2019 21st International Symposium on Symbolic and Numeric Algorithms for Scientific Computing (SYNASC) 2019
DOI: 10.1109/synasc49474.2019.00049
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Deep Learning Techniques Applied for Road Segmentation

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Cited by 5 publications
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“…The training time is much longer. Munteanu et al [46] pointed out that more training parameters means that the training times of SegNet for road detection are much longer than those of U-Net or ResNet based on their experimental results; moreover, ResNet50 took fewer epochs to train than SegNet. When using the smallest number of parameters (Table 3), the training and model inference costs are similarly smaller.…”
Section: Comprehensive Evaluation Of Model Application Efficiencymentioning
confidence: 99%
“…The training time is much longer. Munteanu et al [46] pointed out that more training parameters means that the training times of SegNet for road detection are much longer than those of U-Net or ResNet based on their experimental results; moreover, ResNet50 took fewer epochs to train than SegNet. When using the smallest number of parameters (Table 3), the training and model inference costs are similarly smaller.…”
Section: Comprehensive Evaluation Of Model Application Efficiencymentioning
confidence: 99%