Towards A Category-extended Object Detector without Relabeling or
Conflicts
- URL: http://arxiv.org/abs/2012.14115v1
- Date: Mon, 28 Dec 2020 06:44:53 GMT
- Title: Towards A Category-extended Object Detector without Relabeling or
Conflicts
- Authors: Bowen Zhao, Chen Chen, Wanpeng Xiao, Xi Xiao, Qi Ju, Shutao Xia
- Abstract summary: In this paper, we aim at leaning a strong unified detector that can handle all categories based on the limited datasets without extra manual labor.
We propose a practical framework which focuses on three aspects: better base model, better unlabeled ground-truth mining strategy and better retraining method with pseudo annotations.
- Score: 40.714221493482974
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Object detectors are typically learned based on fully-annotated training data
with fixed pre-defined categories. However, not all possible categories of
interest can be known beforehand, as classes are often required to be increased
progressively in many realistic applications. In such scenario, only the
original training set annotated with the old classes and some new training data
labeled with the new classes are available. In this paper, we aim at leaning a
strong unified detector that can handle all categories based on the limited
datasets without extra manual labor. Vanilla joint training without considering
label ambiguity leads to heavy biases and poor performance due to the
incomplete annotations. To avoid such situation, we propose a practical
framework which focuses on three aspects: better base model, better unlabeled
ground-truth mining strategy and better retraining method with pseudo
annotations. First, a conflict-free loss is proposed to obtain a usable base
detector. Second, we employ Monte Carlo Dropout to calculate the localization
confidence, combined with the classification confidence, to mine more accurate
bounding boxes. Third, we explore several strategies for making better use of
pseudo annotations during retraining to achieve more powerful detectors.
Extensive experiments conducted on multiple datasets demonstrate the
effectiveness of our framework for category-extended object detectors.
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