MaskBEV: Towards A Unified Framework for BEV Detection and Map Segmentation
- URL: http://arxiv.org/abs/2408.09122v1
- Date: Sat, 17 Aug 2024 07:11:38 GMT
- Title: MaskBEV: Towards A Unified Framework for BEV Detection and Map Segmentation
- Authors: Xiao Zhao, Xukun Zhang, Dingkang Yang, Mingyang Sun, Mingcheng Li, Shunli Wang, Lihua Zhang,
- Abstract summary: MaskBEV is a masked attention-based multi-task learning paradigm.
It unifies 3D object detection and bird's eye view (BEV) map segmentation.
It achieves 1.3 NDS improvement in 3D object detection and 2.7 mIoU improvement in BEV map segmentation.
- Score: 14.67253585778639
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate and robust multimodal multi-task perception is crucial for modern autonomous driving systems. However, current multimodal perception research follows independent paradigms designed for specific perception tasks, leading to a lack of complementary learning among tasks and decreased performance in multi-task learning (MTL) due to joint training. In this paper, we propose MaskBEV, a masked attention-based MTL paradigm that unifies 3D object detection and bird's eye view (BEV) map segmentation. MaskBEV introduces a task-agnostic Transformer decoder to process these diverse tasks, enabling MTL to be completed in a unified decoder without requiring additional design of specific task heads. To fully exploit the complementary information between BEV map segmentation and 3D object detection tasks in BEV space, we propose spatial modulation and scene-level context aggregation strategies. These strategies consider the inherent dependencies between BEV segmentation and 3D detection, naturally boosting MTL performance. Extensive experiments on nuScenes dataset show that compared with previous state-of-the-art MTL methods, MaskBEV achieves 1.3 NDS improvement in 3D object detection and 2.7 mIoU improvement in BEV map segmentation, while also demonstrating slightly leading inference speed.
Related papers
- EVT: Efficient View Transformation for Multi-Modal 3D Object Detection [2.9848894641223302]
We propose a novel 3D object detector via efficient view transformation (EVT)
EVT uses Adaptive Sampling and Adaptive Projection (ASAP) to generate 3D sampling points and adaptive kernels.
It is designed to effectively utilize the obtained multi-modal BEV features within the transformer decoder.
arXiv Detail & Related papers (2024-11-16T06:11:10Z) - RepVF: A Unified Vector Fields Representation for Multi-task 3D Perception [64.80760846124858]
This paper proposes a novel unified representation, RepVF, which harmonizes the representation of various perception tasks.
RepVF characterizes the structure of different targets in the scene through a vector field, enabling a single-head, multi-task learning model.
Building upon RepVF, we introduce RFTR, a network designed to exploit the inherent connections between different tasks.
arXiv Detail & Related papers (2024-07-15T16:25:07Z) - Multi-View Attentive Contextualization for Multi-View 3D Object Detection [19.874148893464607]
We present Multi-View Attentive Contextualization (MvACon), a simple yet effective method for improving 2D-to-3D feature lifting in query-based 3D (MV3D) object detection.
In experiments, the proposed MvACon is thoroughly tested on the nuScenes benchmark, using both the BEVFormer and its recent 3D deformable attention (DFA3D) variant, as well as the PETR.
arXiv Detail & Related papers (2024-05-20T17:37:10Z) - Towards Unified 3D Object Detection via Algorithm and Data Unification [70.27631528933482]
We build the first unified multi-modal 3D object detection benchmark MM- Omni3D and extend the aforementioned monocular detector to its multi-modal version.
We name the designed monocular and multi-modal detectors as UniMODE and MM-UniMODE, respectively.
arXiv Detail & Related papers (2024-02-28T18:59:31Z) - ODM3D: Alleviating Foreground Sparsity for Semi-Supervised Monocular 3D
Object Detection [15.204935788297226]
ODM3D framework entails cross-modal knowledge distillation at various levels to inject LiDAR-domain knowledge into a monocular detector during training.
By identifying foreground sparsity as the main culprit behind existing methods' suboptimal training, we exploit the precise localisation information embedded in LiDAR points.
Our method ranks 1st in both KITTI validation and test benchmarks, significantly surpassing all existing monocular methods, supervised or semi-supervised.
arXiv Detail & Related papers (2023-10-28T07:12:09Z) - OCBEV: Object-Centric BEV Transformer for Multi-View 3D Object Detection [29.530177591608297]
Multi-view 3D object detection is becoming popular in autonomous driving due to its high effectiveness and low cost.
Most of the current state-of-the-art detectors follow the query-based bird's-eye-view (BEV) paradigm.
We propose an Object-Centric query-BEV detector OCBEV, which can carve the temporal and spatial cues of moving targets more effectively.
arXiv Detail & Related papers (2023-06-02T17:59:48Z) - BEV-IO: Enhancing Bird's-Eye-View 3D Detection with Instance Occupancy [58.92659367605442]
We present BEV-IO, a new 3D detection paradigm to enhance BEV representation with instance occupancy information.
We show that BEV-IO can outperform state-of-the-art methods while only adding a negligible increase in parameters and computational overhead.
arXiv Detail & Related papers (2023-05-26T11:16:12Z) - BEVerse: Unified Perception and Prediction in Birds-Eye-View for
Vision-Centric Autonomous Driving [92.05963633802979]
We present BEVerse, a unified framework for 3D perception and prediction based on multi-camera systems.
We show that the multi-task BEVerse outperforms single-task methods on 3D object detection, semantic map construction, and motion prediction.
arXiv Detail & Related papers (2022-05-19T17:55:35Z) - M^2BEV: Multi-Camera Joint 3D Detection and Segmentation with Unified
Birds-Eye View Representation [145.6041893646006]
M$2$BEV is a unified framework that jointly performs 3D object detection and map segmentation.
M$2$BEV infers both tasks with a unified model and improves efficiency.
arXiv Detail & Related papers (2022-04-11T13:43:25Z) - Improving Point Cloud Semantic Segmentation by Learning 3D Object
Detection [102.62963605429508]
Point cloud semantic segmentation plays an essential role in autonomous driving.
Current 3D semantic segmentation networks focus on convolutional architectures that perform great for well represented classes.
We propose a novel Aware 3D Semantic Detection (DASS) framework that explicitly leverages localization features from an auxiliary 3D object detection task.
arXiv Detail & Related papers (2020-09-22T14:17:40Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.