Semantic Road Segmentation using Deep Learning

Tuan D. Pham
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引用次数: 9

Abstract

Semantic segmentation is an important task in self-driving cars. The aims of semantic segmentation are to recognize pre-defined objects and its pixel-by-pixel location. The most popular method in semantic segmentation is Deep learning which has considerably improved semantic image segmentation. This work does an overview for semantic segmentation using Deep learning. This works also implement comparisons in term of precision, mean IOU and processing time. Three popular algorithms are PSPNet, FCN and SegNet that are examined carefully. In detail, the aim of this work points out a trade-off between processing time and mean IOU, and also between processing time and precision. Moreover, this paper concentrates on road segmentation for embedded devices, so processing time is significantly important. This work also figures out which method is suitable for embedded devices on road segmentation.
基于深度学习的语义道路分割
语义分割是自动驾驶汽车中的一项重要任务。语义分割的目的是识别预定义对象及其逐像素位置。在语义分割中最流行的方法是深度学习,它大大改进了语义图像分割。这项工作概述了使用深度学习的语义分割。该工作还实现了精度、平均IOU和处理时间方面的比较。三种流行的算法是PSPNet, FCN和SegNet,经过仔细研究。详细地说,这项工作的目的是指出处理时间和平均IOU之间的权衡,以及处理时间和精度之间的权衡。此外,本文主要研究嵌入式设备的道路分割,因此处理时间非常重要。本文还研究了适合嵌入式设备的道路分割方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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