论文标题

走向无监督的开放世界语义细分

Towards Unsupervised Open World Semantic Segmentation

论文作者

Uhlemeyer, Svenja, Rottmann, Matthias, Gottschalk, Hanno

论文摘要

对于图像的语义分割,如果该任务仅限于一组封闭的类,则最新的深层神经网络(DNN)可实现高分子的精度。但是,到目前为止,DNN在开放世界中运作的能力有限,在开放世界中,他们的任务是识别属于未知对象的像素,并最终逐步学习新颖的课程。人类有能力说:我不知道那是什么,但是我已经看到了类似的东西。因此,希望以无监督的方式执行这样的增量学习任务。我们介绍了一种基于视觉相似性聚集的未知对象的方法。这些集群用于定义新类,并用作无监督的增量学习的培训数据。更确切地说,通过分割质量估计来评估预测语义分割的连接组件。具有较低估计预测质量的连接组件是随后聚类的候选者。此外,组件质量评估允许为可能包含未知物体的图像区域获得预测的分割掩码。此类面具的各个像素是伪标记的,之后用于重新训练DNN,即不使用人类产生的地面真相。在我们的实验中,我们证明,在不访问地面真理的情况下,即使没有数据,DNN的类空间也可以通过新颖的班级扩展,从而达到了相当大的分割精度。

For the semantic segmentation of images, state-of-the-art deep neural networks (DNNs) achieve high segmentation accuracy if that task is restricted to a closed set of classes. However, as of now DNNs have limited ability to operate in an open world, where they are tasked to identify pixels belonging to unknown objects and eventually to learn novel classes, incrementally. Humans have the capability to say: I don't know what that is, but I've already seen something like that. Therefore, it is desirable to perform such an incremental learning task in an unsupervised fashion. We introduce a method where unknown objects are clustered based on visual similarity. Those clusters are utilized to define new classes and serve as training data for unsupervised incremental learning. More precisely, the connected components of a predicted semantic segmentation are assessed by a segmentation quality estimate. connected components with a low estimated prediction quality are candidates for a subsequent clustering. Additionally, the component-wise quality assessment allows for obtaining predicted segmentation masks for the image regions potentially containing unknown objects. The respective pixels of such masks are pseudo-labeled and afterwards used for re-training the DNN, i.e., without the use of ground truth generated by humans. In our experiments we demonstrate that, without access to ground truth and even with few data, a DNN's class space can be extended by a novel class, achieving considerable segmentation accuracy.

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