An efficient parallel texture classification for image retrieval

J. You, H. Shen, H. Cohen
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引用次数: 14

Abstract

This paper proposes an efficient parallel approach to texture classification for image retrieval. The idea behind this method is to pre-extract texture features in terms of texture energy measurement associated with a 'tuned' mask and store them in a multi-scale and multi-orientation texture class database via a two-dimensional linked list for query. Thus each texture class sample in the database can be traced by its texture energy in a two-dimensional row sorted matrix. The parallel searching strategies are introduced for fast identifying the entities closest to the input texture throughout the given texture energy matrix. In contrast to the traditional search methods, our approach incorporates different computation patterns for different cases of available processor numbers and concerns with robust and work-optimal parallel algorithms for row-search and minimum-find based an the accelerated cascading technique and the dynamic processor allocation scheme. Applications of the proposed parallel search and multisearch algorithms to both single image classification and multiple image classification are discussed. The time complexity analysis shows that our proposal will speed up the classification tasks in a simple but dynamic manner. Examples are presented of the texture classification task applied to image retrieval of Brodatz textures, comprising various orientations and scales.
一种用于图像检索的高效并行纹理分类方法
提出了一种用于图像检索的纹理分类并行算法。该方法的思想是根据“调谐”掩模相关的纹理能量测量预提取纹理特征,并通过二维链表将其存储在多尺度、多方向纹理类数据库中供查询。这样,数据库中的每个纹理类样本都可以通过其纹理能量在二维行排序矩阵中进行跟踪。引入并行搜索策略,在给定纹理能量矩阵中快速识别最接近输入纹理的实体。与传统的搜索方法相比,我们的方法结合了不同情况下可用处理器数量的不同计算模式,并关注基于加速级联技术和动态处理器分配方案的行搜索和最小查找的鲁棒和工作优化并行算法。讨论了并行搜索和多搜索算法在单幅图像分类和多幅图像分类中的应用。时间复杂度分析表明,我们的方案能够以简单而动态的方式加快分类任务的速度。给出了纹理分类任务应用于图像检索的实例,包括不同方向和尺度的Brodatz纹理。
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