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Robust hierarchical framework for image classification via sparse representation

机译:通过稀疏表示进行图像分类的强大分层框架

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The sparse representation-based classification algorithm has been used for human face recognition. But an image database was restricted to human frontal faces with only slight illumination and expression changes. Cropping and normalization of the face needs to be done beforehand. This paper uses a sparse representation-based algorithm for generic image classification with some intra-class variations and background clutter. A hierarchical framework based on the sparse representation is developed which flexibly combines different global and local features. Experiments with the hierarchical framework on 25 object categories selected from the Caltech 101 dataset show that exploiting the advantage of local features with the hierarchical framework improves the classification performance and that the framework is robust to image occlusions, background clutter, and viewpoint changes.
机译:基于稀疏表示的分类算法已用于人脸识别。但是图像数据库仅限于人额脸,只有轻微的光照和表情变化。面部的裁剪和正常化需要事先完成。本文将基于稀疏表示的算法用于具有类别内变异和背景杂波的通用图像分类。开发了基于稀疏表示的分层框架,该框架灵活地组合了不同的全局和局部特征。对从Caltech 101数据集中选择的25个对象类别进行分层框架的实验表明,利用分层框架的局部特征优势可以提高分类性能,并且该框架对于图像遮挡,背景杂波和视点变化具有鲁棒性。

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