2021
DOI: 10.48550/arxiv.2103.13109
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A Fine-Grained Dataset and its Efficient Semantic Segmentation for Unstructured Driving Scenarios

Abstract: 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 natura… Show more

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