{"title":"Framework for the Classification of Facial Emotions Using Soft Computing\nTechniques","authors":"Sourav Maity, Karan Veer","doi":"10.2174/0115743624273918240102060402","DOIUrl":null,"url":null,"abstract":"\n\nFacial emotion recognition (FER) technology is enumerated as a productive\ninterface in several operations, which has been specifically focused on as a substitute\ncommunication path among a user and an appliance for human computer interface in the previous\ndecade. The efficiency of the facial identification model straightaway relies on the capability\nof classification methods. In addition, an appropriate swap between recognition efficiency\nand computational cost is reckoned as the most important factor for planning such models.\n\n\n\nThe efficiency of facial identification model straightaway relies on the capability of classification methods. In addition, an appropriate swap between recognition efficiency and computational cost is reckoned as the most important factor for planning such models.\n\n\n\nThe objective of this paper was to classify the facial emotion electromyogram (EMG)\nsignals by means of a neural network algorithm (NN), support vector machine (SVM) algorithm,\nand Naive-Bayes algorithm. This research work was directed towards the correlation among the\nclassification accuracies by applying distinct feature extraction procedures on fEMGs. At first,\neight participants (six male and two female) were recruited for data recording. Four electrodes\nwere placed on each participant's face for capturing facial gestures (happy, angry, sad, and fear)\nand two electrodes were placed on the wrist for grounding purposes. Data were recorded by using\nBIOPAC MP150. After this, the signals were filtered using a band-pass filter and segmentation\ntechniques for enhanced processing. After that, the time-domain and frequency-domain feature\nextraction procedures were carried out. Time domain and frequency domain features were\napplied to recorded signals. In this research, we used LabVIEW and MATLAB to produce a set\nof characteristics from fEMG signals for four emotional conditions, such as anger, sad, fear, and\nhappy. After the feature extraction process, the extracted features were aligned into respective\nemotions by applying classifiers. The extracted features were further trained and classified by\napplying the SVM classifier, neural network classifier, and Naive Bayes classifier in MATLAB\n2020.\n\n\n\nThe SVM classifier and neural network classifier generated an accuracy of 93.80% and\n96.90%, respectively, whereas the Naive Bayes classifier generated an accuracy of 90.60%.\n\n\n\nFacial emotion recognition (FER) is foresighted as a progressive or futuristic model,\nwhich has attracted the attention of researchers in several areas of learning due to its higher\nprospects in distinct applications. Acknowledgment of the emotions through biomedical signals\nproduced from movements of facial muscles is lately presented using an explicit and authentic\nroute.\n","PeriodicalId":10868,"journal":{"name":"Current Signal Transduction Therapy","volume":"84 2","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Current Signal Transduction Therapy","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2174/0115743624273918240102060402","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"Medicine","Score":null,"Total":0}
引用次数: 0
Abstract
Facial emotion recognition (FER) technology is enumerated as a productive
interface in several operations, which has been specifically focused on as a substitute
communication path among a user and an appliance for human computer interface in the previous
decade. The efficiency of the facial identification model straightaway relies on the capability
of classification methods. In addition, an appropriate swap between recognition efficiency
and computational cost is reckoned as the most important factor for planning such models.
The efficiency of facial identification model straightaway relies on the capability of classification methods. In addition, an appropriate swap between recognition efficiency and computational cost is reckoned as the most important factor for planning such models.
The objective of this paper was to classify the facial emotion electromyogram (EMG)
signals by means of a neural network algorithm (NN), support vector machine (SVM) algorithm,
and Naive-Bayes algorithm. This research work was directed towards the correlation among the
classification accuracies by applying distinct feature extraction procedures on fEMGs. At first,
eight participants (six male and two female) were recruited for data recording. Four electrodes
were placed on each participant's face for capturing facial gestures (happy, angry, sad, and fear)
and two electrodes were placed on the wrist for grounding purposes. Data were recorded by using
BIOPAC MP150. After this, the signals were filtered using a band-pass filter and segmentation
techniques for enhanced processing. After that, the time-domain and frequency-domain feature
extraction procedures were carried out. Time domain and frequency domain features were
applied to recorded signals. In this research, we used LabVIEW and MATLAB to produce a set
of characteristics from fEMG signals for four emotional conditions, such as anger, sad, fear, and
happy. After the feature extraction process, the extracted features were aligned into respective
emotions by applying classifiers. The extracted features were further trained and classified by
applying the SVM classifier, neural network classifier, and Naive Bayes classifier in MATLAB
2020.
The SVM classifier and neural network classifier generated an accuracy of 93.80% and
96.90%, respectively, whereas the Naive Bayes classifier generated an accuracy of 90.60%.
Facial emotion recognition (FER) is foresighted as a progressive or futuristic model,
which has attracted the attention of researchers in several areas of learning due to its higher
prospects in distinct applications. Acknowledgment of the emotions through biomedical signals
produced from movements of facial muscles is lately presented using an explicit and authentic
route.
期刊介绍:
In recent years a breakthrough has occurred in our understanding of the molecular pathomechanisms of human diseases whereby most of our diseases are related to intra and intercellular communication disorders. The concept of signal transduction therapy has got into the front line of modern drug research, and a multidisciplinary approach is being used to identify and treat signaling disorders.
The journal publishes timely in-depth reviews, research article and drug clinical trial studies in the field of signal transduction therapy. Thematic issues are also published to cover selected areas of signal transduction therapy. Coverage of the field includes genomics, proteomics, medicinal chemistry and the relevant diseases involved in signaling e.g. cancer, neurodegenerative and inflammatory diseases. Current Signal Transduction Therapy is an essential journal for all involved in drug design and discovery.