Optimized rotation invariant content based image retrieval with local binary pattern

P. R. Vadhana, N. Venugopal, S. Kavitha
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引用次数: 3

Abstract

Growth of the image mining arena calls for the need of quality image retrieval techniques in par with the human perception which are invariant to scale and rotation. An optimized content based image retrieval system based on local visual attention features to bridge the semantic gap problem is proposed. The approach involves the salient point detection using Scale Up Robust Features (SURF) detector. Feature vector characterizing the interest points immune to rotation include the extraction of correlogram as color feature, a new texture pattern named Optimized Rotational invariant Local Binary Pattern (OR-LBP) with high dimensionality reduction as texture feature and the area of convex hull as shape feature. Similarity matching technique is implemented with minimum Manhattan distance between query image and database image. Experimental results in this paper demonstrate the optimized performance of the proposed approach with consistent precision.
优化了基于旋转不变性内容的局部二值模式图像检索
图像挖掘领域的发展要求高质量的图像检索技术与人类的感知水平相当,并且不受缩放和旋转的影响。提出了一种基于局部视觉注意特征的优化的基于内容的图像检索系统,以解决语义缺口问题。该方法采用SURF (Scale Up鲁棒特征)检测器进行显著点检测。利用不受旋转影响的兴趣点特征向量,提取相关图作为颜色特征,采用高维降维的优化旋转不变局部二值模式(Optimized Rotational invariant Local Binary pattern, OR-LBP)作为纹理特征,凸壳面积作为形状特征。利用查询图像与数据库图像之间的最小曼哈顿距离实现相似性匹配技术。实验结果证明了该方法的优化性能,且精度一致。
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