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Exploring Inter-Observer Differences in First-Person Object Views Using Deep Learning Models

机译:使用深度学习模型探索一人对象视图中的观察者间差异

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Recent advances in wearable camera technology have led many cognitive psychologists to study the development of the human visual system by recording the field of view of infants and toddlers. Meanwhile, the vast success of deep learning in computer vision is driving researchers in both disciplines to aim to benefit from each other's understanding. Towards this goal, we set out to explore how deep learning models could be used to gain developmentally relevant insight from such first-person data. We consider a dataset of first-person videos from different people freely interacting with a set of toy objects, and train different object-recognition models based on each subject's view. We observe large inter-observer differences and find that subjects who created more diverse images of an object result in models that learn more robust object representations.
机译:可穿戴相机技术的最新进展使许多认知心理学家通过记录婴儿和幼儿的视野来研究人类视觉系统的发展。与此同时,计算机愿景中深入学习的巨大成功正在推动两个学科的研究人员,以旨在从彼此的理解中受益。为了实现这一目标,我们开始探讨深度学习模型如何用于获得这些第一人称数据的发展相关的洞察力。我们考虑从不同的人自由地与一组玩具对象自由交互的第一人称视频数据集,并根据每个主题的视图培训不同的对象识别模型。我们观察大型观察者间差异,并发现创建了更多不同图像的对象导致学习更强大的对象表示的模型。

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