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Automatic image annotation by incorporating feature hierarchy and boosting to scale up SVM classifiers

机译:通过合并功能层次结构并提升到缩放SVM分类器来自动图像注释

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The performance of image classifiers largely depends on two inter-related issues:(1)suitable frameworks for image content representation and automatic feature extraction;(2) effective algorithms for image classifier training and feature subset selection. To address the first issue, a multiresolution grid-based framework is proposed for image content representation and feature extraction to bypass the time-consuming and erroneous process for image segmentation. To address the second issue, a hierarchical boosting algorithm is proposed by incorporating feature hierarchy and boosting to scale up SVM image classifier training in high-dimensional feature space. The high-dimensional multi-modal heterogeneous visual features are partitioned into multiple low-dimensional single-modal homogeneous feature subsets and each of them characterizes certain visual property of images. For each homogeneous feature subset, principal component analysis (PCA)is performed to exploit the feature correlations and a weakclassifier is learned simultaneously. After the weak classifiers for different feature subsets and grid sizes are available, they are combined to boost an optimal classifier for the given object class or image concept, and the most representative feature subsets and grid sizes are selected. Our experiments on a specific domain of natural images have obtained very positive results.
机译:图像分类器的性能很大程度上依赖于两个相互关联的问题:(1)对图像内容的代表性和自动特征提取合适的框架;(2)有效的算法用于图像分类器训练和特征子集选择。要解决第一个问题,提出了一种用于图像内容表示和特征提取的基于多分辨率网格的框架,以绕过图像分割的耗时和错误的过程。为了解决第二个问题,通过结合特征层次结构并提升到高维特征空间中的SVM图像分类器训练来提出分层升压算法。高维多模态异构视觉特征被划分为多个低维单模均匀特征子集,并且它们中的每一个都表征了图像的某些视觉特性。对于每个均匀特征子集,执行主成分分析(PCA)以利用特征相关性,并且同时学习弱族分类。在可用的不同特征子集和网格尺寸的弱分类器之后,它们组合以提高给定的对象类或图像概念的最佳分类器,并且选择最多代表性的功能子集和网格大小。我们对自然图像的特定领域的实验已经获得了非常积极的结果。

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