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首页> 外文期刊>Journal of vision >Learning the 3-D structure of objects from 2-D views depends on shape, not format
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Learning the 3-D structure of objects from 2-D views depends on shape, not format

机译:从2D视图学习对象的3D结构取决于形状而不是格式

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摘要

Humans can learn to recognize new objects just from observing example views. However, it is unknown what structural information enables this learning. To address this question, we manipulated the amount of structural information given to subjects during unsupervised learning by varying the format of the trained views. We then tested how format affected participants' ability to discriminate similar objects across views that were rotated 90° apart. We found that, after training, participants' performance increased and generalized to new views in the same format. Surprisingly, the improvement was similar across line drawings, shape from shading, and shape from shading + stereo even though the latter two formats provide richer depth information compared to line drawings. In contrast, participants' improvement was significantly lower when training used silhouettes, suggesting that silhouettes do not have enough information to generate a robust 3-D structure. To test whether the learned object representations were format-specific or format-invariant, we examined if learning novel objects from example views transfers across formats. We found that learning objects from example line drawings transferred to shape from shading and vice versa. These results have important implications for theories of object recognition because they suggest that (a) learning the 3-D structure of objects does not require rich structural cues during training as long as shape information of internal and external features is provided and (b) learning generates shape-based object representations independent of the training format.
机译:人们可以仅通过观察示例视图来学习识别新对象。但是,尚不清楚什么结构信息可以实现这种学习。为了解决这个问题,我们通过改变训练后的观点的格式来操纵在无监督学习过程中给予对象的结构信息量。然后,我们测试了格式如何影响参与者在相隔90°的视图中区分相似对象的能力。我们发现,经过培训,参与者的表现有所提高,并以相同的格式推广到新的观点。令人惊讶的是,尽管线图相比后两种格式提供了更丰富的深度信息,但线图,阴影的形状和阴影+立体的形状的改进是相似的。相反,训练使用轮廓时,参与者的改善明显较低,这表明轮廓没有足够的信息来生成可靠的3-D结构。为了测试学习的对象表示形式是特定于格式的还是固定格式,我们检查了从示例视图中学习新对象是否跨格式转移。我们发现从示例线条图中学习的对象从阴影转移到形状,反之亦然。这些结果对物体识别理论具有重要意义,因为它们表明(a)只要提供内部和外部特征的形状信息,在训练过程中学习物体的3-D结构就不需要丰富的结构线索;以及(b)学习生成与训练格式无关的基于形状的对象表示。

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