Litcius/Paper detail

MonoGRNet: A General Framework for Monocular 3D Object Detection

Zengyi Qin, Jinglu Wang, Yan Lu

2021IEEE Transactions on Pattern Analysis and Machine Intelligence39 citationsDOI

Abstract

Detecting and localizing objects in the real 3D space, which plays a crucial role in scene understanding, is particularly challenging given only a monocular image due to the geometric information loss during imagery projection. We propose MonoGRNet for the amodal 3D object detection from a monocular image via geometric reasoning in both the observed 2D projection and the unobserved depth dimension. MonoGRNet decomposes the monocular 3D object detection task into four sub-tasks including 2D object detection, instance-level depth estimation, projected 3D center estimation and local corner regression. The task decomposition significantly facilitates the monocular 3D object detection, allowing the target 3D bounding boxes to be efficiently predicted in a single forward pass, without using object proposals, post-processing or the computationally expensive pixel-level depth estimation utilized by previous methods. In addition, MonoGRNet flexibly adapts to both fully and weakly supervised learning, which improves the feasibility of our framework in diverse settings. Experiments are conducted on KITTI, Cityscapes and MS COCO datasets. Results demonstrate the promising performance of our framework in various scenarios.

Topics & Concepts

Artificial intelligenceComputer visionMonocularObject detectionComputer scienceMinimum bounding boxObject (grammar)Bounding overwatchProjection (relational algebra)Dimension (graph theory)Monocular visionPattern recognition (psychology)Image (mathematics)MathematicsAlgorithmPure mathematicsAdvanced Neural Network ApplicationsRobotics and Sensor-Based LocalizationAdvanced Image and Video Retrieval Techniques