Litcius/Paper detail

GRAMO: geometric resampling augmentation for monocular 3D object detection

He Guan, Chunfeng Song, Zhaoxiang Zhang

2024Frontiers of Computer Science10 citationsDOIOpen Access PDF

Abstract

Abstract Data augmentation is widely recognized as an effective means of bolstering model robustness. However, when applied to monocular 3D object detection, non-geometric image augmentation neglects the critical link between the image and physical space, resulting in the semantic collapse of the extended scene. To address this issue, we propose two geometric-level data augmentation operators named Geometric-Copy-Paste (Geo-CP) and Geometric-Crop-Shrink (Geo-CS). Both operators introduce geometric consistency based on the principle of perspective projection, complementing the options available for data augmentation in monocular 3D. Specifically, Geo-CP replicates local patches by reordering object depths to mitigate perspective occlusion conflicts, and Geo-CS re-crops local patches for simultaneous scaling of distance and scale to unify appearance and annotation. These operations ameliorate the problem of class imbalance in the monocular paradigm by increasing the quantity and distribution of geometrically consistent samples. Experiments demonstrate that our geometric-level augmentation operators effectively improve robustness and performance in the KITTI and Waymo monocular 3D detection benchmarks.

Topics & Concepts

Computer scienceMonocularArtificial intelligenceComputer visionRobustness (evolution)Perspective (graphical)ResamplingChemistryBiochemistryGeneAdvanced Neural Network ApplicationsRobotics and Sensor-Based LocalizationAdvanced Image and Video Retrieval Techniques