Segmentation Tree Based Multiple Object Image Retrieval

Wei-bang Chen, Chengcui Zhang, Song Gao
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引用次数: 6

Abstract

Inaccurate image segmentation often has a negative impact on object-based image retrieval. Researchers have attempted to alleviate this problem by using hierarchical image representation. However, these attempts suffer from the inefficiency in building the hierarchical image representation and the high computational complexity in matching two hierarchically represented images. Existing approaches construct the hierarchical image representation in two steps. The first step is to perform segmentation at different image resolutions, and the second step is to construct a hierarchical representation of the image by associating segments from different resolutions. In this research, an innovative all-in-one run approach is proposed that concurrently performs image segmentation and hierarchical tree construction, producing a hierarchical region tree to represent the image. In addition, an efficient hierarchical region tree matching algorithm is proposed with a reasonably low time complexity and used in multiple object image retrieval. The experimental results demonstrate the efficacy and efficiency of the proposed approach.
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基于分割树的多目标图像检索
不准确的图像分割往往会对基于对象的图像检索产生负面影响。研究人员试图通过使用分层图像表示来缓解这个问题。然而,这些尝试受到构建分层图像表示的低效率和匹配两个分层表示的图像的高计算复杂度的影响。现有的方法分两步构建分层图像表示。第一步是在不同的图像分辨率下进行分割,第二步是通过关联不同分辨率的图像片段来构建图像的分层表示。在本研究中,提出了一种创新的一体化运行方法,同时进行图像分割和分层树构建,生成分层区域树来表示图像。此外,提出了一种时间复杂度较低的高效层次区域树匹配算法,并将其应用于多目标图像检索中。实验结果证明了该方法的有效性和有效性。
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