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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Improved system for object detection and star/galaxy classification via local subspace analysis.
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Improved system for object detection and star/galaxy classification via local subspace analysis.

机译:通过局部子空间分析的物体检测和星/星系分类的改进系统。

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摘要

The two traditional tasks of object detection and star/galaxy classification in astronomy can be automated by neural networks because the nature of the problems is that of pattern recognition. A typical existing system can be further improved by using one of the local Principal Component Analysis (PCA) models. Our analysis in the context of object detection and star/galaxy classification reveals that local PCA is not only superior to global PCA in feature extraction, but is also superior to gaussian mixture in clustering analysis. Unlike global PCA which performs PCA for the whole data set, local PCA applies PCA individually to each cluster of data. As a result, local PCA often outperforms global PCA for data of multi-modes. Moreover, since local PCA can effectively avoid the trouble of having to specify a large number of free elements of each covariance matrix of gaussian mixture, it can give a better description of local subspace structures of each cluster when applied on high dimensional data with small sample size. In this paper, the local PCA model proposed by Xu [IEEE Trans. Neural Networks 12 (2001) 822] under the general framework of Bayesian Ying Yang (BYY) normalization learning will be adopted. Endowed with the automatic model selection ability of BYY learning, the BYY normalization learning-based local PCA model can cope with those object detection and star/galaxy classification tasks with unknown model complexity. A detailed algorithm for implementation of the local PCA model will be proposed, and experimental results using both synthetic and real astronomical data will be demonstrated.
机译:由于问题的本质是模式识别,因此神经网络可以自动完成天文学中物体检测和星/星系分类这两个传统任务。通过使用本地主成分分析(PCA)模型之一,可以进一步改善典型的现有系统。我们在目标检测和星/银河分类的上下文中进行的分析表明,局部特征提取不仅在特征提取方面优于全局特征提取,而且在聚类分析中也优于高斯混合。与全局PCA对整个数据集执行PCA不同,本地PCA将PCA分别应用于每个数据集群。结果,对于多模式数据,本地PCA通常优于全局PCA。此外,由于局部PCA可以有效避免必须指定高斯混合的每个协方差矩阵的大量自由元素的麻烦,因此当应用于具有少量样本的高维数据时,可以更好地描述每个聚类的局部子空间结构尺寸。在本文中,Xu [IEEE Trans。神经网络12(2001)822]将在贝叶斯应阳(BYY)归一化学习的一般框架下采用。凭借BYY学习的自动模型选择能力,基于BYY归一化学习的本地PCA模型可以应对那些未知的模型复杂性的物体检测和星/银河分类任务。将提出用于实施本地PCA模型的详细算法,并将展示使用合成和实际天文数据的实验结果。

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