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Predicting Continuous Probability Distribution of Image Emotions in Valence-Arousal Space

Published: 13 October 2015 Publication History

Abstract

Previous works on image emotion analysis mainly focused on assigning a dominated emotion category or the average dimension values to an image for affective image classification and regression. However, this is often insufficient in many applications, as the emotions that are evoked in viewers by an image are highly subjective and different. In this paper, we propose to predict the continuous probability distribution of dimensional image emotions represented in valence-arousal space. By the statistical analysis on the constructed Image-Emotion-Social-Net dataset, we represent the emotion distribution as a Gaussian mixture model (GMM), which is estimated by the EM algorithm. Then we extract commonly used features of different levels for each image. Finally, we formulize the emotion distribution prediction as a multi-task shared sparse regression (MTSSR) problem, which is optimized by iteratively reweighted least squares. Besides, we introduce three baseline algorithms. Experiments conducted on the Image-Emotion-Social-Net dataset demonstrate the superiority of the proposed method, as compared to some state-of-the-art approaches.

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  • (2024)Adequate Prompting Improves Performance of Regression Models of Emotional ContentProceedings of the 2024 International Conference on Information Technology for Social Good10.1145/3677525.3678653(135-142)Online publication date: 4-Sep-2024
  • (2022)Emotional Semantics-Preserved and Feature-Aligned CycleGAN for Visual Emotion AdaptationIEEE Transactions on Cybernetics10.1109/TCYB.2021.306275052:10(10000-10013)Online publication date: Oct-2022
  • (2022)TERMS: textual emotion recognition in multidimensional spaceApplied Intelligence10.1007/s10489-022-03567-453:3(2673-2693)Online publication date: 11-May-2022
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      cover image ACM Conferences
      MM '15: Proceedings of the 23rd ACM international conference on Multimedia
      October 2015
      1402 pages
      ISBN:9781450334594
      DOI:10.1145/2733373
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      Published: 13 October 2015

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      Author Tags

      1. gaussian mixture model
      2. image emotion distribution
      3. sparse regression
      4. valence-arousal

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      MM '15: ACM Multimedia Conference
      October 26 - 30, 2015
      Brisbane, Australia

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      MM '15 Paper Acceptance Rate 56 of 252 submissions, 22%;
      Overall Acceptance Rate 2,145 of 8,556 submissions, 25%

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      Cited By

      View all
      • (2024)Adequate Prompting Improves Performance of Regression Models of Emotional ContentProceedings of the 2024 International Conference on Information Technology for Social Good10.1145/3677525.3678653(135-142)Online publication date: 4-Sep-2024
      • (2022)Emotional Semantics-Preserved and Feature-Aligned CycleGAN for Visual Emotion AdaptationIEEE Transactions on Cybernetics10.1109/TCYB.2021.306275052:10(10000-10013)Online publication date: Oct-2022
      • (2022)TERMS: textual emotion recognition in multidimensional spaceApplied Intelligence10.1007/s10489-022-03567-453:3(2673-2693)Online publication date: 11-May-2022
      • (2021)Curriculum CycleGAN for Textual Sentiment Domain Adaptation with Multiple SourcesProceedings of the Web Conference 202110.1145/3442381.3449981(541-552)Online publication date: 19-Apr-2021
      • (2021)Affective Image Content Analysis: Two Decades Review and New PerspectivesIEEE Transactions on Pattern Analysis and Machine Intelligence10.1109/TPAMI.2021.3094362(1-1)Online publication date: 2021
      • (2021)Training Affective Computer Vision Models by Crowdsourcing Soft-Target LabelsCognitive Computation10.1007/s12559-021-09936-413:5(1363-1373)Online publication date: 27-Sep-2021
      • (2020)CorrNet: Fine-Grained Emotion Recognition for Video Watching Using Wearable Physiological SensorsSensors10.3390/s2101005221:1(52)Online publication date: 24-Dec-2020
      • (2020)Emotion Detection in Online Social Networks: A Multilabel Learning ApproachIEEE Internet of Things Journal10.1109/JIOT.2020.30043767:9(8133-8143)Online publication date: Sep-2020
      • (2019)LUCFER: A Large-Scale Context-Sensitive Image Dataset for Deep Learning of Visual Emotions2019 IEEE Winter Conference on Applications of Computer Vision (WACV)10.1109/WACV.2019.00180(1645-1654)Online publication date: Jan-2019
      • (2019)Research on Sentiment Classification of Active Scene Images Based on DNN2019 International Conference on Virtual Reality and Intelligent Systems (ICVRIS)10.1109/ICVRIS.2019.00049(169-172)Online publication date: Sep-2019
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