This work is licensed under the Creative Commons Attribution 4.0 International License.
G Kress, T van Leeuwen, Multimodal Discourse: The Modes and Media of Contemporary Communication. London: Arnold, 2006.KressGvan LeeuwenTLondonArnold2006Search in Google Scholar
T van Leeuwen, Critical analysis of multimodal discourse, Chapelle. Encyclopedia of Applied Linguistics. Oxford: Wiley Blackwell, pp.1–5, 2013.van LeeuwenTOxfordWiley Blackwell152013Search in Google Scholar
J Lin. Multimodal Criticism Discourse Analysis: Theoretical Exploration, Methodological Thinking and Prospects. Journal of Shanghai Jiaotong University (Social Science Edition), vol. 5, pp. 31–39, 2019.LinJMultimodal Criticism Discourse Analysis: Theoretical Exploration, Methodological Thinking and Prospects(Social Science Edition),531392019Search in Google Scholar
D Machin, A Mayr, How to Do Critical Discourse Analysis: A Multimodal Introduction. London: Sage, 2012.MachinDMayrALondonSage2012Search in Google Scholar
D Machin, What is multimodal critical discourse studies. Critical Discourse Studies, 2013, vol.10, no.4, pp. 347–355, 2013.MachinDWhat is multimodal critical discourse studies20131043473552013Search in Google Scholar
D Machin, The need for a social and affordance-driven multimodal critical discourse studies, Discourse&Society, vol.27, no.3, pp. 322–334, 2016.MachinDThe need for a social and affordance-driven multimodal critical discourse studies2733223342016Search in Google Scholar
H L Tian, Y Y Pan, From meaning to intention-multimodal discourse analysis to the new development of multimodal critical discourse analysis. Shandong Foreign Language Teaching, vol. 1, no. 1, 23–33, 2018.TianH LPanY YFrom meaning to intention-multimodal discourse analysis to the new development of multimodal critical discourse analysis1123332018Search in Google Scholar
G L Qian, Aesthetic Linguistics-Language Beauty and Speech Beauty. Beijing: Higher Education Press, 2004.QianG LBeijingHigher Education Press2004Search in Google Scholar
D L Zhang, Situational Context in Multimodal Discourse. Journal of PLA University of Foreign Languages, vol.41, no.3, pp.149–159, 2018.ZhangD LSituational Context in Multimodal Discourse4131491592018Search in Google Scholar
M.A.K Halliday, An Introduction to Functional Grammar. 2nd Edition, London: Edward Arnold, 1994.HallidayM.A.K2nd EditionLondonEdward Arnold1994Search in Google Scholar
M Dong, X. L Yuan, The Construction of a Multi-modal Aesthetic Critical Discourse Analysis Framework, Foreign Language Education, vol.42, no.1, pp.77–82, 2021.DongMYuanX. LThe Construction of a Multi-modal Aesthetic Critical Discourse Analysis Framework42177822021Search in Google Scholar
R, Plutchik, The nature of emotions: Human emotions have deep evolutionary roots, a fact that may explain their complexity and provide tools. American scientist, vol.89, no. 4, pp. 344–350, 2001.PlutchikRThe nature of emotions: Human emotions have deep evolutionary roots, a fact that may explain their complexity and provide tools8943443502001Search in Google Scholar
S Poria, E Cambria, R Bajpai, et al., A review of affective computing: From unimodal analysis to multimodal fusion, Information Fusion, vol.37, pp.98–125, 2017.PoriaSCambriaEBajpaiRA review of affective computing: From unimodal analysis to multimodal fusion37981252017Search in Google Scholar
X J Peng, Multi-modal Affective Computing: A Comprehensive Survey, Journal of Hengyang Normal University, vol.039, no.3, pp.31–36, 2018.PengX JMulti-modal Affective Computing: A Comprehensive Survey039331362018Search in Google Scholar
