Technical Name |
An integrated system of AI affective computingmultimodal physiological signal in patients with high-risk of cardiovascular disorder,the development of a home-based biofeedback intervention. |
Project Operator |
Kaohsiung Medical University |
Project Host |
方偉騏、余松年 |
Summary |
ECG, PPGEEG are adopted in the system. Combining with the physiological parametersthe mental status extracted by AI recognition model, the information can be used on biofeedback treatment. Finally, a platform with multimodal signal measuringaffective computing engine using deep learning ASIC chip are applied for portablereal-time mental treatment.
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Scientific Breakthrough |
(1)Adding Baseline NormalizationCNN accelerated chip to recognize different emotions between subjects. (2) Using 8 EEG channels of frontaltemporal to choose feature selection
method with small operation load which are suitable for real hardware system. (3) Combined with 28 nm prospective cell-based processes to produce fast, low power consumptionsmall deep learning arithmetic |
Industrial Applicability |
The system aims to develop an integrated system of affective computingmultimodal physiological signal measuring to detect the emotionphysiological response of high-risk patients with cardiovascular disease for disease prevention purpose. By monitoring personal mentalphysical health status at homein the hospital, user can perform the mental relieving exercise with notifying mecha |
Keyword |
Cardiovascular disease emotion recognition biofeedbcak electroencephalography electrocardiography photoplethysmography multiple physiological signals artificial intelligence affective computing CNN model |