Improved SIM algorithm for effective image retrieval

Kwang-Baek Kim, Y. Woo, D. Song
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Abstract

Contents-based image retrieval methods are in general more objective and effective than text-based image retrieval algorithms since they use color and texture in search and avoid annotating all images for search. SIM (Self-organizing Image browsing Map) is one of contents-based image retrieval algorithms that uses only browsable mapping results obtained by SOM (Self Organizing Map). However, SOM may have an error in selecting the right BMU in learning phase if there are similar nodes with distorted color information due to the intensity of light or objects' movements in the image. Such images may be mapped into other grouping nodes thus the search rate could be decreased by this effect. In this paper, we propose an improved SIM that uses HSV color model in extracting image features with color quantization. In order to avoid unexpected learning error mentioned above, our SOM consists of two layers. In learning phase, SOM layer 1 has the color feature vectors as input. After learning SOM Layer 1, the connection weights of this layer become the input of SOM Layer 2 and re-learning occurs. With this multi-layered SOM learning, we can avoid mapping errors among similar nodes of different color information. In search, we put the query image vector into SOM layer 2 and select nodes of SOM layer 1 that connects with chosen BMU of SOM layer 2. In experiment, we verified that the proposed SIM was better than the original SIM and avoid mapping error effectively.
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改进的SIM算法用于有效的图像检索
基于内容的图像检索方法通常比基于文本的图像检索算法更客观和有效,因为它们在搜索中使用颜色和纹理,并且避免对所有图像进行注释。SIM (Self- Organizing Image browsing Map)是一种基于内容的图像检索算法,它只使用SOM (Self- Organizing Map)获得的可浏览映射结果。但是,在学习阶段,如果图像中存在由于光线强度或物体运动导致颜色信息失真的相似节点,SOM可能会在选择正确的BMU时出现错误。这样的图像可以被映射到其他分组节点,这样可以降低搜索率。本文提出了一种利用HSV颜色模型进行图像特征量化提取的改进SIM算法。为了避免上述意外的学习错误,我们的SOM由两层组成。在学习阶段,SOM layer 1以颜色特征向量作为输入。学习完第一层后,该层的连接权值成为第二层的输入,重新学习。通过这种多层SOM学习,我们可以避免不同颜色信息的相似节点之间的映射错误。在搜索中,我们将查询图像向量放入第二层SOM中,选择与第二层所选BMU相连接的第二层SOM节点。实验结果表明,本文提出的SIM卡比原SIM卡性能更好,有效地避免了映射误差。
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