HeightFormer: Explicit Height Modeling Without Extra Data for Camera-Only 3D Object Detection in Bird’s Eye View

Yiming Wu;Ruixiang Li;Zequn Qin;Xinhai Zhao;Xi Li
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Abstract

Vision-based Bird’s Eye View (BEV) representation is an emerging perception formulation for autonomous driving. The core challenge is to construct BEV space with multi-camera features, which is a one-to-many ill-posed problem. Diving into all previous BEV representation generation methods, we found that most of them fall into two types: modeling depths in image views or modeling heights in the BEV space, mostly in an implicit way. In this work, we propose to explicitly model heights in the BEV space, which needs no extra data like LiDAR and can fit arbitrary camera rigs and types compared to modeling depths. Theoretically, we give proof of the equivalence between height-based methods and depth-based methods. Considering the equivalence and some advantages of modeling heights, we propose HeightFormer, which models heights and uncertainties in a self-recursive way. Without any extra data, the proposed HeightFormer could estimate heights in BEV accurately. Benchmark results show that the performance of HeightFormer achieves SOTA compared with those camera-only methods.
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HeightFormer:明确的高度建模,无需额外数据,实现鸟瞰图中仅摄像头的 3D 物体检测
基于视觉的鸟瞰(BEV)表示是一种新兴的自动驾驶感知模式。构建具有多摄像机特征的纯电动汽车空间是一个一对多病态定常问题。深入研究之前所有的BEV表示生成方法,我们发现它们大多分为两种类型:在图像视图中建模深度或在BEV空间中建模高度,并且大多以隐式的方式。在这项工作中,我们建议在BEV空间中明确地建模高度,与建模深度相比,它不需要像LiDAR那样的额外数据,并且可以适应任意相机平台和类型。从理论上证明了基于高度的方法和基于深度的方法的等价性。考虑到高度建模的等价性和一些优点,我们提出了以自递归方式对高度和不确定性进行建模的HeightFormer方法。在没有任何额外数据的情况下,提出的HeightFormer可以准确地估计BEV中的高度。基准测试结果表明,与那些仅用于相机的方法相比,HeightFormer的性能达到了SOTA。
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