Typical FIS Model (Salih et al., 2014).

Typical FIS Model (Salih et al., 2014).

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The procedure of determining whether micro expressions are present is accorded a high priority in the majority of settings. This is due to the fact that despite the best attempts of the person, these expressions will always expose the genuine sentiments that are buried under the surface. The purpose of this study is to provide a novel approach to t...

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Context 1
... there are three main units (fuzzification unit, inference engine, and defuzzification unit) in each fuzzy logic based system as mentioned in Figure 5. A new design of FIS approach has been proposed in this study to aggregate happiness and sarcasm class. ...
Context 2
... mentioned in Figure 5, the defuzzification process is the final step in each FIS, which is implemented by aggregating the obtained value for all output MFs. The classification of happiness and sarcasm into multi categories represents the defuzzification process in the proposed FIS using the fuzzy rules defined in (3) and (4), respectively. ...

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