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Proposal Flow

机译:提案流程

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摘要

Finding image correspondences remains a challenging problem in the presence of intra-class variations and large changes in scene layout. Semantic flow methods are designed to handle images depicting different instances of the same object or scene category. We introduce a novel approach to semantic flow, dubbed proposal flow, that establishes reliable correspondences using object proposals. Unlike prevailing semantic flow approaches that operate on pixels or regularly sampled local regions, proposal flow benefits from the characteristics of modern object proposals, that exhibit high repeatability at multiple scales, and can take advantage of both local and geometric consistency constraints among proposals. We also show that proposal flow can effectively be transformed into a conventional dense flow field. We introduce a new dataset that can be used to evaluate both general semantic flow techniques and region-based approaches such as proposal flow. We use this benchmark to compare different matching algorithms, object proposals, and region features within proposal flow, to the state of the art in semantic flow. This comparison, along with experiments on standard datasets, demonstrates that proposal flow significantly outperforms existing semantic flow methods in various settings.
机译:在存在类内变化和场景布局发生较大变化的情况下,查找图像对应关系仍然是一个具有挑战性的问题。语义流方法旨在处理描述同一对象或场景类别的不同实例的图像。我们为语义流引入了一种新颖的方法,称为提议流,该方法使用对象提议建立了可靠的对应关系。与在像素或定期采样的局部区域上运行的流行语义流方法不同,提议流受益于现代对象提议的特征,该特征在多个尺度上显示出高可重复性,并且可以利用提议之间的局部和几何一致性约束。我们还表明,建议流程可以有效地转换为常规的密集流场。我们引入了一个新的数据集,该数据集可用于评估常规语义流技术和基于区域的方法(例如提案流)。我们使用此基准将提案流程中的不同匹配算法,对象提案和区域特征与语义流程中的最新技术进行比较。这种比较以及对标准数据集的实验表明,提案流在各种情况下明显优于现有的语义流方法。

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