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Objectron: A Large Scale Dataset of Object-Centric Videos in the Wild with Pose Annotations
Adel Ahmadyan Liangkai Zhang Jianing Wei Artsiom Ablavatski Matthias Grundmann

Abstract
3D object detection has recently become popular due to many applications in robotics, augmented reality, autonomy, and image retrieval. We introduce the Objectron dataset to advance the state of the art in 3D object detection and foster new research and applications, such as 3D object tracking, view synthesis, and improved 3D shape representation. The dataset contains object-centric short videos with pose annotations for nine categories and includes 4 million annotated images in 14,819 annotated videos. We also propose a new evaluation metric, 3D Intersection over Union, for 3D object detection. We demonstrate the usefulness of our dataset in 3D object detection tasks by providing baseline models trained on this dataset. Our dataset and evaluation source code are available online at http://www.objectron.dev
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| monocular-3d-object-detection-on-google | EfficientNetLite + keypoint regressor | AP at 10' Elevation error: 0.8584 AP at 15' Azimuth error: 0.7844 Average Precision at 0.5 3D IoU: 0.6512 MPE: 0.0467 |
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