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Shape Classification Using Hilbert Space Embeddings and Kernel Adaptive Filtering

机译:使用Hilbert Space Embeddings和内核自适应过滤的形状分类

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Shape classification is employed for realizing image object identification and classification tasks. Most of the state-of-the-art approaches use sequential features extracted from contours to classify shapes, either directly, i.e., k-nearest, neighbors (KNN), or through stochastic models, i.e., hidden Markov models (HMMs). Here, inspired by probability based metrics using Hilbert space embedding (HSE), we introduce a novel scheme for efficient shape classification. To this end, we highlight relevant curvature patterns from binary images towards a Kernel Adaptive Filtering (KAF)-based enhancement of the maximum mean discrepancy metric. Namely, we test the performance of our approach on the well-known MPEG-7 and 99-Shapes databases. Results show that our strategy can code relevant shape properties from binary images achieving competitive classification results.
机译:使用形状分类来实现图像对象识别和分类任务。大多数最先进的方法使用从轮廓中提取的顺序特征直接对形状进行分类,即,k最近,邻居(knn)或通过随机模型,即隐藏的马尔可夫模型(HMMS)。这里,通过使用希尔伯特空间嵌入(HSE)的概率基于概率的指标,我们介绍了一种用于高效形状分类的新颖方案。为此,我们突出了从二进制图像朝向内核自适应滤波(KAF)的相关曲率模式 - 基于最大均值差异度量的增强。即,我们在众所周知的MPEG-7和99形数据库上测试我们的方法的性能。结果表明,我们的策略可以从实现竞争分类结果的二进制图像代码相关形状特性。

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