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A Novel Autonomous Feature Clustering Model for Image Recognition

机译:一种用于图像识别的新型自主特征聚类模型

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In order to realize human-like image recognition system, we introduce an architecture with separation of extracting and clustering features from detecting features. We also propose a novel autonomous clustering model that attaches an adaptive cluster determination algorithm, which enables superior cluster determination even for higher dimension vectors like real world images, on the Kohonen's Self-Organizing feature Map (SOM). By this algorithm, SOM weight vectors are converted to extremely lower dimensional vectors, which just consist of meaningful components to describe clusters. Therefore, we can execute autonomous determination of cluster boundaries easily. As a result, our proposed clustering model shows better performance than conventional techniques. Furthermore, feature detectors in our architecture is self-organized by the clustered sets of features which is autonomously clustered in our model.
机译:为了实现人类的类似图像识别系统,我们介绍了一种架构,其分离了检测特征的提取和聚类特征。我们还提出了一种新颖的自主聚类模型,附加自适应群集确定算法,即使在Kohonen的自我组织特征图(SOM)上,即使对于真实世界图像等更高的维度向量,也能够实现卓越的聚类确定。通过该算法,SOM权重向量被转换为极低的维度向量,其仅由有意义的组件组成来描述集群。因此,我们可以容易地执行群集边界的自主确定。结果,我们所提出的聚类模型显示出比传统技术更好的性能。此外,我们体系结构中的特征探测器由群集的特征集自组织,这些功能集是自主集群的模型中的。

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