Object-Scene-Camera Decomposition and Recomposition for Data-Efficient Monocular 3D Object Detection
Zhaonian Kuang, Rui Ding, Meng Yang, Xinhu Zheng, Gang Hua

TL;DR
This paper introduces a novel data augmentation method for monocular 3D object detection that decomposes and recomposes training images into 3D objects and backgrounds, enhancing data diversity and model performance.
Contribution
It proposes an online object-scene-camera decomposition and recomposition scheme to improve data efficiency and reduce overfitting in monocular 3D object detection models.
Findings
Improves performance across five M3OD models.
Effective on KITTI and Waymo datasets.
Works with both fully and sparsely supervised settings.
Abstract
Monocular 3D object detection (M3OD) is intrinsically ill-posed, hence training a high-performance deep learning based M3OD model requires a humongous amount of labeled data with complicated visual variation from diverse scenes, variety of objects and camera poses.However, we observe that, due to strong human bias, the three independent entities, i.e., object, scene, and camera pose, are always tightly entangled when an image is captured to construct training data. More specifically, specific 3D objects are always captured in particular scenes with fixed camera poses, and hence lacks necessary diversity. Such tight entanglement induces the challenging issues of insufficient utilization and overfitting to uniform training data. To mitigate this, we propose an online object-scene-camera decomposition and recomposition data manipulation scheme to more efficiently exploit the training data.…
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Taxonomy
TopicsAdvanced Neural Network Applications · Human Pose and Action Recognition · Advanced Image and Video Retrieval Techniques
