Litcius/Paper detail

Boosting 3D Object Detection by Simulating Multimodality on Point Clouds

Zheng Wu, Mingxuan Hong, Li Jiang, Chi‐Wing Fu

20222022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)32 citationsDOI

Abstract

This paper presents a new approach to boost a single-modality (LiDAR) 3D object detector by teaching it to sim-ulate features and responses that follow a multi-modality (LiDAR-image) detector. The approach needs LiDAR-image data only when training the single-modality detector, and once well-trained, it only needs LiDAR data at inference. We design a novel framework to realize the approach: re-sponse distillation to focus on the crucial response samples and avoid most background samples; sparse-voxel distillation to learn voxel semantics and relations from the esti-mated crucial voxels; a fine-grained voxel-to-point distillation to better attend to features of small and distant objects; and instance distillation to further enhance the deep-feature consistency. Experimental results on the nuScenes dataset show that our approach outperforms all SOTA LiDAR-only 3D detectors and even surpasses the baseline LiDAR-image detector on the key NDS metric, filling ~72% mAP gap be-tween the single- and multi-modality detectors.

Topics & Concepts

LidarArtificial intelligenceComputer scienceDetectorVoxelComputer visionObject detectionModality (human–computer interaction)Feature (linguistics)Pattern recognition (psychology)Consistency (knowledge bases)Focus (optics)Remote sensingOpticsGeographyPhysicsPhilosophyTelecommunicationsLinguisticsAdvanced Neural Network ApplicationsHuman Pose and Action RecognitionRobotics and Sensor-Based Localization