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5 months ago

LATR: 3D Lane Detection from Monocular Images with Transformer

Luo Yueru ; Zheng Chaoda ; Yan Xu ; Kun Tang ; Zheng Chao ; Cui Shuguang ; Li Zhen

LATR: 3D Lane Detection from Monocular Images with Transformer

Abstract

3D lane detection from monocular images is a fundamental yet challenging taskin autonomous driving. Recent advances primarily rely on structural 3Dsurrogates (e.g., bird's eye view) built from front-view image features andcamera parameters. However, the depth ambiguity in monocular images inevitablycauses misalignment between the constructed surrogate feature map and theoriginal image, posing a great challenge for accurate lane detection. Toaddress the above issue, we present a novel LATR model, an end-to-end 3D lanedetector that uses 3D-aware front-view features without transformed viewrepresentation. Specifically, LATR detects 3D lanes via cross-attention basedon query and key-value pairs, constructed using our lane-aware query generatorand dynamic 3D ground positional embedding. On the one hand, each query isgenerated based on 2D lane-aware features and adopts a hybrid embedding toenhance lane information. On the other hand, 3D space information is injectedas positional embedding from an iteratively-updated 3D ground plane. LATRoutperforms previous state-of-the-art methods on both synthetic Apollo,realistic OpenLane and ONCE-3DLanes by large margins (e.g., 11.4 gain in termsof F1 score on OpenLane). Code will be released athttps://github.com/JMoonr/LATR .

Code Repositories

jmoonr/latr
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
3d-lane-detection-on-openlaneLATR
Curve: 68.2
Extreme Weather: 57.1
F1 (all): 61.9
Intersection: 52.3
Merge u0026 Split: 61.5
Night: 55.4
Up u0026 Down: 55.2

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