deadskull7 / Face-Emotion-Classification-for-dementia-patientsLinks
The product being developed is a mobile application for android operating system. It is an emotion and pain assessment tool and can be incorporated on other platforms also, which satisfy the minimum requirements of system. The application will allow the doctors to select or capture an image of the patient to be assessed. Then the image will be u…
☆10Updated 6 years ago
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