首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.1; 20060507-13; Graz(AT) >Weakly Supervised Learning of Part-Based Spatial Models for Visual Object Recognition
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Weakly Supervised Learning of Part-Based Spatial Models for Visual Object Recognition

机译:用于视觉对象识别的基于零件的空间模型的弱监督学习

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摘要

In this paper we investigate a new method of learning part-based models for visual object recognition, from training data that only provides information about class membership (and not object location or configuration). This method learns both a model of local part appearance and a model of the spatial relations between those parts. In contrast, other work using such a weakly supervised learning paradigm has not considered the problem of simultaneously learning appearance and spatial models. Some of these methods use a "bag" model where only part appearance is considered whereas other methods learn spatial models but only given the output of a particular feature detector. Previous techniques for learning both part appearance and spatial relations have instead used a highly supervised learning process that provides substantial information about object part location. We show that our weakly supervised technique produces better results than these previous highly supervised methods. Moreover, we investigate the degree to which both richer spatial models and richer appearance models are helpful in improving recognition performance. Our results show that while both spatial and appearance information can be useful, the effect on performance depends substantially on the particular object class and on the difficulty of the test dataset.
机译:在本文中,我们研究了一种仅从训练数据中学习基于零件的可视对象识别模型的新方法,该训练数据仅提供有关类成员资格的信息(而不提供对象位置或配置的信息)。该方法既学习局部零件外观的模型,又学习那些零件之间的空间关系的模型。相反,使用这种弱监督学习范式的其他工作并未考虑同时学习外观和空间模型的问题。这些方法中的一些使用“袋”模型,其中仅考虑零件外观,而其他方法则学习空间模型,但仅给出特定特征检测器的输出。用于学习零件外观和空间关系的先前技术已改为使用高度监督的学习过程,该过程可提供有关对象零件位置的大量信息。我们表明,与这些以前的高度监督方法相比,我们的弱监督技术产生了更好的结果。此外,我们调查了丰富的空间模型和丰富的外观模型在何种程度上有助于提高识别性能。我们的结果表明,尽管空间和外观信息都可能有用,但对性能的影响在很大程度上取决于特定的对象类别和测试数据集的难度。

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