Facial Expression Recognition with Keras
This project-based course on Coursera's Rhyme platform will teach you how to build and train a convolutional neural network (CNN) in Keras to recognize facial expressions. You will use OpenCV to detect faces in images and draw bounding boxes around them. After training, saving, and exporting the CNN, you will directly serve the trained model to a web interface and perform real-time facial expression recognition on video and image data. With instant access to a cloud desktop with Python, Jupyter, and Keras pre-installed, you can focus on learning and get the most out of this course. This course is best suited for learners based in North America. ▼
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Course Feature
Cost:
Paid
Provider:
Coursera
Certificate:
Paid Certification
Language:
English
Start Date:
31st Jul, 2023
Course Overview
❗The content presented here is sourced directly from Coursera platform. For comprehensive course details, including enrollment information, simply click on the 'Go to class' link on our website.
Updated in [August 31st, 2023]
Skills and Knowledge:
- Convolutional Neural Network (CNN)
- Building and training a CNN in Keras
- Classifying facial expressions into seven categories
- Using OpenCV to detect faces in images and draw bounding boxes
- Serving a trained model to a web interface
- Performing real-time facial expression recognition on video and image data
- Python programming
- Jupyter Notebook
- Cloud computing
Professional Growth:
This course on Facial Expression Recognition with Keras can contribute to professional growth in several ways:
1. Skill development: By completing this course, you will gain hands-on experience in building and training a convolutional neural network (CNN) using Keras. This will enhance your skills in deep learning, computer vision, and image recognition, which are highly sought after in the field of artificial intelligence and machine learning.
2. Practical application: The course focuses on a real-world application of facial expression recognition. By working on this project, you will learn how to apply your knowledge to solve a specific problem and develop a practical solution. This experience will be valuable in future projects and job roles that involve computer vision or image analysis.
3. Understanding CNN architecture: The course will guide you through the process of building a CNN from scratch. You will learn about the different layers and components of a CNN and how they contribute to the overall performance of the model. This understanding will enable you to design and optimize CNN architectures for various tasks in the future.
4. OpenCV integration: The course teaches you how to use OpenCV, a popular computer vision library, to detect faces in images and draw bounding boxes around them. This integration of OpenCV with Keras will expand your knowledge of working with different libraries and frameworks, making you more versatile in your professional career.
5. Deployment and real-time recognition: Towards the end of the course, you will learn how to serve the trained model to a web interface and perform real-time facial expression recognition on video and image data. This aspect of the course will give you exposure to deploying machine learning models and working with real-time data, which are essential skills in many industry applications.
Overall, completing this course will not only enhance your technical skills in deep learning and computer vision but also provide you with a practical understanding of applying these skills to solve real-world problems. This knowledge and experience will contribute to your professional growth and make you more competitive in the job market.
Further Education:
This course is suitable for preparing for further education. It covers the fundamentals of building and training a convolutional neural network (CNN) using Keras, which is a widely used deep learning framework. The course also includes practical hands-on projects where you will apply the learned concepts to recognize facial expressions. This practical experience will be valuable for further education in the field of computer vision and deep learning. Additionally, the course provides access to a cloud desktop with all the necessary software and data, making it convenient for learning and practicing without the need for local installations.
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