TinyDet: Accurate Small Object Detection in Lightweight Generic Detectors (2304.03428v1)
Abstract: Small object detection requires the detection head to scan a large number of positions on image feature maps, which is extremely hard for computation- and energy-efficient lightweight generic detectors. To accurately detect small objects with limited computation, we propose a two-stage lightweight detection framework with extremely low computation complexity, termed as TinyDet. It enables high-resolution feature maps for dense anchoring to better cover small objects, proposes a sparsely-connected convolution for computation reduction, enhances the early stage features in the backbone, and addresses the feature misalignment problem for accurate small object detection. On the COCO benchmark, our TinyDet-M achieves 30.3 AP and 13.5 APs with only 991 MFLOPs, which is the first detector that has an AP over 30 with less than 1 GFLOPs; besides, TinyDet-S and TinyDet-L achieve promising performance under different computation limitation.
- Shaoyu Chen (26 papers)
- Tianheng Cheng (31 papers)
- Jiemin Fang (33 papers)
- Qian Zhang (308 papers)
- Yuan Li (393 papers)
- Wenyu Liu (146 papers)
- Xinggang Wang (163 papers)