论文标题

部分可观测时空混沌系统的无模型预测

Detecting the unknown in Object Detection

论文作者

Fontanel, Dario, Tarantino, Matteo, Cermelli, Fabio, Caputo, Barbara

论文摘要

由于新型神经网络体系结构的设计和大规模数据集的可用性,对象检测方法在过去几年中看到了令人印象深刻的改进。但是,当前的方法具有重要的限制:他们只能检测到在训练时间期间观察到的类,这只是检测器在现实世界中可能遇到的所有类的子集。此外,在训练时间通常不考虑未知类别的存在,从而导致方法甚至无法检测到图像中存在未知对象。在这项工作中,我们解决了检测未知对象的问题,称为开放集对象检测。我们提出了一种名为Unkad的新颖培训策略,能够预测未知的对象,而无需对其进行任何注释,从而利用了训练图像背景中已经存在的非注释对象。特别是,unkad首先利用更快的R-CNN的四步训练策略,识别和伪标签未知的对象,然后使用伪通道来训练其他未知类别。尽管UNKAD可以直接检测未知的对象,但我们将其与以前未知的检测技术相结合,表明它可以不成本提高其性能。

Object detection methods have witnessed impressive improvements in the last years thanks to the design of novel neural network architectures and the availability of large scale datasets. However, current methods have a significant limitation: they are able to detect only the classes observed during training time, that are only a subset of all the classes that a detector may encounter in the real world. Furthermore, the presence of unknown classes is often not considered at training time, resulting in methods not even able to detect that an unknown object is present in the image. In this work, we address the problem of detecting unknown objects, known as open-set object detection. We propose a novel training strategy, called UNKAD, able to predict unknown objects without requiring any annotation of them, exploiting non annotated objects that are already present in the background of training images. In particular, exploiting the four-steps training strategy of Faster R-CNN, UNKAD first identifies and pseudo-labels unknown objects and then uses the pseudo-annotations to train an additional unknown class. While UNKAD can directly detect unknown objects, we further combine it with previous unknown detection techniques, showing that it improves their performance at no costs.

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