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首页> 外文期刊>IEEE Transactions on Neural Networks >Fast-Learning Adaptive-Subspace Self-Organizing Map: An Application to Saliency-Based Invariant Image Feature Construction
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Fast-Learning Adaptive-Subspace Self-Organizing Map: An Application to Saliency-Based Invariant Image Feature Construction

机译:快速学习的自适应子空间自组织图:在基于显着性的不变图像特征构造中的应用

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摘要

The adaptive-subspace self-organizing map (ASSOM) is useful for invariant feature generation and visualization. However, the learning procedure of the ASSOM is slow. In this paper, two fast implementations of the ASSOM are proposed to boost ASSOM learning based on insightful discussions of the basis rotation operator of ASSOM. We investigate the objective function approximately maximized by the classical rotation operator. We then explore a sequence of two schemes to apply the proposed ASSOM implementations to saliency-based invariant feature construction for image classification. In the first scheme, a cumulative activity map computed from a single ASSOM is used as descriptor of the input image. In the second scheme, we use one ASSOM for each image category and a joint cumulative activity map is calculated as the descriptor. Both schemes are evaluated on a subset of the Corel photo database with ten classes. The multi-ASSOM scheme is favored. It is also applied to adult image filtering and shows promising results.
机译:自适应子空间自组织映射(ASSOM)对于不变特征的生成和可视化很有用。但是,ASSOM的学习过程很慢。在本文中,基于对ASSOM的基础旋转算子的深入讨论,提出了ASSOM的两种快速实现以促进ASSOM学习。我们研究了经典旋转算子近似最大化的目标函数。然后,我们探索了两个方案的序列,以将提出的ASSOM实现应用于基于显着性的不变特征构造以进行图像分类。在第一种方案中,将从单个ASSOM计算出的累积活动图用作输入图像的描述符。在第二种方案中,我们对每个图像类别使用一个ASSOM,并计算一个联合累积活动图作为描述符。两种方案都在Corel图片数据库的子集(具有十个类)上进行评估。多ASSOM方案受到青睐。它也适用于成人图像过滤,并显示出令人鼓舞的结果。

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