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A Feature Point Clustering Algorithm Based on GG-RNN

机译:基于GG-RNN的特征点聚类算法

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In the field of object recognition in computer vision, feature point clustering algorithm has become an important part of the object recognition. After getting the object feature points, we make the feature points in clustering in the use of GG-RNN clustering algorithm, to achieve multi-part of the object clustering or the multi-object clustering. And the GG-RNN clustering algorithm we propose innovatively, is merged with the grayscale and gradient information based on Euclidean distance in the similarity calculation. Compared with the distance description of basic RNN algorithm, the similarity calculation of high-dimensional description of GG-RNN will improve the accuracy of the clustering in different conditions.
机译:在计算机视觉的目标识别领域,特征点聚类算法已经成为目标识别的重要组成部分。得到对象特征点后,我们利用GG-RNN聚类算法对特征点进行聚类,以实现多部分的对象聚类或多对象聚类。并且我们创新提出的GG-RNN聚类算法在相似度计算中与基于欧氏距离的灰度和梯度信息合并。与基本RNN算法的距离描述相比,GG-RNN高维描述的相似度计算将提高不同条件下聚类的准确性。

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