PathFusion: Path-consistent Lidar-Camera Deep Feature Fusion
Lemeng Wu, Dilin Wang, Meng Li, Yunyang Xiong, Raghuraman, Krishnamoorthi, Qiang Liu, Vikas Chandra

TL;DR
PathFusion introduces a path consistency loss to align 2D and 3D features semantically in deep layers, significantly improving LiDAR-camera fusion accuracy for 3D detection.
Contribution
It proposes a novel path consistency loss for better semantic alignment of deep features in LiDAR-camera fusion networks, enhancing detection performance.
Findings
Over 1.6% mAP improvement on nuScenes
0.6% AP increase on KITTI moderate level
Effective in deep feature fusion layers
Abstract
Fusing 3D LiDAR features with 2D camera features is a promising technique for enhancing the accuracy of 3D detection, thanks to their complementary physical properties. While most of the existing methods focus on directly fusing camera features with raw LiDAR point clouds or shallow-level 3D features, it is observed that directly combining 2D and 3D features in deeper layers actually leads to a decrease in accuracy due to feature misalignment. The misalignment, which stems from the aggregation of features learned from large receptive fields, becomes increasingly more severe as we delve into deeper layers. In this paper, we propose PathFusion as a solution to enable the alignment of semantically coherent LiDAR-camera deep feature fusion. PathFusion introduces a path consistency loss at multiple stages within the network, encouraging the 2D backbone and its fusion path to transform 2D…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Remote Sensing and LiDAR Applications · Robotics and Sensor-Based Localization
MethodsTest
