A Comparison of Lane Marking Detection Quality and View Range between Daytime and Night-Time Conditions by Machine Vision
Abstract
:1. Introduction
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- A statistically significant difference of detection quality and view range of lane detection system exists between daytime and night-time conditions;
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- Detection quality of lane markings is “better” during night-time compared to daytime;
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- View range of the machine-vision system will be longer during daytime compared to night-time.
2. Materials and Methods
2.1. Apparatus
2.2. Test Road Sections and Procedure
2.3. Data Analysis
3. Results
3.1. Quality of Lane Markings’ Detection
3.2. View Range of Lane Markings
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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# | Road Lenght (km) | Markings Width (cm) | Length of the Middle Line (km) | Age of the Marking | Length of the Edge Line (km) |
---|---|---|---|---|---|
1 | 32.21 | 15 | Solid: 20.61 Dashed: 11.60 | Middle: <6 months Edge: >1 year | Solid: 11.73 |
2 | 20.53 | 15 | Solid: 14.68 Dashed: 5.85 | Middle: <6 months Edge: >1 year | Solid: 11.30 |
3 | 38.05 | 15 | Solid: 15.00 Dashed: 23.05 | Middle: <6 months Edge: >1 year | Solid: 22.27 |
4 | 30.01 | 15 | Solid: 30.08 | Middle: >1 year | - |
Quality Level | Night-Time | Daytime | Total | ||
---|---|---|---|---|---|
Middle | Edge | Middle | Edge | ||
0 | 136,547 | 269,928 | 124,530 | 330,601 | 861,606 |
1 | 21,912 | 7968 | 22,029 | 7767 | 59,676 |
2 | 76,333 | 111,206 | 103,074 | 69,030 | 359,643 |
3 | 523,046 | 177,796 | 508,205 | 159,500 | 1,368,547 |
Total | 757,838 | 566,898 | 757,838 | 566,898 | 2,649,472 |
Road | Marking Quality | Daytime | Night-Time | Daytime–Night-Time |
---|---|---|---|---|
1 | 0 | 32.61% | 31.38% | 1.24% |
1 | 2.70% | 2.99% | −0.29% | |
2 | 19.60% | 17.70% | 1.89% | |
3 | 45.10% | 47.93% | −2.84% | |
2 | 0 | 46.48% | 39.62% | 6.86% |
1 | 3.18% | 2.89% | 0.29% | |
2 | 6.98% | 10.92% | −3.94% | |
3 | 43.36% | 46.57% | −3.21% | |
3 | 0 | 28.59% | 22.98% | 5.60% |
1 | 1.50% | 1.43% | 0.07% | |
2 | 11.31% | 15.57% | −4.26% | |
3 | 58.61% | 60.02% | −1.41% | |
4 | 0 | 53.25% | 47.07% | −0.42% |
1 | 1.48% | 1.64% | 0.00% | |
2 | 16.04% | 13.67% | 3.94% | |
3 | 29.23% | 37.62% | −3.52% |
Road | Comparison | Middle Line | Edge Line | ||||
---|---|---|---|---|---|---|---|
N | Z | Asymp. Sig.(2-Tailed) | N | Z | Asymp. Sig.(2-Tailed) | ||
1 | Day < Night | 59.899 | −4.62 | <0.05 | 45.890 | −20.532 | <0.05 |
Day > Night | 40.474 | 48.913 | |||||
Day = Night | 98.369 | 103.939 | |||||
2 | Day < Night | 20.177 | −35.144 | <0.05 | 36.485 | −109.836 | <0.05 |
Day > Night | 32.018 | 13.910 | |||||
Day = Night | 79.705 | 81.505 | |||||
3 | Day < Night | 38.225 | −14.26 | <0.05 | 85.202 | −76.954 | <0.05 |
Day > Night | 40.965 | 62.247 | |||||
Day = Night | 157.066 | 88.807 | |||||
4 | Day < Night | 47.808 | −8.297 | <0.05 | - | - | - |
Day > Night | 45.717 | - | |||||
Day = Night | 97.415 | - |
Line/Condition | Mean | Std. | 95% Confidence Interval | |
---|---|---|---|---|
Lower Bound | Upper Bound | |||
Road 1 | ||||
Middle line/Night-time | 33.16 | 21.89 | 33.07 | 33.26 |
Edge line/Night-time | 15.67 | 20.54 | 15.58 | 15.76 |
