基于分割特征分类器模型的图像分类

Dong-Chul Park
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引用次数: 9

摘要

提出了基于分割特征的分类器(PFC)对图像数据进行分类的方法。PFC不使用从原始数据中提取的串联特征向量对每个数据进行分类,而是使用提取的特征向量对数据进行单独分类。在训练阶段,通过对每个特征向量组的准确率计算得出每个特征向量组的贡献率,然后在测试阶段,通过对每个特征向量组的贡献率应用相应的权值,得到最终的分类结果。在加州理工学院图像数据集上的实验和结果表明,将PFC模型与传统聚类算法相结合,可以提高聚类算法的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image classification using Partitioned-Feature based Classifier model
Classification of image data by using Partitioned-Feature based Classifier (PFC)is proposed in this paper. The PFC does not use concatenated feature vectors extracted from the original data at once to classify each datum, but uses extracted feature vectors to classify data separately. In the training stage, the contribution rate calculated from each feature vector group is drawn throughout the accuracy of each feature vector group and then, in the testing stage, the final classification result is obtained by applying weights corresponding to the contribution rate of each feature vector group. Experiments and results on Caltech image data set demonstrate that conventional clustering algorithms can improve their classification accuracy when the PFC model is used with them.
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