Emotion recognition techniques with rule based and machine learning approaches

02/28/2021
by   Aasma Aslam, et al.
0

Emotion recognition using digital image processing is a multifarious task because facial emotions depend on warped facial features as well as on gender, age, and culture. Furthermore, there are several factors such as varied illumination and intricate settings that increase complexity in facial emotion recognition. In this paper, we used four salient facial features, Eyebrows, Mouth opening, Mouth corners, and Forehead wrinkles to identifying emotions from normal, occluded and partially-occluded images. We have employed rule-based approach and developed new methods to extract aforementioned facial features similar to local bit patterns using novel techniques. We propose new methods to detect eye location, eyebrow contraction, and mouth corners. For eye detection, the proposed methods are Enhancement of Cr Red (ECrR) and Suppression of Cr Blue (SCrB) which results in 98 eyebrow contraction detection, we propose two techniques (1) Morphological Gradient Image Intensity (MGII) and (2) Degree of Curvature Line (DCL). Additionally, we present a new method for mouth corners detection. For classification purpose, we use an individual classifier, majority voting (MV) and weighted majority voting (WMV) methods which mimic Human Emotions Sensitivity (HES). These methods are straightforward to implement, improve the accuracy of results, and work best for emotion recognition using partially occluded images. It is ascertained from the results that our method outperforms previous approaches. Overall accuracy rates are around 94 on one image using processor core i5 is  0.12 sec.

READ FULL TEXT

page 7

page 11

page 12

page 14

research
01/01/2018

Facial emotion recognition using min-max similarity classifier

Recognition of human emotions from the imaging templates is useful in a ...
research
06/23/2020

Gender and Emotion Recognition from Implicit User Behavior Signals

This work explores the utility of implicit behavioral cues, namely, Elec...
research
08/29/2017

Discovering Gender Differences in Facial Emotion Recognition via Implicit Behavioral Cues

We examine the utility of implicit behavioral cues in the form of EEG br...
research
07/09/2016

Augmenting Supervised Emotion Recognition with Rule-Based Decision Model

The aim of this research is development of rule based decision model for...
research
08/07/2016

Edge Based Grid Super-Imposition for Crowd Emotion Recognition

Numerous automatic continuous emotion detection system studies have exam...
research
05/14/2019

Emotion recognition using a glasses-type wearable device via multi-channel facial responses

We present a glasses type wearable device to detect emotions from a huma...
research
08/05/2022

A Novel Enhanced Convolution Neural Network with Extreme Learning Machine: Facial Emotional Recognition in Psychology Practices

Facial emotional recognition is one of the essential tools used by recog...

Please sign up or login with your details

Forgot password? Click here to reset