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Advancements in Facial Emotion Detection by Machine Learning Approaches

Sakshi Kadam, Sakshi Sakpal, Dipika Bibrale, Avanti Jamdade

Abstract


In a state of natural psychological equilibrium, tension might be viewed as a disruption. A person's mental health will be put under stress if they are unable to balance the expectations that have been placed on them with their ability to deal with them. There are many different kinds of challenges. Psychological equilibrium disturbance is a generic description of depression. Depression detection is one of the main areas of biomedical engineering research since it may be simple to prevent depression with the right measures. There are many bio signals accessible, including Mri, Rgb, oxygenation, and Frs. They can be used to determine depression levels since they show unique variations in depression induction. Multiple SVM model types have been examined by changing the function number and kernel type.


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DOI: https://doi.org/10.37628/jrfd.v8i2.1934

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