论文标题
开放世界的可调混合提案网络
Tunable Hybrid Proposal Networks for the Open World
论文作者
论文摘要
当前最新的对象提案网络经过封闭世界的假设培训,这意味着他们学会了仅检测培训类的对象。这些模型未能在可能遇到重要的新颖对象的开放世界环境中提供高回忆。虽然最近的少数工作试图解决这个问题,但他们未能考虑提案网络的最佳行为可能会取决于数据和应用程序。我们的目标是提供一种灵活的建议解决方案,可以轻松调整以适合各种开放世界的设置。为此,我们设计了一个可调的混合提案网络(THPN),该网络(THPN)利用可调节的混合体系结构,一种新型的自我训练程序和动态损耗组件来优化已知和未知对象检测性能之间的权衡。为了彻底评估我们的方法,我们设计了一些新的挑战,这些挑战通过改变已知的类别多样性和标签计数来引起不同程度的标签偏差。我们发现,在每项任务中,THPN都很容易胜过现有的基准(例如RPN,OLN)。我们的方法还具有高度的数据效率,超过了标记数据的一部分,超过了基线召回。
Current state-of-the-art object proposal networks are trained with a closed-world assumption, meaning they learn to only detect objects of the training classes. These models fail to provide high recall in open-world environments where important novel objects may be encountered. While a handful of recent works attempt to tackle this problem, they fail to consider that the optimal behavior of a proposal network can vary significantly depending on the data and application. Our goal is to provide a flexible proposal solution that can be easily tuned to suit a variety of open-world settings. To this end, we design a Tunable Hybrid Proposal Network (THPN) that leverages an adjustable hybrid architecture, a novel self-training procedure, and dynamic loss components to optimize the tradeoff between known and unknown object detection performance. To thoroughly evaluate our method, we devise several new challenges which invoke varying degrees of label bias by altering known class diversity and label count. We find that in every task, THPN easily outperforms existing baselines (e.g., RPN, OLN). Our method is also highly data efficient, surpassing baseline recall with a fraction of the labeled data.