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Bibliographic Details
Main Authors: Gunn, James, Lenyk, Zygmunt, Sharma, Anuj, Donati, Andrea, Buburuzan, Alexandru, Redford, John, Mueller, Romain
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.14919
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author Gunn, James
Lenyk, Zygmunt
Sharma, Anuj
Donati, Andrea
Buburuzan, Alexandru
Redford, John
Mueller, Romain
author_facet Gunn, James
Lenyk, Zygmunt
Sharma, Anuj
Donati, Andrea
Buburuzan, Alexandru
Redford, John
Mueller, Romain
contents Combining complementary sensor modalities is crucial to providing robust perception for safety-critical robotics applications such as autonomous driving (AD). Recent state-of-the-art camera-lidar fusion methods for AD rely on monocular depth estimation which is a notoriously difficult task compared to using depth information from the lidar directly. Here, we find that this approach does not leverage depth as expected and show that naively improving depth estimation does not lead to improvements in object detection performance. Strikingly, we also find that removing depth estimation altogether does not degrade object detection performance substantially, suggesting that relying on monocular depth could be an unnecessary architectural bottleneck during camera-lidar fusion. In this work, we introduce a novel fusion method that bypasses monocular depth estimation altogether and instead selects and fuses camera and lidar features in a bird's-eye-view grid using a simple attention mechanism. We show that our model can modulate its use of camera features based on the availability of lidar features and that it yields better 3D object detection on the nuScenes dataset than baselines relying on monocular depth estimation.
format Preprint
id arxiv_https___arxiv_org_abs_2312_14919
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Lift-Attend-Splat: Bird's-eye-view camera-lidar fusion using transformers
Gunn, James
Lenyk, Zygmunt
Sharma, Anuj
Donati, Andrea
Buburuzan, Alexandru
Redford, John
Mueller, Romain
Computer Vision and Pattern Recognition
Machine Learning
Combining complementary sensor modalities is crucial to providing robust perception for safety-critical robotics applications such as autonomous driving (AD). Recent state-of-the-art camera-lidar fusion methods for AD rely on monocular depth estimation which is a notoriously difficult task compared to using depth information from the lidar directly. Here, we find that this approach does not leverage depth as expected and show that naively improving depth estimation does not lead to improvements in object detection performance. Strikingly, we also find that removing depth estimation altogether does not degrade object detection performance substantially, suggesting that relying on monocular depth could be an unnecessary architectural bottleneck during camera-lidar fusion. In this work, we introduce a novel fusion method that bypasses monocular depth estimation altogether and instead selects and fuses camera and lidar features in a bird's-eye-view grid using a simple attention mechanism. We show that our model can modulate its use of camera features based on the availability of lidar features and that it yields better 3D object detection on the nuScenes dataset than baselines relying on monocular depth estimation.
title Lift-Attend-Splat: Bird's-eye-view camera-lidar fusion using transformers
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2312.14919