • Only moving stimuli produce responses • Reaction of Cells: • Direction specific • Prefer the extrafoveal direction • Systems existent in the CBA: • Have different behavior for: • Space • Time • Amplitude Study Conclusions • CBA primary task: • Orientation • Exact localization of objects independent of velocity • Treatment of objects in relation to background stimuli Cybernetics of Limb Movement • Determine stresses on joints during motion • Neural planing involved in mapping spatial planning to move joint to new position • Example, hand reaches for an apple • Hand is the extension, upper arm and fore arm movements are automtically mapped Computations in controlling movement • Joint Torque • Masses of individual segments • Effects of gravity and momentum Conclusions • Normal straight line motion of joints involves – Compensation for dynamic interaction at each joint segment Information Content of Texture Gradients • Information gradients determine responses in stimuli sensory systems – Hairs on the back of the hand • Touching one hair may not be felt, touching three will Visual gradients • Non-linear distribution gives interpretation of horizons in a 2D image – This is why perspective works in drawings Visual Gradients Clear Horizon Horizon diminishes Thresholds for activation • • • • Affected by regularity of the information gradient Global Uniformity Shape containing the pattern Foreshortening (perspective) Pattern types • Locally regular and globally uniform – • Locally regular but globally varying – • Waves on a lake Locally irregular but globally uniform – • Field of flowers, cars in parking lot Field of rocks, boulders and pebbles Locally irregular and globally varying Works Cited • System-Theoretical Analysis of the Clare Bishop Area in the Cat. Jensen H.J. Springer-Verlag Biological Cybernetics 39 53-66 (1980). • Coupled Van der Pol Oscillators – A model of Excitatory and Inhibitory Neural Interactions. Kawahara, Takuji. Springer-Verlag. Biological Cybernetics 39, 37-43 (1980). • Dynamic Interactions between Limb Segments During Planar Arm Movement, S. Kemmerling, D. Varju, Biological Cybernetics 44 67-77 (1982) • The Information Content of Texture Gradients, Steven, Kent, Biological Cybernetics 42 95-105(1981)