It is already known that both auditory and visual stimulus is able to convey emotions in human mind to different extent. The strength or intensity of the emotional arousal vary depending on the type of stimulus chosen. In this study, we try to investigate the emotional arousal in a cross-modal scenario involving both auditory and visual stimulus while studying their source characteristics. A robust fractal analytic technique called Detrended Fluctuation Analysis (DFA) and its 2D analogue has been used to characterize three (3) standardized audio and video signals quantifying their scaling exponent corresponding to positive and negative valence. It was found that there is significant difference in scaling exponents corresponding to the two different modalities. Detrended Cross Correlation Analysis (DCCA) has also been applied to decipher degree of cross-correlation among the individual audio and visual stimulus. This is the first of its kind study which proposes a novel algorithm with which emotional arousal can be classified in cross-modal scenario using only the source audio and visual signals while also attempting a correlation between them.
翻译:人们已经知道,听力和视觉刺激能够在不同程度上传播人类思想中的情感。情绪刺激的力量或强度因所选择的刺激类型而不同。在本研究中,我们试图在研究其源特性时,在涉及听力和视觉刺激的跨模式情景中调查情感刺激。一种叫作分解结构分析(DFA)及其2D模拟的强力分解技术已经用来定性三(3)个标准化的视听信号,用数量表示其缩放指数与正值和负值相对应的缩放指数。发现在与两种不同模式相对应的缩放指数方面有很大差异。分解的交叉关联分析(DCCA)也被用于解析个人听力和视觉刺激之间的交叉联系程度。这是其同类研究中的第一个,它提出了一种新型算法,即仅使用源音和视觉信号,同时试图将情感振荡在跨模式情景中进行分类。