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Industrial Program

Computer Vision with OpenCV

Envisioning Tomorrow: Transform Your Sight with AI

Enroll now for early access of e-LMS

MODE
Online/ e-LMS
TYPE
Self Paced
LEVEL
Advanced
DURATION
6 Weeks

About

The Advanced Computer Vision with OpenCV program is meticulously crafted to bridge the gap between theoretical knowledge and real-world application, making it one of the most comprehensive courses available in the field of computer vision. This program is ideal for those looking to deepen their understanding of how machines interpret visual data and to develop practical skills in designing and deploying sophisticated computer vision systems.

Aim

The aim of the Advanced Computer Vision with OpenCV program is to empower students and professionals with the skills and knowledge necessary to excel in the field of computer vision. By integrating theoretical foundations with practical applications using OpenCV, this course is designed to:

  • Develop Proficiency: Equip participants with a deep understanding of both classic and contemporary computer vision techniques.
  • Foster Innovation: Encourage innovative thinking and problem-solving skills in real-world scenarios using advanced AI and machine learning technologies.
  • Enhance Technical Skills: Provide hands-on experience with OpenCV, enabling learners to implement, analyze, and optimize computer vision applications effectively.
  • Prepare for Industry: Prepare learners for successful careers in various industries such as robotics, autonomous vehicles, security, and healthcare by mastering practical deployment and integration of computer vision technologies.
  • Drive Technological Advancement: Contribute to the advancement of digital imaging and machine perception technologies through rigorous training and comprehensive education.

Program Objectives

  • Understand and apply foundational computer vision concepts and techniques.
  • Perform image preprocessing, classification, and segmentation.
  • Implement object detection algorithms like YOLO and Faster R-CNN.
  • Develop and train convolutional neural networks (CNNs) for image analysis.
  • Utilize transfer learning for efficient model development.
  • Implement facial recognition systems, including face detection and alignment.
  • Gain proficiency in advanced computer vision tasks using deep learning frameworks.
  • Apply computer vision techniques to real-world applications and projects.
  • Enhance coding skills in Python and use libraries such as OpenCV, TensorFlow, and Keras.

Program Structure

Introduction to Computer Vision and OpenCV

  • Overview of Computer Vision and its Applications
    • Key Concepts and Terminologies in Computer Vision.
    • Introduction to OpenCV and its role in Computer Vision.
  • Setting Up OpenCV
    • Installing OpenCV.
    • Basic operations with OpenCV for image handling.

Image Processing Basics with OpenCV

  • Understanding Images with OpenCV
    • Reading, writing, and displaying images.
    • Image transformations and filtering techniques.
  • Image Manipulation and Analysis
    • Color spaces, blending, and thresholding.
    • Edge detection and geometric transformations.

Image Classification

  • Introduction to Image Classification
    • Understanding image data and challenges in classification.
  • Convolutional Neural Networks (CNNs)
    • Building and training CNNs for image recognition.
    • Practical implementation with TensorFlow and Keras.
  • Advanced Techniques in Classification
    • Transfer Learning for enhancing model performance.
    • Hyperparameter tuning and optimization strategies.

Object Detection and Analysis

  • Fundamentals of Object Detection
    • Overview of object detection algorithms.
  • Implementing Detection Models with OpenCV
    • YOLO (You Only Look Once) algorithm.
    • Faster R-CNN for object localization and classification.
  • Real-Time Object Detection
    • Utilizing OpenCV for real-time video processing and object tracking.

Image Segmentation Techniques

  • Introduction to Image Segmentation
    • Differences between semantic and instance segmentation.
  • Segmentation Algorithms
    • Implementing U-Net for detailed image segmentation.
    • Using OpenCV for segmentation tasks.

Facial Recognition Systems

  • Basics of Facial Recognition
    • Face detection and alignment using OpenCV.
    • Understanding face embeddings and recognition algorithms.
  • Building Facial Recognition Systems
    • Practical implementations with OpenCV.
    • Enhancing accuracy and performance of facial recognition systems.

Advanced Computer Vision with Deep Learning

  • Deep Learning Architectures for Computer Vision
    • Exploring advanced neural network designs and their applications.
  • Application-Specific Techniques
    • Customizing deep learning models for specific real-world applications.
    • Integration of OpenCV functionalities to enhance deep learning workflows.

Project and Practical Applications

  • Capstone Project
    • Developing a comprehensive computer vision application using OpenCV and deep learning technologies.
  • Industry Applications
    • Exploration of commercial and societal applications of computer vision, including surveillance, autonomous vehicles, and healthcare diagnostics.

Summary and Future Directions

  • Review and Integration of Learned Concepts
    • Summarizing key techniques and best practices.
  • Future Trends in Computer Vision
    • Discussing emerging technologies and future research areas in computer vision and AI.

Participant’s Eligibility

  • Who is this Program Intended For?

