X-Align: Cross-Modal Cross-View Alignment for Bird’s-Eye-View Segmentation

Shubhankar Borse, Marvin Klingner, Varun Ravi Kumar, Hong Cai, Abdulaziz Almuzairee, Senthil Yogamani, Fatih Porikli
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引用次数: 3

Abstract

Bird’s-eye-view (BEV) grid is a typical representation of the perception of road components, e.g., drivable area, in autonomous driving. Most existing approaches rely on cameras only to perform segmentation in BEV space, which is fundamentally constrained by the absence of reliable depth information. The latest works leverage both camera and LiDAR modalities but suboptimally fuse their features using simple, concatenation-based mechanisms.In this paper, we address these problems by enhancing the alignment of the unimodal features in order to aid feature fusion, as well as enhancing the alignment between the cameras’ perspective view (PV) and BEV representations. We propose X-Align, a novel end-to-end cross-modal and cross-view learning framework for BEV segmentation consisting of the following components: (i) a novel CrossModal Feature Alignment (X-FA) loss, (ii) an attentionbased Cross-Modal Feature Fusion (X-FF) module to align multi-modal BEV features implicitly, and (iii) an auxiliary PV segmentation branch with Cross-View Segmentation Alignment (X-SA) losses to improve the PV-to-BEV transformation. We evaluate our proposed method across two commonly used benchmark datasets, i.e., nuScenes and KITTI-360. Notably, X-Align significantly outperforms the state-of-the-art by 3 absolute mIoU points on nuScenes. We also provide extensive ablation studies to demonstrate the effectiveness of the individual components.
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X-Align:用于鸟瞰分割的跨模态跨视图对齐
在自动驾驶中,鸟瞰(BEV)网格是对道路组件(如可驾驶区域)感知的典型表示。大多数现有方法仅依靠相机在BEV空间中进行分割,这从根本上受到缺乏可靠深度信息的限制。最新的工作利用了摄像头和激光雷达模式,但使用简单的、基于连接的机制将它们的功能融合在一起。在本文中,我们通过增强单峰特征的对齐来帮助特征融合,以及增强相机视角视图(PV)和BEV表示之间的对齐来解决这些问题。我们提出了一种新的端到端跨模态和跨视图学习框架X-Align,用于BEV分割,包括以下组件:(i)新的跨模态特征对齐(X-FA)损失,(ii)基于注意力的跨模态特征融合(X-FF)模块,用于隐式对齐多模态BEV特征,以及(iii)具有跨视图分割对齐(X-SA)损失的辅助PV分割分支,以改善PV到BEV的转换。我们在两个常用的基准数据集(即nuScenes和KITTI-360)上评估了我们提出的方法。值得注意的是,X-Align在nuScenes上的表现比最先进的技术高出3个绝对mIoU点。我们还提供广泛的消融研究,以证明单个组件的有效性。
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