Facial Expression Recognition with PyTorch
About this Course
In this 2-hour long guided-project course, you will load a pretrained state of the art model CNN and you will train in PyTorch to classify facial expressions. The data that you will use, consists of 48 x 48 pixel grayscale images of faces and there are seven targets (angry, disgust, fear, happy, sad, surprise, neutral). Furthermore, you will apply augmentation for classification task to augment images. Moreover, you are going to create train and evaluator function which will be helpful to write training loop. Lastly, you will use best trained model to classify expression given any input image.Created by: Coursera Project Network

Related Online Courses
Dive into the captivating world of JavaScript, a cornerstone language that has revolutionized web development by enabling dynamic and engaging web applications. This course, divided into three... more
In this MOOC, we will focus on learning how network systems are secured using firewalls and IDS. This will include understanding the basic components of network security, constructing a... more
This course is ideal for individuals who currently work in or are targeting opportunities in consulting and strategy, industrial sales and buying, marketing management, entrepreneurship, and... more
The theory of Agile is simple. However, it takes experience, knowledge, and expertise to scale it successfully. In this course, you will focus on leading change at an organizational level and... more
The ability to shoot and edit video is rapidly becoming a sought after skill. Many businesses seek people who can bring more than just a single skill to the table, and video creation can be a key... more