@inproceedings{a62d9d09cf924d3594fa186a9ad28525,
title = "Deep Ensembles for Semantic Segmentation on Road Detection",
abstract = "Semantic segmentation is a significant technique that can provide valuable insights into the context of driving scenes. This work discusses several mechanisms: data augmentation, transfer learning, transposed convolutions and focal loss function for improving the performance of neural networks for image segmentation. Experiments on two traditional model architectures-U-net and MobileUNetV2-are conducted and the results are evaluated in terms of-Intersection-over-Union (IoU) and F-score. The KITTI Road dataset is utilised for training and testing the algorithms on road segmentation. More specifically, data augmentation and the task-specific focal loss provide the highest improvement of 6.68% and 5.23%, respectively. To further enhance segmentation performance, an ensemble scheme is adopted where several models are executed simultaneously and their outputs are fused together to derive the final prediction. Such a design can reduce incorrect predictions of individual models and produce more precise segmentation masks. ",
keywords = "segmentation, focal loss, transfer learning, ensmeble scheme, data augmentation",
author = "Deniz Uzun and Dewei Yi",
year = "2021",
doi = "10.23919/ICAC50006.2021.9594247",
language = "English",
series = "2021 26th International Conference on Automation and Computing: System Intelligence through Automation and Computing, ICAC 2021",
publisher = "IEEE Explore",
editor = "Chenguang Yang",
booktitle = "Proceedings of the 26 th International Conference on Automation & Computing",
note = "26th International Conference on Automation and Computing, ICAC 2021 ; Conference date: 02-09-2021 Through 04-09-2021",
}