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Integrating ILSR to Bag-of-Visual Words Model Based on Sparse Codes of SIFT Features Representations

机译:基于SIFT特征表示的稀疏代码将ILSR集成到可视化单词模型中

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In computer vision, the bag-of-visual words(BOV) approach has been shown to yield state-of-the-art results. To improve BOV model, we use sparse codes of SIFT features instead of previous vector quantization (VQ) such as k-means, due to more quantization errors of VQ. And as local features in most categories have spatial dependence in real world, we use neighbor features of one local feature as its implicit local spatial relationship (ILSR). This paper proposes an object categorization algorithm which integrate implicit local spatial relationship with its appearance features based on sparse codes of SIFT to form two sources of information for categorization. The algorithm is applied in Caltech-101 and Caltech-256 datasets to validate its effectiveness. The experimental results show its good performance.
机译:在计算机视觉中,已显示出可视化词袋(BOV)方法可产生最新的结果。为了改善BOV模型,由于VQ的量化误差更大,因此我们使用了SIFT特征的稀疏代码来代替先前的矢量量化(VQ),例如k均值。并且由于大多数类别中的局部特征在现实世界中都具有空间依赖性,因此我们将一个局部特征的邻居特征用作其隐式局部空间关系(ILSR)。提出了一种基于SIFT稀疏码的隐式局部空间关系及其外观特征集成的对象分类算法,形成了两个分类信息源。该算法应用于Caltech-101和Caltech-256数据集中以验证其有效性。实验结果表明它具有良好的性能。

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