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电影《美国往事》音效特色的艺术解读
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作者 廖子璇 《经济研究导刊》 2013年第1期273-274,共2页
电影《美国往事》的音效特点有两个:第一,"声音焦点"把握准确,声效与画面配合自如,善于利用矛盾与冲突,夺人眼球,引起情感共鸣,甚至惊心动魄。电影主角的喜怒哀乐有一条明朗的"可视的情感波";而电影的声音焦点就是... 电影《美国往事》的音效特点有两个:第一,"声音焦点"把握准确,声效与画面配合自如,善于利用矛盾与冲突,夺人眼球,引起情感共鸣,甚至惊心动魄。电影主角的喜怒哀乐有一条明朗的"可视的情感波";而电影的声音焦点就是另一条"可听的情感波",二者合拍共振,悦目又愉耳,达到赏心的功效。第二",特定场景"中音乐素材质朴自然,配合画面,入情入理,显现出惊人的人文素养。电影上乘之作,凭借精美画面,抢先夺人眼球,呈现无尽美感;更能通过乐音与天籁,配合画面,相得益彰,掀起红男绿女情感之波澜,慰藉天下有心人之灵魂。 展开更多
关键词 声音素材 声音焦点 特定场景 情感波
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ANALYSIS OF AFFECTIVE ECG SIGNALS TOWARD EMOTION RECOGNITION 被引量:2
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作者 Xu Ya Liu Guangyuan +2 位作者 Hao Min Wen Wanhui Huang Xiting 《Journal of Electronics(China)》 2010年第1期8-14,共7页
Recently,as recognizing emotion has been one of the hallmarks of affective computing,more attention has been paid to physiological signals for emotion recognition.This paper presented an approach to emotion recognitio... Recently,as recognizing emotion has been one of the hallmarks of affective computing,more attention has been paid to physiological signals for emotion recognition.This paper presented an approach to emotion recognition using ElectroCardioGraphy(ECG) signals from multiple subjects.To collect reliable affective ECG data,we applied an arousal method by movie clips to make subjects experience specific emotions without external interference.Through precise location of P-QRS-T wave by continuous wavelet transform,an amount of ECG features was extracted sufficiently.Since feature selection is a combination optimization problem,Improved Binary Particle Swarm Optimization(IBPSO) based on neighborhood search was applied to search out effective features to improve classification results of emotion states with the help of fisher or K-Nearest Neighbor(KNN) classifier.In the experiment,it is shown that the approach is successful and the effective features got from ECG signals can express emotion states excellently. 展开更多
关键词 Emotion recognition ElectroCardioCraphy (ECG) signal Continuous wavelet transform Improved Binary Particle Swarm Optimization (IBPSO) Neighborhood search
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Using psychophysiological measures to recognize personal music emotional experience 被引量:2
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作者 Le-kai ZHANG Shou-qian SUN +2 位作者 Bai-xi XING Rui-ming LUO Ke-jun ZHANG 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2019年第7期964-975,共12页
Music can trigger human emotion.This is a psychophysiological process.Therefore,using psychophysiological characteristics could be a way to understand individual music emotional experience.In this study,we explore a n... Music can trigger human emotion.This is a psychophysiological process.Therefore,using psychophysiological characteristics could be a way to understand individual music emotional experience.In this study,we explore a new method of personal music emotion recognition based on human physiological characteristics.First,we build up a database of features based on emotions related to music and a database based on physiological signals derived from music listening including EDA,PPG,SKT,RSP,and PD variation information.Then linear regression,ridge regression,support vector machines with three different kernels,decision trees,k-nearest neighbors,multi-layer perceptron,and Nu support vector regression(NuSVR)are used to recognize music emotions via a data synthesis of music features and human physiological features.NuSVR outperforms the other methods.The correlation coefficient values are 0.7347 for arousal and 0.7902 for valence,while the mean squared errors are 0.023 23 for arousal and0.014 85 for valence.Finally,we compare the different data sets and find that the data set with all the features(music features and all physiological features)has the best performance in modeling.The correlation coefficient values are 0.6499 for arousal and 0.7735 for valence,while the mean squared errors are 0.029 32 for arousal and0.015 76 for valence.We provide an effective way to recognize personal music emotional experience,and the study can be applied to personalized music recommendation. 展开更多
关键词 MUSIC Emotion recognition Physiological signals Wavelet transform
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