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Discovering Object Classes from Activities

机译:从活动中发现对象类

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In order to avoid an expensive manual labelling process or to learn object classes autonomously without human intervention, object discovery techniques have been proposed that extract visually similar objects from weakly labelled videos. However, the problem of discovering small or medium sized objects is largely unexplored. We observe that videos with activities involving human-object interactions can serve as weakly labelled data for such cases. Since neither object appearance nor motion is distinct enough to discover objects in such videos, we propose a framework that samples from a space of algorithms and their parameters to extract sequences of object proposals. Furthermore, we model similarity of objects based on appearance and functionality, which is derived from human and object motion. We show that functionality is an important cue for discovering objects from activities and demonstrate the generality of the model on three challenging RGB-D and RGB datasets.
机译:为了避免昂贵的手动标记过程或自主学习对象类而没有人为干预,已经提出了对象发现技术,从而从弱标记的视频中提取视觉上类似的对象。 然而,发现小或中型对象的问题在很大程度上是未开发的。 我们观察到涉及人体对象交互的活动的视频可以用作这种情况的弱标记数据。 由于对象外观和运动都没有足够明确以发现这些视频中的对象,因此我们提出了一种框架,该框架从算法的空间和它们的参数中提取对象提案的序列。 此外,我们基于外观和功能来模拟物体的相似性,该功能来自人和对象运动。 我们表明功能是从活动中发现对象的重要提示,并展示三个具有挑战性的RGB-D和RGB数据集的模型的一般性。

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