Maier, MarcoMarcoMaierElsner, DanielDanielElsnerMarouane, ChadlyChadlyMarouaneZehnle, MeikeMeikeZehnleFuchs, ChristophChristophFuchs2023-04-132023-04-132019https://www.alexandria.unisg.ch/handle/20.500.14171/99425Flow is an affective state of optimal experience, total immersion and high productivity. While often associated with (professional) sports, it is a valuable information in several scenarios ranging from work environments to user experience evaluations, and we expect it to be a potential reward signal for human-in-the-loop reinforcement learning systems. Traditionally, flow has been assessed through questionnaires which prevents its use in online, real-time environments. In this work, we present our findings towards estimating a user’s flow state based on physiological signals measured using wearable devices. We conducted a study with participants playing the game Tetris in varying difficulty levels, leading to boredom, stress, and flow. Using an end-to-end deep learning architecture, we achieve an accuracy of 67.50% in recognizing high flow vs. low flow states and 49.23% in distinguishing all three affective states boredom, flow, and stress.enDeepFlow: Detecting Optimal User Experience From Physiological Data Using Deep Neural Networksconference paper