M Soleymani, D Garcia, B Jou, et al., A survey of multimodal sentiment analysis, Image and Vision Computing, vol. 65, pp. 3–14, 2017.SoleymaniMGarciaDJouBA survey of multimodal sentiment analysis653142017Search in Google Scholar
M G Huddar, S S Sannakki, V S Rajpurohit, A survey of computational approaches and challenges in multi-16 modal sentiment analysis, Int J Comput Sci Eng, vol. 7, no. 1, pp. 876–883, 2019.HuddarM GSannakkiS SRajpurohitV SA survey of computational approaches and challenges in multi-16 modal sentiment analysis718768832019Search in Google Scholar
J Gao, P Li, Z Chen, et al., A survey on deep learning for multimodal data fusion, Neural Computation, vol.32, no. 5, pp. 829–864, 2020.GaoJLiPChenZA survey on deep learning for multimodal data fusion3258298642020Search in Google Scholar
W L Zheng, B L Lu, Investigating critical frequency bands and channels for EEG-based emotion recognition with deep neural networks, IEEE Transactions on Autonomous Mental Development, vol. 7, no.3, pp.162–175, 2015.ZhengW LLuB LInvestigating critical frequency bands and channels for EEG-based emotion recognition with deep neural networks731621752015Search in Google Scholar
S Li, W Deng, Deep facial expression recognition: A survey, IEEE Transactions on Affective Computing, 2020.LiSDengWDeep facial expression recognition: A survey2020Search in Google Scholar
N Xu, W Mao, G Chen. Multi-interactive memory network for aspect based multimodal sentiment analysis, Proceedings of the AAAI Conference on Artificial Intelligence, Hawaii, USA, 17 Jul, 2019. Menlo Park: AAAI, vol. 33, pp. 371–378, 2019.XuNMaoWChenGProceedings of the AAAI Conference on Artificial IntelligenceHawaii, USA17 Jul, 2019Menlo ParkAAAI333713782019Search in Google Scholar
W Yu, H Xu, F Meng, et al. CH-SIMS: A Chinese Multimodal Sentiment Analysis Dataset with Fine-grained Annotation of Modality, Proceedings of the 58th. Annual Meeting of the Association for Computational Linguistics, Online, July, 2020. Stroudsburg: ACL, pp. 3718–3727, 2020.YuWXuHMengFProceedings of the 58th. Annual Meeting of the Association for Computational Linguistics, OnlineJuly, 2020Stroudsburg: ACL371837272020Search in Google Scholar
X Y Feng, D Huang, S X Cui, et al., Spatial-temporal attention network for facial expression recognition, Journal of Northwest University (Natural Science Edition), vol. 50, no. 3, pp.319–327, 2020.FengX YHuangDCuiS XSpatial-temporal attention network for facial expression recognition(Natural Science Edition),5033193272020Search in Google Scholar
J H Lu, S M Zhang, J L Zhao, Facial Expression Recognition Based on CNN Ensemble, Journal of Qingdao University (Engineering & Technology Edition), vol.35, no.2, pp.24–29+42, 2020.LuJ HZhangS MZhaoJ LFacial Expression Recognition Based on CNN Ensemble(Engineering & Technology Edition),3522429+422020Search in Google Scholar
R Dai, Facial Recognition Method Based on Facial Physiological Features and Deep Learning, Journal of Chongqing University of Technology (Natural Science), vol.34, no.6, pp. 146–153, 2020,34(6):146–153DaiRFacial Recognition Method Based on Facial Physiological Features and Deep Learning(Natural Science),346146153202034(6):146–153Search in Google Scholar
Z Li, Y Fan, B Jiang, et al., A survey on sentiment analysis and opinion mining for social multimedia, Multimedia Tools and Applications, vol. 78, no. 6, pp. 6939–6967, 2019.LiZFanYJiangBA survey on sentiment analysis and opinion mining for social multimedia786693969672019Search in Google Scholar