Research in autonomous driving for unstructured environments suffers from a lack of semantically labeled datasets compared to its urban counterpart. Urban and unstructured outdoor environments are challenging due to the varying lighting and weather conditions during a day and across seasons. In this paper, we introduce TAS500, a novel semantic segmentation dataset for autonomous driving in unstructured environments. TAS500 offers fine-grained vegetation and terrain classes to learn drivable surfaces and natural obstacles in outdoor scenes effectively. We evaluate the performance of modern semantic segmentation models with an additional focus on their efficiency. Our experiments demonstrate the advantages of fine-grained semantic classes to improve the overall prediction accuracy, especially along the class boundaries. The dataset and pretrained model are available at mucar3.de/icpr2020-tas500.
翻译:城市和无结构户外环境由于每天和不同季节的照明和天气条件不同而具有挑战性。在本论文中,我们介绍TAS500,这是在不结构环境中自主驾驶的新型语义分解数据集。TAS500提供精细的植被和地形类,以便有效地了解户外景区可耕地表面和自然障碍。我们评估现代语义分解模型的性能,并更加注重其效率。我们的实验展示了精细的语义类的优点,以提高总体预测准确性,特别是在班级边界一带。数据集和预设模型可在mucar3.de/icpr2020-tas500上查阅。