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Lecture
MaxPooling as inductive bias for images
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Deep Learning Fundamentals
Introduces deep learning, from logistic regression to neural networks, emphasizing the need for handling non-linearly separable data.
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Delves into the geometric insights of deep learning models, exploring their vulnerability to perturbations and the importance of robustness and interpretability.
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Covers hand pose estimation, regression techniques, and the evolution of image classification models from LeNet to VGG19.
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Explores computational models of the ventral visual system, focusing on optimizing networks for real-world tasks and comparing to brain data.
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Explores machine learning for feature extraction, 3D vision, and neural networks in mobile robotics.
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Explores convolutional neural networks for image classification, focusing on weight challenges, overfitting prevention strategies, and fine-tuning pre-trained models.
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Deep Learning: Convolutional Networks
Explores convolutional neural networks, backpropagation, and stochastic gradient descent in deep learning.
Deep Learning for Autonomous Vehicles: Learning
Explores learning in deep learning for autonomous vehicles, covering predictive models, RNN, ImageNet, and transfer learning.
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Discusses challenges in building physical neural networks, focusing on depth, connections, and trainability.