End-to-End Lane Marker Detection via Row-wise Classification

In autonomous driving, detecting reliable and accurate lane marker positions is a crucial yet challenging task. The conventional approaches for the lane marker detection problem perform a pixel-level dense prediction task followed by sophisticated post-processing that is inevitable since lane markers are typically represented by a collection of line segments without thickness. In this paper, we propose a method performing direct lane marker vertex prediction in an end-to-end manner, i.e., without any post-processing step that is required in the pixel-level dense prediction task. Specifically, we translate the lane marker detection problem into a row-wise classification task, which takes advantage of the innate shape of lane markers but, surprisingly, has not been explored well. In order to compactly extract sufficient information about lane markers which spread from the left to the right in an image, we devise a novel layer, which is utilized to successively compress horizontal components so enables an end-to-end lane marker detection system where the final lane marker positions are simply obtained via argmax operations in testing time. Experimental results demonstrate the effectiveness of the proposed method, which is on par or outperforms the state-of-the-art methods on two popular lane marker detection benchmarks, i.e., TuSimple and CULane.

PDF Abstract

Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Lane Detection CULane ERFNet-E2E F1 score 74 # 44
Lane Detection CULane ResNet-101-E2E F1 score 71.9 # 49
Lane Detection TuSimple R-34-E2E Accuracy 96.22% # 19
F1 score 96.58 # 18
Lane Detection TuSimple ERF-E2E Accuracy 96.02% # 23
F1 score 96.25 # 23
Lane Detection TuSimple R-50-E2E Accuracy 96.11% # 21
F1 score 96.37 # 21

Methods


No methods listed for this paper. Add relevant methods here