Matches in SemOpenAlex for { <https://semopenalex.org/work/W2891394872> ?p ?o ?g. }
- W2891394872 endingPage "35" @default.
- W2891394872 startingPage "1" @default.
- W2891394872 abstract "Stress is a major concern in daily life, as it imposes significant and growing health and economic costs on society every year. Stress and driving are a dangerous combination and can lead to life-threatening situations, evidenced by the large number of road traffic crashes that occur every year due to driver stress. In addition, the rate of general health issues caused by work-related chronic stress in drivers who work in public and private transport is greater than in many other occupational groups. An in-vehicle warning system for driver stress levels is needed to continuously predict dangerous driving situations and proactively alert drivers to ensure safe and comfortable driving. As a result of the recent developments in ambient intelligence, such as sensing technologies, pervasive devices, context recognition, and communications, driver stress can be automatically detected using multimodal measurements. This critical review investigates the state of the art of techniques and achievements for automatic driver stress level detection based on multimodal sensors and data. In this work, the most widely used data followed by frequent and highly performed selected features to detect driver stress levels are analyzed and presented. This review also discusses key methodological issues and gaps that hinder the implementation of driver stress detection systems and offers insights into future research directions." @default.
- W2891394872 created "2018-09-27" @default.
- W2891394872 creator A5001328179 @default.
- W2891394872 creator A5015152477 @default.
- W2891394872 creator A5053074581 @default.
- W2891394872 creator A5063750580 @default.
- W2891394872 creator A5085514504 @default.
- W2891394872 date "2018-09-04" @default.
- W2891394872 modified "2023-10-14" @default.
- W2891394872 title "A Critical Review of Proactive Detection of Driver Stress Levels Based on Multimodal Measurements" @default.
- W2891394872 cites W1495179152 @default.
- W2891394872 cites W1506560185 @default.
- W2891394872 cites W1523029986 @default.
- W2891394872 cites W1546310160 @default.
- W2891394872 cites W1794790026 @default.
- W2891394872 cites W1817561967 @default.
- W2891394872 cites W1889104906 @default.
- W2891394872 cites W1964029730 @default.
- W2891394872 cites W1965257822 @default.
- W2891394872 cites W1969445141 @default.
- W2891394872 cites W1969783622 @default.
- W2891394872 cites W1973667933 @default.
- W2891394872 cites W1973668329 @default.
- W2891394872 cites W1977876616 @default.
- W2891394872 cites W1979235312 @default.
- W2891394872 cites W1979613648 @default.
- W2891394872 cites W1979622578 @default.
- W2891394872 cites W1980244899 @default.
- W2891394872 cites W1980845268 @default.
- W2891394872 cites W1981918735 @default.
- W2891394872 cites W1984804236 @default.
- W2891394872 cites W1984847956 @default.
- W2891394872 cites W1987654648 @default.
- W2891394872 cites W1990422851 @default.
- W2891394872 cites W1991662410 @default.
- W2891394872 cites W1993061038 @default.
- W2891394872 cites W1993837778 @default.
- W2891394872 cites W1998627270 @default.
- W2891394872 cites W2000503364 @default.
- W2891394872 cites W2018613899 @default.
- W2891394872 cites W2025623975 @default.
- W2891394872 cites W2026471278 @default.
- W2891394872 cites W2026535637 @default.
- W2891394872 cites W2029717291 @default.
- W2891394872 cites W2031590924 @default.
- W2891394872 cites W2033387503 @default.
- W2891394872 cites W2039606045 @default.
- W2891394872 cites W2043756605 @default.
- W2891394872 cites W2047761114 @default.
- W2891394872 cites W2055818191 @default.
- W2891394872 cites W2056239517 @default.
- W2891394872 cites W2059267421 @default.
- W2891394872 cites W2067583143 @default.
- W2891394872 cites W2067689261 @default.
- W2891394872 cites W2073669264 @default.
- W2891394872 cites W2074047021 @default.
- W2891394872 cites W2076937857 @default.
- W2891394872 cites W2077512056 @default.
- W2891394872 cites W2079155753 @default.
- W2891394872 cites W2081617977 @default.
- W2891394872 cites W2084653333 @default.
- W2891394872 cites W2085179035 @default.
- W2891394872 cites W2086516619 @default.
- W2891394872 cites W2093135704 @default.
- W2891394872 cites W2094150432 @default.
- W2891394872 cites W2094243516 @default.
- W2891394872 cites W2095970154 @default.
- W2891394872 cites W2096859383 @default.
- W2891394872 cites W2100441016 @default.
- W2891394872 cites W2108899349 @default.
- W2891394872 cites W2116869495 @default.
- W2891394872 cites W2117866167 @default.
- W2891394872 cites W2130788374 @default.
- W2891394872 cites W2131274108 @default.
- W2891394872 cites W2133589238 @default.
- W2891394872 cites W2145104872 @default.
- W2891394872 cites W2154897536 @default.
- W2891394872 cites W2156736318 @default.
- W2891394872 cites W2157643752 @default.
- W2891394872 cites W2158792595 @default.
- W2891394872 cites W2165058809 @default.
- W2891394872 cites W2167101736 @default.
- W2891394872 cites W2167806179 @default.
- W2891394872 cites W2171801645 @default.
- W2891394872 cites W2172147742 @default.
- W2891394872 cites W2184481998 @default.
- W2891394872 cites W2292302432 @default.
- W2891394872 cites W2329765882 @default.
- W2891394872 cites W2522146934 @default.
- W2891394872 cites W2554633456 @default.
- W2891394872 cites W2921164671 @default.
- W2891394872 cites W4248107834 @default.
- W2891394872 doi "https://doi.org/10.1145/3186585" @default.
- W2891394872 hasPublicationYear "2018" @default.
- W2891394872 type Work @default.
- W2891394872 sameAs 2891394872 @default.
- W2891394872 citedByCount "61" @default.
- W2891394872 countsByYear W28913948722019 @default.