4.6 Article

Fast and Accurate Lane Detection via Graph Structure and Disentangled Representation Learning

期刊

SENSORS
卷 21, 期 14, 页码 -

出版社

MDPI
DOI: 10.3390/s21144657

关键词

lane detection; graph structure; feature compression; disentangled representation learning

资金

  1. National Key Research and Development Program of China [2018YFB0204301]
  2. NSFC [61872374]

向作者/读者索取更多资源

The study proposes an efficient method for extracting lane features in lane detection, involving two phases: local feature extraction and global feature aggregation. Additionally, the feature compression module based on decoupling representation learning effectively reduces redundancy and retains more critical information.
It is desirable to maintain high accuracy and runtime efficiency at the same time in lane detection. However, due to the long and thin properties of lanes, extracting features with both strong discrimination and perception abilities needs a huge amount of calculation, which seriously slows down the running speed. Therefore, we design a more efficient way to extract the features of lanes, including two phases: (1) Local feature extraction, which sets a series of predefined anchor lines, and extracts the local features through their locations. (2) Global feature aggregation, which treats local features as the nodes of the graph, and builds a fully connected graph by adaptively learning the distance between nodes, the global feature can be aggregated through weighted summing finally. Another problem that limits the performance is the information loss in feature compression, mainly due to the huge dimensional gap, e.g., from 512 to 8. To handle this issue, we propose a feature compression module based on decoupling representation learning. This module can effectively learn the statistical information and spatial relationships between features. After that, redundancy is greatly reduced and more critical information is retained. Extensional experimental results show that our proposed method is both fast and accurate. On the Tusimple and CULane benchmarks, with a running speed of 248 FPS, F1 values of 96.81% and 75.49% were achieved, respectively.

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