TY - JOUR AB - Purpose Happiness is an important mental emotion and yet becoming a major health concern nowadays. For this reason, better recognizing the objective understanding of how humans respond to event-related observations in their daily lives is especially important.Design/methodology/approach This paper uses non-intrusive technology (hyperspectral imaging [HSI]) for happiness recognition. Experimental setup is conducted for data collection in real-life environments where observers are showing spontaneous expressions of emotions (calm, happy, unhappy: angry) during the experimental process. Based on facial imaging captured from HSI, this work collects our emotional database defined as SWU Happiness DB and studies whether the physiological signal (i.e. tissue oxygen saturation [StO2], obtained by an optical absorption model) can be used to recognize observer happiness automatically. It proposes a novel method to capture local dynamic patterns (LDP) in facial regions, introducing local variations in facial StO2 to fully use physiological characteristics with regard to hyperspectral patterns. Further, it applies a linear discriminant analysis-based support vector machine to recognize happiness patterns.Findings The results show that the best classification accuracy is 97.89 per cent, objectively demonstrating a feasible application of LDP features on happiness recognition.Originality/value This paper proposes a novel feature (i.e. LDP) to represent the local variations in facial StO2 for modeling the active happiness. It provides a possible extension to the promising practical application. VL - 37 IS - 1 SN - 0264-4401 DO - 10.1108/EC-03-2019-0127 UR - https://doi.org/10.1108/EC-03-2019-0127 AU - Hao Min AU - Liu Guangyuan AU - Xie Desheng AU - Ye Ming AU - Cai Jing PY - 2019 Y1 - 2019/01/01 TI - Modeling observer happiness from facial hyperspectral sensor T2 - Engineering Computations PB - Emerald Publishing Limited SP - 161 EP - 180 Y2 - 2024/04/23 ER -