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Weak supervision for detecting object classes from activities

机译:从活动中检测对象类的弱监督

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摘要

Weakly supervised learning for object detection has been gaining significant attention in the recent past. Visually similar objects are extracted automatically from weakly labeled videos hence bypassing the tedious process of manually annotating training data. However, the problem as applied to small or medium sized objects is still largely unexplored. Our observation is that weakly labeled information can be derived from videos involving human-object interactions. Since the object is characterized neither by its appearance nor its motion in such videos, we propose a robust framework that taps valuable human context and models similarity of objects based on appearance and functionality. Furthermore, the framework is designed such that it maximizes the utility of the data by detecting possibly multiple instances of an object from each video. We show that object models trained in this fashion perform between 86% and 92% of their fully supervised counterparts on three challenging RGB and RGB-D datasets.
机译:对物体检测的弱监督学习在最近的过去一直受到重大关注。从视觉上类似的对象自动从弱标记的视频中提取,因此绕过手动注释训练数据的繁琐过程。但是,应用于小型或中型对象的问题仍然很大程度上是未开发的。我们的观察是,弱标记的信息可以从涉及人对象相互作用的视频派生。由于对象既不是其外观也不是其在这种视频中的运动,因此我们提出了一种强大的框架,可以根据外观和功能来利用物体的有价值的人类背景和模型相似性的强大框架。此外,该框架被设计成使得它通过检测来自每个视频的对象的可能多个实例来最大化数据的实用性。我们展示了以这种方式培训的对象模型在三个具有挑战性的RGB和RGB-D数据集中执行86%和92%的完全监督的对应物。

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