    • Professionals in Tech Industries:
      • Software developers, data scientists, and engineers who are interested in integrating computer vision capabilities into their projects.
      • Professionals working in industries such as automotive, surveillance, or healthcare where computer vision technologies are increasingly pivotal.
    • Academic Students and Researchers:
      • Undergraduate and graduate students studying computer science, artificial intelligence, or related fields who wish to apply their academic knowledge in practical, real-world applications.
      • Researchers looking for robust methodologies to support their studies in image processing or machine learning.
    • Tech Enthusiasts and Hobbyists:
      • Individuals with a passion for AI and machine learning who are self-motivated to explore new technologies and seeking to undertake personal or community projects.
    • Career Changers:
      • Those from different backgrounds aiming to transition into tech roles specifically focused on AI and machine learning.

    Prerequisites:

    • Educational Background:
      • A basic understanding of programming, preferably in Python, as the course will involve practical coding and implementation tasks.
      • Familiarity with fundamental concepts of algorithms and mathematics (especially statistics and linear algebra).
    • Technical Skills:
      • Prior exposure to basic machine learning concepts and algorithms is beneficial but not mandatory.
      • Some experience with any programming or scripting environment, which will be crucial for hands-on sections involving OpenCV.
    • Hardware Requirements:
      • Access to a computer capable of running the latest version of OpenCV and other software tools used throughout the course.
      • A reliable internet connection to access course materials and participate in online sessions.

Program Outcomes

  • Advantages of Pursuing a Career in Computer Vision:

    • High Demand:
      • As industries increasingly rely on AI and machine learning, the demand for professionals with specialized knowledge in computer vision is growing rapidly.
    • Innovative Work Environment:
      • Engage in cutting-edge projects that push the boundaries of what machines can see and understand, often leading to revolutionary applications and tools.
    • Lucrative Salary Prospects:
      • Given the specialized skill set and high demand, careers in computer vision and AI tend to offer lucrative salaries and substantial growth opportunities.
    • Cross-Industry Applications:
      • Skills in computer vision are applicable in diverse sectors, from entertainment and retail to manufacturing and healthcare, offering a wide range of career options.
    • Positive Societal Impact:
      • Many computer vision applications contribute to societal benefits, such as improving healthcare outcomes, enhancing public safety, and driving environmental sustainability.

    Continuing Education and Professional Development:

    • Graduates are encouraged to continue their professional development by attending workshops, conferences, and advanced courses. Keeping pace with technological advancements and industry trends will further enhance their career trajectory and professional network

Fee Structure

Standard Fee:           INR 7,998           USD 118

Discounted Fee:       INR 3,999             USD 59

We are excited to announce that we now accept payments in over 20 global currencies, in addition to USD. Check out our list to see if your preferred currency is supported. Enjoy the convenience and flexibility of paying in your local currency!

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Key Takeaways

Program Assessment

Certification to this program will be based on the evaluation of following assignment (s)/ examinations:

Exam Weightage
Mid Term Assignments 50 %
Project Report Submission (Includes Mandatory Paper Publication) 50 %

To study the printed/online course material, submit and clear, the mid term assignments, project work/research study (in completion of project work/research study, a final report must be submitted) and the online examination, you are allotted a 1-month period. You will be awarded a certificate, only after successful completion/ and clearance of all the aforesaid assignment(s) and examinations.

Program Deliverables

  • Access to e-LMS
  • Real Time Project for Dissertation
  • Project Guidance
  • Paper Publication Opportunity
  • Self Assessment
  • Final Examination
  • e-Certification
  • e-Marksheet

Future Career Prospects

  • Potential Career Paths Include:

    • Computer Vision Engineer:
      • Design and develop computer vision systems that interpret and manage visual data for applications such as automated inspection, surveillance, or autonomous driving.
    • Machine Learning Engineer:
      • Implement machine learning algorithms that leverage visual data to enhance decision-making processes across tech-driven industries.
    • AI Research Scientist:
      • Conduct advanced research in artificial intelligence, focusing on developing new methods for processing and analyzing visual information.
    • Data Scientist Specializing in Image Analysis:
      • Analyze large datasets containing visual data to uncover insights, drive innovation, and solve complex problems within businesses.
    • Software Developer for Robotics and Autonomous Systems:
      • Create software solutions that integrate AI and computer vision technologies to power robotic systems and improve their functionality and independence.
    • Product Manager for AI Products:
      • Lead the development and strategy for AI-based products, particularly those that incorporate computer vision capabilities, ensuring they meet market needs and user expectations.
    • Technical Consultant for AI and Computer Vision:
      • Provide expert advice and implementation services to companies looking to adopt or enhance computer vision technologies within their operations.
    • Healthcare Imaging Specialist:
      • Apply computer vision techniques to medical imaging to assist in diagnostic procedures, treatment planning, and research into new therapies.
    • Automotive AI Engineer:
      • Work on developing and improving autonomous driving systems using computer vision algorithms to process and interpret road environments.
    • Security and Surveillance Analyst:
      • Utilize computer vision technologies to enhance safety and security measures through advanced monitoring and detection systems.

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Hall of Fame
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