Redirigiendo al acceso original de articulo en 22 segundos...
Inicio  /  Information  /  Vol: 13 Par: 9 (2022)  /  Artículo
ARTÍCULO
TITULO

A Cognitive Model to Anticipate Variations of Situation Awareness and Attention for the Takeover in Highly Automated Driving

Marlene Susanne Lisa Scharfe-Scherf    
Sebastian Wiese and Nele Russwinkel    

Resumen

The development of highly automated driving requires dynamic approaches that anticipate the cognitive state of the driver. In this paper, a cognitive model is developed that simulates a spectrum of cognitive processing and the development of situation awareness and attention guidance in different takeover situations. In order to adapt cognitive assistance systems according to individuals in different situations, it is necessary to understand and simulate dynamic processes that are performed during a takeover. To validly represent cognitive processing in a dynamic environment, the model covers different strategies of cognitive and visual processes during the takeover. To simulate the visual processing in detail, a new module for the visual attention within different traffic environments is used. The model starts with a non-driving-related task, attends the takeover request, makes an action decision and executes the corresponding action. It is evaluated against empirical data in six different driving scenarios, including three maneuvers. The interaction with different dynamic traffic scenarios that vary in their complexity is additionally represented within the model. Predictions show variances in reaction times. Furthermore, a spectrum of driving behavior in certain situations is represented and how situation awareness is gained during the takeover process. Based on such a cognitive model, an automated system could classify the driver?s takeover readiness, derive the expected takeover quality and adapt the cognitive assistance for takeovers accordingly to increase safety.

 Artículos similares

       
 
Agnieszka Garbacz, Boguslaw Stelcer, Michalina Wielgosik and Magdalena Czlapka-Matyasik    
This cross-sectional study investigated interactions among sugar-related dietary patterns (DPs), personality traits, and cognitive?behavioural and emotional functioning. The study involved working-age women aged 18?54. Data were collected between Winter ... ver más
Revista: Applied Sciences

 
Artur Chudzik and Andrzej W. Przybyszewski    
Neurodegenerative diseases (NDs), including Parkinson?s and Alzheimer?s disease, pose a significant challenge to global health, and early detection tools are crucial for effective intervention. The adaptation of online screening forms and machine learnin... ver más
Revista: Applied Sciences

 
Ruinan Chen, Jie Hu, Xinkai Zhong, Minchao Zhang and Linglei Zhu    
Existing environment modeling approaches and trajectory planning approaches for intelligent vehicles are difficult to adapt to multiple scenarios, as scenarios are diverse and changeable, which may lead to potential risks. This work proposes a cognitive ... ver más
Revista: Applied Sciences

 
Pratham Grover, Kunal Chaturvedi, Xing Zi, Amit Saxena, Shiv Prakash, Tony Jan and Mukesh Prasad    
Alzheimer?s disease is a chronic neurodegenerative disease that causes brain cells to degenerate, resulting in decreased physical and mental abilities and, in severe cases, permanent memory loss. It is considered as the most common and fatal form of deme... ver más
Revista: Algorithms

 
Muhammad Irfan, Seyed Shahrestani and Mahmoud Elkhodr    
Dementia, including Alzheimer?s Disease (AD), is a complex condition, and early detection remains a formidable challenge due to limited patient records and uncertainty in identifying relevant features. This paper proposes a machine learning approach to a... ver más
Revista: Applied Sciences