用于表示星系图像的空间颜色布局特性

Yin Cui, Yongzhou Xiang, Kun Rong, R. Feris, Liangliang Cao
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引用次数: 3

摘要

我们提出了一种专门为星系图像设计的空间色彩布局特性。受天文学关于星系形成和演化的发现的启发,提出的特征捕获了星系的全局和局部形态信息。此外,我们的特征是缩放和旋转不变的。通过开发基于哈希的方法和所提出的特征,我们实现了一个高效的星系图像检索系统,该系统包含来自斯隆数字巡天项目的28万多张星系图像。给定一个查询图像,该系统可以在单个PC上仅用35毫秒就可以根据相关性对数据集中的所有星系进行排序。据我们所知,这是第一批针对星系特征设计和大规模星系图像检索的工作之一。我们使用web用户注释评估了所提出的特征和星系图像检索系统的性能,表明所提出的特征优于其他经典特征,包括HOG, Gist, LBP和color直方图。我们的检索系统的成功展示了利用计算机视觉技术解决天文学问题的优势。
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A spatial-color layout feature for representing galaxy images
We propose a spatial-color layout feature specially designed for galaxy images. Inspired by findings on galaxy formation and evolution from Astronomy, the proposed feature captures both global and local morphological information of galaxies. In addition, our feature is scale and rotation invariant. By developing a hashing-based approach with the proposed feature, we implemented an efficient galaxy image retrieval system on a dataset with more than 280 thousand galaxy images from the Sloan Digital Sky Survey project. Given a query image, the proposed system can rank-order all galaxies from the dataset according to relevance in only 35 milliseconds on a single PC. To the best of our knowledge, this is one of the first works on galaxy-specific feature design and large-scale galaxy image retrieval. We evaluated the performance of the proposed feature and the galaxy image retrieval system using web user annotations, showing that the proposed feature outperforms other classic features, including HOG, Gist, LBP, and Color-histograms. The success of our retrieval system demonstrates the advantages of leveraging computer vision techniques in Astronomy problems.
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