形变不变图像匹配的鲁棒拓扑特征

E. Lobaton, Ramanarayan Vasudevan, R. Alterovitz, R. Bajcsy
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引用次数: 9

摘要

局部光度描述符是众多计算机视觉算法中至关重要的底层组成部分。在实践中,这些描述符被构造为对于一类转换是不变的。然而,开发一种同时对噪声具有鲁棒性和在一般变形下不变性的描述子已被证明是困难的。本文引入了拓扑属性关系图(T-ARG),这是一种由同调构造的新的局部光度描述子,它对局部有界变形是可证明不变的。这种新的鲁棒拓扑描述符由形式化的数学框架支持。我们将T-ARG应用于一组基准图像来评估其性能。结果表明,T-ARG显著优于传统的描述符对噪声,变形图像。
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Robust topological features for deformation invariant image matching
Local photometric descriptors are a crucial low level component of numerous computer vision algorithms. In practice, these descriptors are constructed to be invariant to a class of transformations. However, the development of a descriptor that is simultaneously robust to noise and invariant under general deformation has proven difficult. In this paper, we introduce the Topological-Attributed Relational Graph (T-ARG), a new local photometric descriptor constructed from homology that is provably invariant to locally bounded deformation. This new robust topological descriptor is backed by a formal mathematical framework. We apply T-ARG to a set of benchmark images to evaluate its performance. Results indicate that T-ARG significantly outperforms traditional descriptors for noisy, deforming images.
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