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Information Journal Paper

Title

IDENTIFICATION OF IMAGERY BASED AFFECTIVE STATES USING DECISION LEVEL FUSION OF MULTIMODAL PHYSIOLOGICAL SIGNALS

Pages

  340-359

Abstract

 In this study, we propose DECISION LEVEL FUSION of multimodal PHYSIOLOGICAL SIGNALS to design an affect identification system using the MIT database. Four types of PHYSIOLOGICAL SIGNALS, including blood volume pressure (BVP), respiration rate (RSP), skin conductance and facial muscles activities (fEMG) were utilized as affective modalities. To collect the above-mentioned database, researchers used PERSONALIZED IMAGERY to elicit the desired AFFECTIVE STATES from a single subject and recorded the corresponding PHYSIOLOGICAL SIGNALS simultaneously. In this study, the best subset of features for each signal was determined using previously calculated time and frequency domain features. To this end, sequential floating forward selection (SFFS) and RELIEF FEATURE SELECTION algorithms were evaluated. A new feature set, formed by concatenating the selected features, was partitioned into three subsets. Each subset was then fed into a classifier to identify the desired AFFECTIVE STATES. The majority voting method was applied to fuse the results obtained by the subsystems. Three types of classification methods, namely SVM, LDA and KNN were evaluated to design an affect identification system. The results showed remarkable performance from the system in identifying the desired scenarios with an acceptable accuracy and speed of response. Using the RELIEF FEATURE SELECTION method, along with SVM as a classifier, an overall recognition accuracy of 93.8% was obtained, which is better than the results reported with the use of the above-mentioned database so far.

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  • Cite

    APA: Copy

    KHEZRI, MAHDI, FIROOZABADI, SEYED MOHAMMAD, & SHARAFAT, SEYED AHMAD REZA. (2015). IDENTIFICATION OF IMAGERY BASED AFFECTIVE STATES USING DECISION LEVEL FUSION OF MULTIMODAL PHYSIOLOGICAL SIGNALS. IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING, 8(4), 340-359. SID. https://sid.ir/paper/81647/en

    Vancouver: Copy

    KHEZRI MAHDI, FIROOZABADI SEYED MOHAMMAD, SHARAFAT SEYED AHMAD REZA. IDENTIFICATION OF IMAGERY BASED AFFECTIVE STATES USING DECISION LEVEL FUSION OF MULTIMODAL PHYSIOLOGICAL SIGNALS. IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING[Internet]. 2015;8(4):340-359. Available from: https://sid.ir/paper/81647/en

    IEEE: Copy

    MAHDI KHEZRI, SEYED MOHAMMAD FIROOZABADI, and SEYED AHMAD REZA SHARAFAT, “IDENTIFICATION OF IMAGERY BASED AFFECTIVE STATES USING DECISION LEVEL FUSION OF MULTIMODAL PHYSIOLOGICAL SIGNALS,” IRANIAN JOURNAL OF BIOMEDICAL ENGINEERING, vol. 8, no. 4, pp. 340–359, 2015, [Online]. Available: https://sid.ir/paper/81647/en

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