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Color-blob-based COSFIRE filters for object recognition

机译:基于色球的COSFIRE滤镜用于物体识别

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Most object recognition methods rely on contour-defined features obtained by edge detection or region segmentation. They are not robust to diffuse region boundaries. Furthermore, such methods do not exploit region color information. We propose color-blob-based COSFIRE (Combination of Shifted Filter Responses) filters to be selective for combinations of diffuse circular regions (blobs) in specific mutual spatial arrangements. Such a filter combines the responses of a certain selection of Difference-of-GausSians filters, essentially blob detectors, of different scales, in certain channels of a color space, and at certain relative positions to each other. Its parameters are determined learned in an automatic configuration process that analyzes the properties of a given prototype object of interest. We use these filters to compute features that are effective for the recognition of the prototype objects. We form feature vectors that we use With an SVM classifier. We evaluate the proposed method on a traffic sign (GTSRB) and a butterfly data sets. For the GTSRB data set we achieve a recognition rate of 98.94%, which is slightly higher than human performance and for the butterfly data set we achieve 89.029 The proposed color-blob-based COSFIRE filters are very effective and outperform the contour-based COSFIRE filters. A COSFIRE filter is trainable, it can be configured with a single prototype pattern and it does not require domain knowledge. (C) 2016 Elsevier B.V. All rights reserved.
机译:大多数对象识别方法依赖于通过边缘检测或区域分割获得的轮廓定义特征。它们对于散布区域边界并不稳健。此外,这样的方法不利用区域颜色信息。我们建议基于色球的COSFIRE(移位滤波器响应的组合)滤波器对于特定的相互空间排列中的扩散圆形区域(斑点)的组合具有选择性。这样的滤波器在色彩空间的某些通道中以及在彼此的某些相对位置处组合了不同尺度的高斯差滤波器(本质上是斑点检测器)的特定选择的响应。它的参数是在自动配置过程中确定的,该过程分析了给定感兴趣的原型对象的属性。我们使用这些过滤器来计算对识别原型对象有效的特征。我们形成与SVM分类器一起使用的特征向量。我们对交通标志(GTSRB)和蝴蝶数据集评估提出的方法。对于GTSRB数据集,我们达到了98.94%的识别率,略高于人类性能;对于蝴蝶数据集,我们达到了89.029。提出的基于色球的COSFIRE滤镜非常有效,并且优于基于轮廓的COSFIRE滤镜。 COSFIRE过滤器是可训练的,可以使用单个原型模式进行配置,并且不需要领域知识。 (C)2016 Elsevier B.V.保留所有权利。

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