A classification algorithm for hologram label based on improved sift features

Tao Wu, Xin Li, Bing Wang, Jier Yu, Pengcheng Li, Shanqing Zhang
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引用次数: 1

Abstract

Hologram label can present different images under different light condition. Thus, it is difficult to recognize a hologram label with traditional methods. In this paper, we propose a classification algorithm for hologram label based on improved SIFT features. Firstly, a multi-illumination sample space is constructed by collecting images from one hologram label under different illumination condition. Secondly, the SIFT features are extracted from different samples in the multi-illumination sample space. Thirdly, some stable feature points are obtained after matching and clustering steps. Finally, the class of a testing hologram label is determined by the number of the matched SIFT points. Experimental results show that our method has good accuracy and recall rate, especially the ambiguous images can also be recognized.
基于改进sift特征的全息图标签分类算法
全息标签可以在不同的光条件下呈现不同的图像。因此,用传统的方法很难识别全息图标签。本文提出了一种基于改进SIFT特征的全息图标签分类算法。首先,从不同光照条件下的一个全息标签上采集图像,构建多光照样本空间;其次,在多照度样本空间中提取不同样本的SIFT特征;再次,经过匹配和聚类步骤,得到一些稳定的特征点。最后,根据匹配的SIFT点的个数来确定测试全息图标签的类别。实验结果表明,该方法具有良好的准确率和召回率,特别是对模糊图像也能有效识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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