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Multi-level colored directional motif histograms for content-based image retrieval

机译:基于内容的图像检索的多级彩色方向图谱直方图

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Color features and local geometrical structures are the two basic image features which are sufficient to convey the image semantics. Both of these features show diverse nature on the different regions of a natural image. Traditional local motif patterns are standard tools to emphasize these local visual image features. Thesemotif-based schemes consider either structural orientations or limited directional patterns which are not sufficient to realize the detailed local geometrical properties of an image. To address these issues, we have proposed a new multi-level colored directional motif histogram (MLCDMH) for devising a content-based image retrieval scheme. The proposed scheme extracts local structural features at three different levels. Initially, MLCDMH scheme extracts directional structural patterns from a 3 x 3 pixel grids of an image. This reflects the 99 different structural arrangements using 28 directional patterns. Next, we have used a weighted neighboring similarity (WNS) scheme to exploit the uniqueness of each motif pixel in its local surrounding. The WNS scheme will compute the importance of each directional motif pattern in its 3 x 3 local neighborhood. In the last level, we have fused all directional motif images into a single directional difference matrix which reflects the local structural and directional motif features in detail and also reduces the computation overhead. The MLCDMH considers all possible permutations and rotations of the motif patterns to generate rotational invariant structural features. The image retrieval performance of this proposed scheme has been evaluated using different Corelatural, object, texture and heterogeneous image datasets. The results of the retrieval experiments have shown satisfactory improvement over other motif- and non-motif-based CBIR approaches.
机译:颜色特征和局部几何结构是两个基本图像特征,足以传达图像语义。这两个特征都显示了自然形象的不同地区的不同性。传统的本地图案模式是标准工具,可以强调这些本地视觉图像功能。基于TheSemotif的方案考虑结构方向或有限的方向模式,其不足以实现图像的详细局部几何特性。为了解决这些问题,我们提出了一种新的多级彩色方向图案直方图(MLCDMH),用于设计基于内容的图像检索方案。所提出的方案在三种不同的水平提取局部结构特征。最初,MLCDMH方案从图像的3×3像素网格提取方向结构图案。这反映了使用28个方向图案的99种不同的结构布置。接下来,我们使用加权相邻的相似性(WNS)方案来利用其本地周围的每个主题像素的唯一性。 WNS方案将计算其3 x 3本地邻居中的每个定向图案模式的重要性。在最后一个级别中,我们已经将所有定向图案图像融合到单个方向差矩阵中,详细反映了局部结构和定向图案的特征,并降低了计算开销。 MLCDMH考虑了主题图案的所有可能的置换和旋转,以产生旋转不变的结构特征。这种提出方案的图像检索性能已经使用不同的Corel /自然,对象,纹理和异构图像数据集进行评估。检索实验的结果显示出对其他基于基于基于基于基于基于主题和非基主的CBIR方法的令人满意的改善。

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