The antennal lobe (AL) is the primary structure within the locust’s brain that receives information from olfactory receptor
neurons (ORNs) within the antennae. Different odors activate distinct subsets of ORNs, implying that neuronal signals at the
level of the antennae encode odors combinatorially. Within the AL, however, different odors produce signals with long-lasting
dynamic transients carried by overlapping neural ensembles, suggesting a more complex coding scheme. In this work we use a
large-scale point neuron model of the locust AL to investigate this shift in stimulus encoding and potential consequences
for odor discrimination. Consistent with experiment, our model produces stimulus-sensitive, dynamically evolving populations
of active AL neurons. Our model relies critically on the persistence time-scale associated with ORN input to the AL, sparse
connectivity among projection neurons, and a synaptic slow inhibitory mechanism. Collectively, these architectural features
can generate network odor representations of considerably higher dimension than would be generated by a direct feed-forward
representation of stimulus space.
Keywords Linear discriminability - Principal component analysis
Action Editor:
T. Sejnowski