Deep Learning with MATLAB

Course Highlights

This course provides a comprehensive introduction to practical deep learning using MATLAB®. Attendees will learn how to create, train, and evaluate different kinds of deep neural networks . Topics include:

  • Import image and sequence data
  • Use convolutional neural networks for image classification, regression, and object detection
  • Use long short-term memory networks for sequence classification and forecasting
  • Modify common network architectures to solve custom problems
  • Improve performance of a network by modifying training options


Course Objectives

The aim of this training is to provide participants with comprehensive introduction on deep learning with Neural Network toolbox for image processing applications.

Course Benefits

The aim of the training is to provide comprehensive introduction on deep learning with MATLAB for image processing.

 Who Must Attend

 Engineers, professionals, researchers who are involved in machine learning design for image processing.

 

Course Outline 

Classifying Images with Convolutional Networks

Objective: Get an overview of the course. Perform image classification using pretrained networks. Use transfer learning to train customized classification networks.

  • Pretrained networks
  • Image datastores
  • Transfer learning
  • Network evaluation

Interpreting Network Behavior

Objective: Gain insight into how a network is operating by visualizing image data as it passes through the network. Apply this technique to different kinds of images.

  • Activations
  • Images from signal data
  • Feature extraction for machine learning

Creating Networks

Objective: Build convolutional networks from scratch. Understand how information is passed between network layers and how different types of layers work.

  • Training from scratch
  • Neural networks
  • Convolution layers and filters

Training Networks

Objective: Understand how training algorithms work. Set training options to monitor and control training.

  • Network training
  • Training progress plots
  • Validation

Improving Performance

Objective: Choose and implement modifications to training algorithm options, network architecture, or training data to improve network performance.

  • Training options
  • Augmented datastores
  • Directed acyclic graphs

Performing Regression

Objective: Create convolutional networks that can predict continuous numeric responses.

  • Transfer learning for regression
  • Evaluation metrics for regression networks

Detecting Objects in Images

Objective: Train networks to locate and label specific objects within images.

  • Object detection

Classifying Sequence Data with Recurrent Networks

Objective: Build and train networks to perform classification on ordered sequences of data, such as time series or sensor data.

  • Long short-term memory networks
  • Sequence classification
  • Sequence preprocessing

Classifying Categorical Sequences

Objective: Use recurrent networks to classify sequences of categorical data, such as text.

  • Categorical sequences
  • Text classification

Generating Sequences of Output

Objective: Use recurrent networks to create sequences of predictions.

  • Sequence to sequence classification
  • Sequence forecasting

 

 

DOWNLOAD REGISTRATION FORM

  ONLINE REGISTRATION

 

 

Course Registration Form


Course Title
Invalid Input

or Key in Your Own Title
Invalid Input

Course Start Date

Invalid Input

Sponsorship (*)
Invalid Input


Contact Person


Salutation(*)
Invalid Input

Name(*)
Invalid Input

Designation/ Department/ Division(*)
Invalid Input

Company(*)
Invalid Input

Billing Address (*)
Invalid Input

Street Address

(*)
Invalid Input

Street Address Line 2

City(*)
Invalid Input

State / Province(*)
Invalid Input

Postal / Zip Code(*)
Invalid Input

Telephone(*)
Invalid Input

Fax
Invalid Input

Email Address (*)
Invalid Input


Participant Details


Participant Salution 1
Invalid Input

Participant Name1
Invalid Input

Designation/ Department/ Division
Invalid Input

Telephone
Invalid Input

Fax
Invalid Input

Email Address
Invalid Input

Dietary Requirement
Invalid Input


Participant Salution 2
Invalid Input

Participant Name2
Invalid Input

Designation/ Department/ Division
Invalid Input

Telephone
Invalid Input

Fax
Invalid Input

Email Address
Invalid Input

Dietary Requirement
Invalid Input


Participant Salution 3
Invalid Input

Participant Name 3
Invalid Input

Designation/ Department/ Division
Invalid Input

Telephone
Invalid Input

Fax
Invalid Input

Email Address
Invalid Input

Dietary Requirement
Invalid Input


Payment Method(*)
Invalid Input

Cheque number
Invalid Input

PO Number
Invalid Input

How did you get to know about this programme?(*)
Invalid Input

Terms and Conditions
Invalid Input

Invalid Input