Discriminating signal from noise: Recognition of a movement-based animal display by artificial neural networks
RICHARD A. PETERS & COLIN J. DAVIES
Behavioral Processes, 72: 52-64.
In this study, we investigated the feasibility of applying neural networks
to understanding movement-based visual signals. Networks based on
three different models were constructed, varying in their input format and
network architecture: a Static Input model, a Dynamic Input model and
a Feedback model. The task for all networks was to distinguish a lizard (Amphibolurus
muricatus) tail-flick from background plant movement.
Networks based on all models were able to distinguish the two types of visual
motion, and generalised successfully to unseen exemplars. We
used curves defined by the receiver-operating characteristic (ROC) to select
a single network from each model to be used in regression analyses
of network response and several motion variables. Collectively, the models
predicted that tail-flick efficacy would be enhanced by faster speeds,
greater acceleration and longer durations.