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Learning Off-Road Terrain Traversability With Self-Supervisions Only
- Seo, Junwon;
- Sim, Sungdae;
- Shim, Inwook
WEB OF SCIENCE
38SCOPUS
45초록
Estimating the traversability of terrain should be reliable and accurate in diverse conditions for autonomous driving in off-road environments. However, learning-based approaches often yield unreliable results when confronted with unfamiliar contexts, and it is challenging to obtain manual annotations frequently for new circumstances. In this letter, we introduce a method for learning traversability from images that utilizes only self-supervision and no manual labels, enabling it to easily learn traversability in new circumstances. To this end, we first generate self-supervised traversability labels from past driving trajectories by labeling regions traversed by the vehicle as highly traversable. Using the self-supervised labels, we then train a neural network that identifies terrains that are safe to traverse from an image using a one-class classification algorithm. Additionally, we supplement the limitations of self-supervised labels by incorporating methods of self-supervised learning of visual representations. To conduct a comprehensive evaluation, we collect data in a variety of driving environments and perceptual conditions and show that our method produces reliable estimations in various environments. In addition, the experimental results validate that our method outperforms other self-supervised traversability estimation methods and achieves comparable performances with supervised learning methods trained on manually labeled data.
키워드
- 제목
- Learning Off-Road Terrain Traversability With Self-Supervisions Only
- 저자
- Seo, Junwon; Sim, Sungdae; Shim, Inwook
- 발행일
- 2023-08
- 유형
- Article
- 권
- 8
- 호
- 8
- 페이지
- 4617 ~ 4624