楼主: 888888

斯坦福、伯克利、杜克大学、哥大等 深度学习课程+书籍

8590
回复
31074
查看
  [复制链接]
字体大小: 正常 放大

3万

主题

3万

帖子

3万

积分

管理员

Rank: 9Rank: 9Rank: 9

积分
39029

最佳新人活跃会员热心会员推广达人宣传达人灌水之王突出贡献优秀版主荣誉管理论坛元老

发表于 2022-12-31 06:09:07 | 显示全部楼层 |阅读模式
深度学习是机器学习研究中的一个新的领域,其动机在于建立、模拟人脑进行分析学习的神经网络,它模仿人脑的机制来解释数据,例如图像,声音和文本。

【课程内容】

Audio Signal Processing for Music Applications

  • Introduction
  • Discrete Fourier transform
  • Fourier theorems
  • Short-time Fourier transform
  • Sinusoidal model
  • Harmonic model
  • Sinusoidal plus residual model
  • Sound transformations
  • Sound and music description
  • Concluding topics

Computer Vision 计算机视觉

  • Overview
  • Fundamentals of image formation
  • Rigid body motion
  • Orthogonal transformations
  • Orthogonal transformations - Orthogonal Matrices
  • Orthogonal matrices - Rotations and reflections
  • Parametrizing Rotations in 3D
  • Euclidean, Affine and Projective Transformations
  • Dynamic Perspective
  • Binocular Stereo
  • Radiometry
  • Image processing
  • Orientation histograms
  • Handwritten digit recognition - Introduction
  • Support Vector Machines
  • Transformation Invariance and Histograms
  • Digit recognition using SVMs
  • Random forests
  • Detection of 3D objects
  • Concluding Remarks

Image and video processing

  • What is image and video processing
  • Course logistics
  • Images are everywhere
  • Human visual system
  • Image formation - Sampling  Quantization
  • Simple image operations
  • The why and how of compression
  • Huffman coding
  • JPEGs 8x8 blocks
  • The Discrete Cosine Transform (DCT)
  • Quantization
  • JPEG_LS and MPEG
  • Bonus Run-length compression
  • Introduction to image enhancement
  • Demo - Enhancement Histogram modification
  • Histogram equalization
  • Histogram matching
  • Introduction to local neighborhood operations
  • Mathematical properties of averaging
  • Non-Local means
  • IPOL Demo - Non-Local means
  • Median filter
  • Demo - Median filter
  • Derivatives Laplacian  Unsharp masking
  • Demo - Unsharp masking
  • Gradients of scalar and vector images
  • Concluding remarks
  • What is image restoration
  • Noise types
  • Demo - Types of noise
  • Noise and histograms
  • Estimating noise
  • Degradation Function
  • Wiener filtering
  • Demo - Wiener and Box filters
  • Concluding remarks
  • Introduction to Segmentation
  • On Edges and Regions
  • Hough Transform with Matlab Demo
  • Line Segment Detector with Demo
  • Otsus Segmentation with Demo
  • Congratulations
  • Interactive Image Segmentation
  • Graph Cuts and Ms Office
  • Mumford-Shah
  • Active Contours - Introduction with ipol.im and Photoshop Demos
  • Behind the Scenes of Adobes Roto Brush
  • Introduction to PDEs in Image and Video Processing
  • Planar Differential Geometry
  • Surface Differential Geometry
  • Curve Evolution
  • Level Sets and Curve Evolution
  • Calculus of Variations
  • Anisotropic Diffusion
  • Active Contours
  • Bonus Cool Contrast Enhancement via PDEs
  • Introduction to Image Inpainting
  • Inpainting in Nature
  • PDEs and Inpainting
  • Inpainting via Calculus of Variations
  • Smart Cut and Paste
  • Demo - Photoshop Inpainting Healing Brush
  • Video Inpainting and Conclusions
  • Introduction to Sparse Modeling
  • Sparse Modeling - Implementation
  • Dictionary Learning
  • Sparse Modeling Image Processing Examples
  • A Note on Compressed Sensing
  • GMM and Structured Sparsity
  • Bonus Sparse Modeling and Classification - Activity Recognition
  • Introduction to Medical Imaging
  • Image Processing and HIV
  • Brain Imaging Diffusion Imaging Deep Brain Stimulation

