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Novel histogram descriptor for global feature extraction and description 被引量:3

Novel histogram descriptor for global feature extraction and description
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摘要 A novel histogram descriptor for global feature extraction and description was presented. Three elementary primitives for a 2×2 pixel grid were defined. The complex primitives were computed by matrix transforms. These primitives and equivalence class were used for an image to compute the feature image that consisted of three elementary primitives. Histogram was used for the transformed image to extract and describe the features. Furthermore, comparisons were made among the novel histogram descriptor, the gray histogram and the edge histogram with regard to feature vector dimension and retrieval performance. The experimental results show that the novel histogram can not only reduce the effect of noise and illumination change, but also compute the feature vector of lower dimension. Furthermore, the system using the novel histogram has better retrieval performance. A novel histogram descriptor for global feature extraction and description was presented. Three elementary primitives for a 2 × 2 pixel grid were defined. The complex primitives were computed by matrix transforms. These primitives and equivalence class were used for an image to compute the feature image that consisted of three elementary primitives. Histogram was used for the transformed image to extract and describe the features. Furthermore, comparisons were made among the novel histogram descriptor, the gray histogram and the edge histogram with regard to feature vector dimension and retrieval performance. The experimental results show that the novel histogram can not only reduce the effect of noise and illumination change, but also compute the feature vector of lower dimension. Furthermore, the system using the novel histogram has better retrieval performance.
出处 《Journal of Central South University》 SCIE EI CAS 2010年第3期580-586,共7页 中南大学学报(英文版)
基金 Project(60873010) supported by the National Natural Science Foundation of China Projects(N090504005, N090604012, N090104001) supported by the Fundamental Research Funds for the Central Universities Project(NCET-05-0288) supported by Program for New Century Excellent Talents in University
关键词 feature extraction and description histogram descriptor gray histogram edge histogram 灰度直方图 特征提取 描述符 球性 特征图像 检索性能 特征向量 矩阵变换
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