How to Keep Drivers Attentive during Level 2 Automation? Development and Evaluation of an HMI Concept Using Affective Elements and Message Framing
Abstract
:1. Introduction
- Does a time-based affective message concept improve drivers’ monitoring behavior (and NDRA engagement rate) compared to a baseline without affective messages?
- Does an affective message concept improve drivers’ reaction to a silent system malfunction compared to a baseline without affective messages?
2. Materials and Methods
2.1. HMI Design
2.1.1. Baseline Concept
2.1.2. Affective Message Concept (AMC)
2.2. Method
2.2.1. Experimental Design
2.2.2. Dependent Variables
2.2.3. Apparatus
2.2.4. Experimental Track
2.2.5. Procedure and Instructions
2.2.6. Statistical Analysis
2.2.7. Sample
3. Results
3.1. Monitoring Behavior
3.2. NDRA Engagement
3.3. System Malfunction Scenario
3.4. Subjective Data
- I have to monitor the system continuously while driving with City Assistant. (correct answers: 30)
- When City Assistant is activated, the system is responsible for ensuring driving safety. (correct answers: 28)
- I may perform non-driving related activities while driving with City Assistant. (correct answers: 30)
4. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Dependent Variable | Description |
---|---|
Driving Data | |
Take-Over Time [s] | Time between start of malfunction and deactivation of ADS |
Crash Rate [-] | Proportion of crashes during the malfunction |
Eye-Tracking/Video Data | |
Attention Ratio Road Ahead [%] | Central TV screen, including HUD but without IC |
Attentiveness [1,2,3,4,5] | Coding scheme (see Table 2) |
NDRA Engagement Ratio [%] | Share of participants with NDRA |
Subjective Data | |
Workload [-] | NASA raw TLX questionnaire |
User Experience [-] | AttrakDiff questionnaire |
Mode Awareness [-] | Retrospective interview |
Scenario Characteristics [-] | Four single items on a 5-point Likert scale |
Code | Title 3 |
---|---|
1 | Not distracted, driver does not perform an NDRA |
2 | Alternating NDRA and system monitoring |
3 | Short glances ahead, continuation of NDRA |
4 | No reaction, continuation of NDRA |
5 | Interruption of NDRA until situation is completed |
Reason | Advanced | Baseline | Total |
---|---|---|---|
Over-reliance | 1 | 8 | 9 |
Boredom | - | 3 | 3 |
Fatigue | - | 2 | 2 |
Mode Confusion | - | 1 | 1 |
Curiosity | 1 | - | 1 |
Measure | Baseline M (SD) | AMC M (SD) | Statistics | p-Value | αHolm |
---|---|---|---|---|---|
PQ: Pragmatic Quality | 1.21 (0.75) | 1.43 (0.68) | t(30) = 0.842 | p = 0.407 | αHolm = 0.050 |
HQ-I: Hedonic Quality—identity | 0.86 (0.68) | 1.26 (0.54) | Z = −2.282 | p = 0.022 | αHolm = 0.013 |
HQ-S: Hedonic Quality—stimulation | 0.33 (0.80) | 0.85 (0.57) | t(30) = 2.108 | p = 0.044 | αHolm = 0.017 |
ATT: Attractiveness | 1.36 (0.72) | 1.73 (0.55) | Z = −1.967 | p = 0.049 | αHolm = 0.025 |
Measure | Baseline Median | AMC Median | Statistics | p-Value | αHolm |
---|---|---|---|---|---|
Time Budget | 2.0 | 1.5 | Z = −0.529 | p = 0.597 | αHolm = 0.013 |
Criticality | 2.0 | 2.0 | Z = −0.377 | p = 0.706 | αHolm = 0.025 |
Complexity | 3.5 | 3.0 | Z = −0.332 | p = 0.740 | αHolm = 0.050 |
Predictability | 1.0 | 1.5 | Z = −0.420 | p = 0.674 | αHolm = 0.017 |
Statement | Median | Mean (SD) |
---|---|---|
I have adapted my system monitoring behavior when driving with the City Assistant because of the pop-up messages with emoticons. | 4 | 3.75 (0.93) |
I think the messages are effective to help me to concentrate on system monitoring when driving with City Assistant. | 4 | 3.69 (1.30) |
I think the messages are helpful for me to disengage from non-driving-related tasks when driving with City Assistant. | 4 | 3.69 (1.08) |
I felt less bored when I saw the pop-up messages when driving with City Assistant. | 4 | 3.31 (1.30) |
I felt less bored when I saw the emoticons when driving with City Assistant. | 4 | 3.44 (1.03) |
I was distracted because of the messages when driving with City Assistant. | 2 | 2.56 (1.03) |
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Hecht, T.; Zhou, W.; Bengler, K. How to Keep Drivers Attentive during Level 2 Automation? Development and Evaluation of an HMI Concept Using Affective Elements and Message Framing. Safety 2022, 8, 47. https://doi.org/10.3390/safety8030047
Hecht T, Zhou W, Bengler K. How to Keep Drivers Attentive during Level 2 Automation? Development and Evaluation of an HMI Concept Using Affective Elements and Message Framing. Safety. 2022; 8(3):47. https://doi.org/10.3390/safety8030047
Chicago/Turabian StyleHecht, Tobias, Weisi Zhou, and Klaus Bengler. 2022. "How to Keep Drivers Attentive during Level 2 Automation? Development and Evaluation of an HMI Concept Using Affective Elements and Message Framing" Safety 8, no. 3: 47. https://doi.org/10.3390/safety8030047
APA StyleHecht, T., Zhou, W., & Bengler, K. (2022). How to Keep Drivers Attentive during Level 2 Automation? Development and Evaluation of an HMI Concept Using Affective Elements and Message Framing. Safety, 8(3), 47. https://doi.org/10.3390/safety8030047