A comparative study of high-recall real-time semantic segmentation based on swift factorized network

@inproceedings{Xiang2019ACS,
  title={A comparative study of high-recall real-time semantic segmentation based on swift factorized network},
  author={Kaite Xiang and Kaiwei Wang and Kailun Yang},
  booktitle={Security + Defence},
  year={2019}
}
  • Kaite Xiang, Kaiwei Wang, Kailun Yang
  • Published in Security + Defence 2019
  • Computer Science, Engineering
  • Semantic Segmentation (SS) is the task to assign a semantic label to each pixel of the observed images, which is of crucial significance for autonomous vehicles, navigation assistance systems for the visually impaired, and augmented reality devices. However, there is still a long way for SS to be put into practice as there are two essential challenges that need to be addressed: efficiency and evaluation criterions for practical application. For specific application scenarios, different… CONTINUE READING

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