Sensory Encoding

Coding mechanisms & principles

Receptive field

= the field in space and time of the "sensory surface"

Tuning

= the dependency of neuron's response to stimulus features

e.g. Hubel and Wiesel (1962): simple cells

Population coding

Sparse coding

= how many neurons are involved in coding one variable
e.g. grandmother cell (Gross, 2002). = only one neuron ~ complex features => super sparse

Population coding

= more than one neuron are involved in coding one variable

x=fi  pi

Efficient coding

= neural information processing (especially in sensory systems) should be adapted to the environment and input statistics

information theory (Shannon, 1948)

(also check Information theory and Entropy in Neuroscience)
- entropy = sum of information from each message m within an ensemble M
- $$ H(M) = - \sum{p(m)\ log_2\ p(m)} $$
- most efficient = maximal entropy = all messages are equally likely = M is an uniform distribution
- mutual information = redundancy between A and B
- conditional entropy
- $$ H(A|B) = H(A, B) \ - H(B)$$
- $$I(A; B) = H(A) \ - H(A|B)$$ which represents the reduction in the uncertainty about one when we know the other.

simplest case: single neuron

mutiple neurons: redundancy reduction