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Learning Intelligent Dialogs for Bounding Box Annotation

机译:学习边界框注释的智能对话框

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We introduce Intelligent Annotation Dialogs for bounding box annotation. We train an agent to automatically choose a sequence of actions for a human annotator to produce a bounding box in a minimal amount of time. Specifically, we consider two actions: box verification [34], where the annotator verifies a box generated by an object detector, and manual box drawing. We explore two kinds of agents, one based on predicting the probability that a box will be positively verified, and the other based on reinforcement learning. We demonstrate that (1) our agents are able to learn efficient annotation strategies in several scenarios, automatically adapting to the image difficulty, the desired quality of the boxes, and the detector strength; (2) in all scenarios the resulting annotation dialogs speed up annotation compared to manual box drawing alone and box verification alone, while also outperforming any fixed combination of verification and drawing in most scenarios; (3) in a realistic scenario where the detector is iteratively re-trained, our agents evolve a series of strategies that reflect the shifting trade-off between verification and drawing as the detector grows stronger.
机译:我们介绍了用于边界框注释的智能注释对话框。我们训练代理为人类注释者自动选择一系列动作,以在最短的时间内生成边界框。具体来说,我们考虑两个动作:盒子验证[34],其中注释器验证由对象检测器生成的盒子,以及手动绘制盒子。我们探索两种代理,一种基于预测盒子将被正面验证的概率,另一种基于强化学习。我们证明(1)我们的代理能够在多种情况下学习有效的注释策略,自动适应图像难度,所需的盒子质量和检测器强度; (2)在所有方案中,与单独的手动方框图和单独的框验证相比,在所有情况下生成的注释对话框都可以加快注释速度,同时在大多数情况下,其性能也优于验证和图形的任何固定组合; (3)在对探测器进行迭代训练的现实场景中,我们的代理商制定了一系列策略,以反映随着探测器变得越来越强大,验证和绘图之间的权衡取舍。

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