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Computer Vision History Recap
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Related lectures (32)
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Neural Taskonomy and Historical Perspectives in Visual Intelligence
Covers Neural Taskonomy, the evolution of neural networks, and historical perspectives in visual intelligence.
Feedforward Neural Networks: Activation Functions and Backpropagation
Introduces feedforward neural networks, activation functions, and backpropagation for training, addressing challenges and powerful methods.
Multilayer Networks: First Steps
Covers the preparation for deriving the Backprop algorithm in layered networks using multi-layer perceptrons and gradient descent.
Multilayer Perceptron: Training and Backpropagation
Explores the challenges of training Multilayer Perceptrons and the backpropagation algorithm.
Neural Networks: Two Layers Neural Network
Covers the basics of neural networks, focusing on the development from two layers neural networks to deep neural networks.
Neural Networks: Multilayer Perceptron
Explores the history, models, training, convergence, and limitations of neural networks, including the backpropagation algorithm and universal approximation.
Building Physical Neural Networks
Discusses challenges in building physical neural networks, focusing on depth, connections, and trainability.
Backpropagation and Neural Networks
Covers the backpropagation algorithm for training neural networks and the representation of functions in multilayer networks.
Neural Networks: Two-layer Networks and Backpropagation
Explores two-layer neural networks and backpropagation for learning feature spaces and approximating continuous functions.
Recurrent Neural Networks: Training and Challenges
Discusses recurrent neural networks, their training challenges, and solutions like LSTMs and GRUs.