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facial-expression-recognition
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Here are some popular Practical Applications of Facial Expression Recognition :
- During Interviews
- Students activeness during Online Education
- Real-time monitoring of physically disabled patients.
STEPS to Proceed :
- Once you think of an Application, Try to figure out what additional Tech Stack is required to implement that.
- If you are already familiar with the Tech Stack,
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A good feature to automate the benchmarking is to add a module for automatic dataset download.