Lecture

MaxPooling as inductive bias for images

Description

This lecture explains how MaxPooling enforces an inductive bias towards local translation invariance in convolutional neural networks. It demonstrates how several convolutional layers of MaxPooling can lead to global translation invariance, making the position of an object in an image irrelevant.

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