Natural Language Processing Collins

  • Introduction to Natural Language Processing
  • The Language Modeling Problem
  • Parameter Estimation in Language Models
  • Summary
  • Tagging Problems and Hidden Markov Models
  • Parsing and Context-Free Grammars
  • Probabilistic Context-Free Grammars
  • Weaknesses of PCFGs
  • Lexicalized PCFGs
  • Introduction to Machine Translation
  • The IBM Translation Models
  • Phrase-based Translation Models
  • Decoding of Phrase-based Translation Models
  • Log-linear Models
  • Log-linear Models for Tagging
  • Log-Linear Models for History-based Parsing
  • Unsupervised Learning- Brown Clustering
  • Global Linear Models
  • GLMs for Tagging
  • GLMs for Dependency Parsing

Neural Networks for Machine Learning

  • hinton-ml(67课)
  • neuralnets(78课)

Probabilistic Graphical Models

  • Introduction and Overview
  • Bayesian Network Fundamentals
  • Template Models
  • ML-class Octave Tutorial
  • Structured CPDs
  • Markov Network Fundamentals
  • Representation Wrapup- Knowledge Engineering
  • Inference-Variable Elimination
  • Inference-Belief Propagation
  • Inference-MAP Estimation
  • Inference-Sampling Methods
  • Inference-Temporal Models and Wrap-up
  • Decision Theory
  • ML-class Revision
  • Learning-Overview
  • Learning-Parameter Estimation in BNs
  • Learning-Parameter Estimation in MNs
  • Structure Learning
  • Learning With Incomplete Data
  • Learning-Wrapup
  • Summary

《深度学习在互联网上的应用》

神经网络、深度学习方向书籍资料

  • A Note on BPTT for LSTM LM.pdf
  • cnn-lstm-ctc.pdf
  • CNN与反向传播.pdf
  • ctc.pdf
  • Deep learning(1).pdf
  • Deep Learning-Bengio .pdf
  • deep learning.pdf
  • deep-learning-nature2015.pdf
  • deeplearning.pdf
  • deeplearningbook-chinese-master.zip
  • DeepLearningBook.pdf
  • DeepLearning_MethodsandApplications-MR-Chinese.pdf
  • deep_rl_tutorial.pdf
  • Hinton.SOM.pdf
  • Introduction to Deep Learning.pdf
  • Neural Network and Deep Learning.pdf
  • Supervised Sequence Labelling with Recurrent Neural Networks.pdf
  • tr.pdf
  • Unsupervised Learning of Edges_Yin Li_2016.pdf
  • Week1d Introduction to CNNs (AlexNet).pdf
  • 《神经网络与深度学习》邱锡鹏
  • 《神经网络与深度学习综述DeepLearning15May2014.pdf
  • 人工智能深度学习deeplearning_for_AI_course(2015_Spring)_927202100.pdf
  • 刘昕 - 深度学习基础与实战_2017新版.pdf
  • 可视化理解卷积网络Visualizing and Understanding Convolutional Networks.pdf
  • 吴恩达深度学习基础教程.pdf
  • 基于CNN的图片颜色处理.pdf
  • 基于卷积神经网络的深度学习算法与应用研究.pdf
  • 大数据,机器(深度)学习精品名师学习课程.pdf
  • 深度学习.rar
  • 深度学习word2vec学习笔记.pdf
  • 深度学习基础及数学原理.pdf
  • 深度学习基础教程.pdf
  • 深度学习的基本理论与方法.pptx
  • 电子书_深度学习方法及应用.pdf
  • 神经网络和深度学习.pdf
  • 神经网络与机器学习(原书第3版).pdf
  • 神经网络与深度学习讲义20151211.pdf
  • 神经网络原理.pdf









本资源来源于 网络 付费网站  付费收集而来, 随时收集更新资源  本站专注搜集和分享各种付费网站资源,感谢您的信任


资源下载地址:
游客,如果您要查看本帖隐藏内容请回复>>>开通VIP无需回帖直接下载VIP通道

本站所有资源都来源于网络收集,网友提供或者交换而来!

如果侵犯了您的权益,请及时联系客服,我们即刻删除!




上一篇:Python的人工智能开源神器Tensorflow 教程+源码
下一篇:斯坦福NLP(自然语言处理)技术教程
回复

使用道具 举报

客服客服

客服客服

客服客服

客服QQ
微信扫一扫
自助开通会员后联系客服