Data-Uncertainty Guided Multi-Phase Learning for Semi-supervised Object Detection

Overview

Data-Uncertainty Guided Multi-Phase Learning for Semi-supervised Object Detection

This is the mmdetection implementation of our CVPR2021 paper:

Zhenyu Wang, Yali Li, Ye Guo, Lu Fang, Shengjin Wang. Data-Uncertainty Guided Multi-Phase Learning for Semi-supervised Object Detection. ArXiv.

This code is based on mmdetection v2.18. Please install the code according to the mmdetection step first.

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