
S4E6: MIT’s James DiCarlo on Reverse-Engineering Human Sight with AI
Theory and Practice
Understanding Deep Convolutional Neural Networks
A modern convolutional neural network is similar to the brain in terms of its architecture. It is deep, meaning it has multiple processing layers. The network consists of artificial neurons that take inputs, sum them up, apply a threshold operator, and communicate with other neurons. The network is hierarchical and organized into areas. In convolutional networks, neurons take inputs from a local subset of neurons and execute operations across the entire input space. The brain and convolutional networks differ in terms of feedforward and feedback connections.
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