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Fusing visual and range imaging for object class recognition

机译:融合视觉和范围成像以识别对象类别

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Category level object recognition has improved significantly in the last few years, but machine performance remains unsatisfactory for most real-world applications. We believe this gap may be bridged using additional depth information obtained from range imaging, which was recently used to overcome similar problems in body shape interpretation. This paper presents a system which successfully fuses visual and range imaging for object category classification. We explore fusion at multiple levels: using depth as an attention mechanism, high-level fusion at the classifier level and low-level fusion of local descriptors, and show that each mechanism makes a unique contribution to performance. For low-level fusion we present a new algorithm for training of local descriptors, the Generalized Image Feature Transform (GIFT), which generalizes current representations such as SIFT and spatial pyramids and allows for the creation of new representations based on multiple channels of information. We show that our system improves state-of-the-art visual-only and depth-only methods on a diverse dataset of every-day objects.
机译:在过去几年中,类别级别的对象识别已得到显着改善,但是对于大多数实际应用而言,机器性能仍然不能令人满意。我们认为,可以使用从距离成像获得的其他深度信息来弥合这一差距,最近该信息已用于克服人体形状解释中的类似问题。本文提出了一种系统,该系统成功地将视觉和距离成像融合在一起用于对象类别分类。我们在多个级别上探索融合:使用深度作为关注机制,在分类器级别上进行高级融合,并在局部描述符上进行低级融合,并表明每种机制都对性能做出了独特的贡献。对于低级融合,我们提出了一种用于训练局部描述符的新算法,即通用图像特征变换(GIFT),该算法可对诸如SIFT和空间金字塔之类的当前表示进行泛化,并允许基于多种信息渠道创建新的表示。我们证明了我们的系统改进了每天对象的多样化数据集上的最先进的仅视觉和仅深度方法。

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