arXiv (Cornell University)
A Connectome Based Hexagonal Lattice Convolutional Network Model of the Drosophila Visual System
June 2018 • Fabian Tschopp, Michael B. Reiser, Srinivas C. Turaga
What can we learn from a connectome? We constructed a simplified model of the first two stages of the fly visual system, the lamina and medulla. The resulting hexagonal lattice convolutional network was trained using backpropagation through time to perform object tracking in natural scene videos. Networks initialized with weights from connectome reconstructions automatically discovered well-known orientation and direction selectivity properties in T4 neurons and their inputs, while networks initialized at random d…