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Adaptive descriptor based on the geometric consistency of local image features: application to flower image classification

机译:基于局部图像特征几何一致性的自适应描述符:在花卉图像分类中的应用

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摘要

Geometric consistency is, usually, considered as a postprocessing step to filter matched sets of local features in order to discard outliers. In this work, it is used to propose an adaptive feature that describes the geometric dispersion of keypoints. It is based on a distribution computed by a nonparametric estimator so that no assumption is made about the data. We investigated and discussed the invariance properties of our descriptor under the most common two-and three-dimensional transformations. Then, we applied it to flower recognition. The classification is performed using the precomputed kernel of support vector machines classifier. Indeed, a similarity computing framework that uses the Kullback-Leibler divergence is presented. Furthermore, a customized layout for each flower image is designed to describe and compare separately the boundary and the central area of flowers. Experimentations made on the Oxford flower-17 dataset prove the efficiency of our method in terms of classification accuracy and computational complexity. The limits of our descriptor are also discussed on a 10-class subset of the Oxford flower-102 dataset. (C) 2016 SPIE and IS&T
机译:通常,将几何一致性视为过滤匹配的局部特征集以丢弃异常值的后处理步骤。在这项工作中,它被用来提出一种自适应特征,该特征描述了关键点的几何色散。它基于非参数估算器计算的分布,因此无需对数据进行任何假设。我们研究和讨论了在最常见的二维和三维转换下描述符的不变性。然后,我们将其应用于花朵识别。使用支持向量机分类器的预先计算内核执行分类。确实,提出了使用Kullback-Leibler散度的相似度计算框架。此外,为每个花朵图像定制的布局被设计为分别描述和比较花朵的边界和中心区域。在牛津花17数据集上进行的实验证明了我们的方法在分类准确性和计算复杂度方面的效率。我们的描述符的限制也在牛津花102数据集的10类子集中讨论。 (C)2016 SPIE和IS&T

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