International Conference on Pattern Recognition Systems (ICPRS-16) 2016
DOI: 10.1049/ic.2016.0028
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M2BMT: An Automated Ground Truth Generation Algorithm for Lane Detection

Abstract: Safety is one of the primary requirements of automotive manufactures and buyers and regulatory bodies are supporting this by mandating the safety features in vehicles. To achieve safety, multiple sensors such as vision cameras, radars, LIDAR and ultrasound devices are installed in the vehicle at various locations and sensor data is processed continuously using advanced algorithms. Validation of these algorithms is a critical requirement to ensure quality of the system. The present paper proposes an enhancement… Show more

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Cited by 3 publications
(2 citation statements)
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“…The mean accuracy results increase with a larger input image size until they stagnate after 256 px with 85.6 ±0.6 % to 84.2 ±2.5 % for 512 px. The VGG-16 topology achieves the most consistent results among all CNN topologies over all input image sizes with a mean accuracy of 85.2 %.The highest single results are achieved by the AlexNet topology together with an input image size of 256 px (86.4 ±0.5 %) and the VGG-16 topology with an input image size25 The weights are initialised between [0, 1] by using an uncorrelated equal distribution.of 512 px (86.8 ±0.8 %) without a significant difference between both. Moreover, the 256 px input image size produces quite constant simulation results with the lowest 90 % confidence interval values.…”
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confidence: 87%
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“…The mean accuracy results increase with a larger input image size until they stagnate after 256 px with 85.6 ±0.6 % to 84.2 ±2.5 % for 512 px. The VGG-16 topology achieves the most consistent results among all CNN topologies over all input image sizes with a mean accuracy of 85.2 %.The highest single results are achieved by the AlexNet topology together with an input image size of 256 px (86.4 ±0.5 %) and the VGG-16 topology with an input image size25 The weights are initialised between [0, 1] by using an uncorrelated equal distribution.of 512 px (86.8 ±0.8 %) without a significant difference between both. Moreover, the 256 px input image size produces quite constant simulation results with the lowest 90 % confidence interval values.…”
mentioning
confidence: 87%
“…Accuracy was used as a metric for comparison with its 90 % confidence intervals. Each combination was simulated five times with random weight initialisation25 . The mean accuracy results increase with a larger input image size until they stagnate after 256 px with 85.6 ±0.6 % to 84.2 ±2.5 % for 512 px.…”
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confidence: 99%