A personalized probabilistic point-process nonlinear model using heartbeat dynamics achieved an overall accuracy of 79.29% in recognizing four emotional states during short-time visual stimuli.
Observational (n=30)
No
A personalized probabilistic point-process nonlinear model can accurately characterize emotional states in real-time using only short-term heartbeat dynamics.
Emotion recognition through computational modeling and analysis of physiological signals has been widely investigated in the last decade. Most of the proposed emotion recognition systems require relatively long-time series of multivariate records and do not provide accurate real-time characterizations using short-time series. To overcome these limitations, we propose a novel personalized probabilistic framework able to characterize the emotional state of a subject through the analysis of heartbeat dynamics exclusively. The study includes thirty subjects presented with a set of standardized images gathered from the international affective picture system, alternating levels of arousal and valence. Due to the intrinsic nonlinearity and nonstationarity of the RR interval series, a specific point-process model was devised for instantaneous identification considering autoregressive nonlinearities up to the third-order according to the Wiener-Volterra representation, thus tracking very fast stimulus-response changes. Features from the instantaneous spectrum and bispectrum, as well as the dominant Lyapunov exponent, were extracted and considered as input features to a support vector machine for classification. Results, estimating emotions each 10 seconds, achieve an overall accuracy in recognizing four emotional states based on the circumplex model of affect of 79.29%, with 79.15% on the valence axis, and 83.55% on the arousal axis.
Valenza et al. (Wed,) conducted a observational in Healthy subjects (emotion recognition) (n=30). Personalized probabilistic point-process nonlinear model (NARI) vs. Linear point-process model was evaluated on Overall accuracy in recognizing four emotional states (sadness, anger, happiness, relaxation). A personalized probabilistic point-process nonlinear model using heartbeat dynamics achieved an overall accuracy of 79.29% in recognizing four emotional states during short-time visual stimuli.