Command Palette
Search for a command to run...
BigDetection: A Large-scale Benchmark for Improved Object Detector Pre-training
Likun Cai Zhi Zhang Yi Zhu Li Zhang Mu Li Xiangyang Xue

Abstract
Multiple datasets and open challenges for object detection have been introduced in recent years. To build more general and powerful object detection systems, in this paper, we construct a new large-scale benchmark termed BigDetection. Our goal is to simply leverage the training data from existing datasets (LVIS, OpenImages and Object365) with carefully designed principles, and curate a larger dataset for improved detector pre-training. Specifically, we generate a new taxonomy which unifies the heterogeneous label spaces from different sources. Our BigDetection dataset has 600 object categories and contains over 3.4M training images with 36M bounding boxes. It is much larger in multiple dimensions than previous benchmarks, which offers both opportunities and challenges. Extensive experiments demonstrate its validity as a new benchmark for evaluating different object detection methods, and its effectiveness as a pre-training dataset.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| object-detection-on-bigdetection-val | Faster R-CNN (R50) | AP: 18.9 AP50: 28.8 AP75: 20.5 |
| object-detection-on-bigdetection-val | CenterNet2 (R50-FPN) | AP: 23.1 AP50: 30.2 AP75: 24.9 |
| object-detection-on-bigdetection-val | YOLOv3 (D53) | AP: 9.7 AP50: 17.4 AP75: 9.7 |
| object-detection-on-bigdetection-val | Cascade R-CNN (R50-FPN) | AP: 24.1 AP50: 33.0 AP75: 25.8 |
| object-detection-on-bigdetection-val | Deformable DETR (R50) | AP: 13.1 AP50: 19.3 AP75: 14.2 |
| object-detection-on-bigdetection-val | Faster R-CNN (R50-FPN) | AP: 19.4 AP50: 29.3 AP75: 21.3 |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.