Middle line/Daytime | 38.93 | 24.66 | 38.82 | 39.04 |
Edge line/Daytime | 21.43 | 27.25 | 21.31 | 21.55 |
Road 2 | ||||
Middle line/Night-time | 33.83 | 20.58 | 33.72 | 33.94 |
Edge line/Night-time | 9.58 | 15.72 | 9.49 | 9.66 |
Middle line/Daytime | 41.57 | 24.64 | 41.44 | 41.71 |
Edge line/Daytime | 6.09 | 16.77 | 6.00 | 6.18 |
Road 3 | ||||
Middle line/Night-time | 42.68 | 22.82 | 42.58 | 42.77 |
Edge line/Night-time | 25.79 | 25.19 | 25.69 | 25.89 |
Middle line/Daytime | 46.43 | 24.17 | 46.34 | 46.53 |
Edge line/Daytime | 25.53 | 29.11 | 25.42 | 25.65 |
Road 4 | ||||
Middle line/Night-time | 26.60 | 23.64 | 26.49 | 26.71 |
Middle line/Daytime | 30.72 | 27.96 | 30.59 | 30.84 |
Road | Middle Line | Edge Line | ||||||
---|---|---|---|---|---|---|---|---|
Daytime > Night | Daytime < Night | Daytime > Night | Daytime < Night | |||||
Average Diff. (m) | Std. | Average Diff. (m) | Std. | Average Diff. (m) | Std. | Average Diff. (m) | Std. | |
1 | 26.43 | 18.36 | 22.97 | 17.30 | 37.40 | 21.03 | 21.31 | 17.51 |
2 | 31.39 | 25.90 | 26.26 | 24.00 | 38.80 | 20.93 | 29.30 | 15.12 |
3 | 27.68 | 21.03 | 24.95 | 18.03 | 40.71 | 25.31 | 32.74 | 22.47 |
4 | 30.67 | 19.77 | 30.00 | 18.39 | - | - | - | - |
Average | 29.04 | 21.26 | 26.04 | 19.43 | 38.97 | 22.42 | 27.78 | 18.36 |
Road/Pairs | Paired Differences | t | P (2-Tailed) | |||||
---|---|---|---|---|---|---|---|---|
Mean | Std. | Std. Error Mean | 95% Confidence Interval of the Difference | |||||
Lower | Upper | |||||||
1 | Middle line-Night-time vs. Middle line-Daytime | −5.76 | 29.51 | 0.06 | −5.89 | −5.63 | −87.09 | <0.05 |
2 | Edge line-Night-time vs. Edge line-Daytime | −5.76 | 27.11 | 0.06 | −5.88 | −5.64 | −94.85 | <0.05 |
3 | Middle line-Night-time vs. Middle line-Daytime | −7.74 | 30.22 | 0.08 | −7.90 | −7.57 | −93.02 | <0.05 |
4 | Edge line-Night-time vs. Edge line-Daytime | 3.49 | 22.76 | 0.06 | 3.36 | 3.61 | 55.67 | <0.05 |
5 | Middle line-Night-time vs. Middle line-Daytime | −3.75 | 32.58 | 0.06 | −3.88 | −3.62 | −56.04 | <0.05 |
6 | Edge line-Night-time vs. Edge line-Daytime | 0.25 | 35.78 | 0.07 | 0.11 | 0.40 | 3.49 | <0.05 |
7 | Middle line-Night-time vs. Middle line-Daytime | −4.12 | 32.50 | 0.07 | −4.26 | −3.97 | −55.39 | <0.05 |
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Babić, D.; Babić, D.; Fiolić, M.; Eichberger, A.; Magosi, Z.F. A Comparison of Lane Marking Detection Quality and View Range between Daytime and Night-Time Conditions by Machine Vision. Energies 2021, 14, 4666. https://doi.org/10.3390/en14154666
Babić D, Babić D, Fiolić M, Eichberger A, Magosi ZF. A Comparison of Lane Marking Detection Quality and View Range between Daytime and Night-Time Conditions by Machine Vision. Energies. 2021; 14(15):4666. https://doi.org/10.3390/en14154666
Chicago/Turabian StyleBabić, Darko, Dario Babić, Mario Fiolić, Arno Eichberger, and Zoltan Ferenc Magosi. 2021. "A Comparison of Lane Marking Detection Quality and View Range between Daytime and Night-Time Conditions by Machine Vision" Energies 14, no. 15: 4666. https://doi.org/10.3390/en14154666
APA StyleBabić, D., Babić, D., Fiolić, M., Eichberger, A., & Magosi, Z. F. (2021). A Comparison of Lane Marking Detection Quality and View Range between Daytime and Night-Time Conditions by Machine Vision. Energies, 14(15), 4666. https://doi.org/10.3390/en14154666