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Invariant Shape Matching for Detection of Semi-local Image Structures

机译:不变形状匹配用于检测半局部图像结构

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Shape features applied to object recognition has been actively studied since the beginning of the field in 1950s and remain a viable alternative to appearance based methods e.g. local descriptors. This work address the problem of learning and detecting repeatable shape structures in images that may be incomplete, contain noise and/or clutter as well as vary in scale and orientation. A new approach is proposed where invariance to image transformations is obtained through invariant matching rather than typical invariant features. This philosophy is especially applicable to shape features such as open edges which do not have a specific scale or specific orientation until assembled into an object. Our primary contributions are: a new shape-based image descriptor that encodes a spatial configuration of edge parts, a technique for matching descriptors that is rotation and scale invariant and shape clustering that can extract frequently appearing image structures from training images without a supervision.
机译:自1950年代问世以来,就一直积极研究应用于物体识别的形状特征,并且这些形状特征仍然是基于外观的方法(例如图3)的可行替代方案。本地描述符。这项工作解决了学习和检测图像中可重复的形状结构的问题,这些图像结构可能不完整,包含噪声和/或混乱以及比例和方向发生变化。提出了一种新方法,其中通过不变匹配而不是典型不变特征来获得图像变换的不变性。该原理特别适用于形状特征,例如开口边缘,除非组装成对象,否则它们没有特定比例或特定方向。我们的主要贡献是:一种新的基于形状的图像描述符,对边缘部分的空间配置进行编码;一种匹配描述符的技术,该描述符是旋转和缩放不变性以及形状聚类,可以在不需要监督的情况下从训练图像中提取频繁出现的图像结构。

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