MIT 6.S191 (2023): Convolutional Neural Networks
MIT Introduction to Deep Learning 6.S191: Lecture 3 Convolutional Neural Networks for Computer Vision Lecturer: Alexander Amini 2023 Edition For all lectures, slides, and lab materials: http://introtodeeplearning.com Lecture Outline 0:00 - Introduction 2:37 - Amazing applications of vision 5:35 - What computers "see" 12:38- Learning visual features 17:51 - Feature extraction and convolution 22:23 - The convolution operation 27:30 - Convolution neural networks 34:29 - Non-linearity and pooling 40:07 - End-to-end code example 41:23 - Applications 43:18 - Object detection 51:36 - End-to-end self driving cars 54:08 - Summary Subscribe to stay up to date with new deep learning lectures at MIT, or follow us @MITDeepLearning on Twitter and Instagram to stay fully-connected!!

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