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NOISE-ROBUST AND INVARIANT OBJECT CLASSIFICATION BY THE HIGH-ORDER STATISTICAL PATTERN SPECTRUM

机译:高阶统计图谱在噪声-鲁棒性和不变对象分类中的应用

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摘要

A new shape descriptor, the high order statistical pattern spectrum (HSP), able to extract from real images a set of descriptive features which can be used to classify objects regardless of their positions, sizes, orientations and the presence of noise, has been developed. The HSP is an internal, noise-robust, noninformation-preserving operator which combines the properties of invariance of the high order pattern spectrum and the properties of noise robustness of the statistical pattern spectrum. A neural network trianed by a back-propagation algorithm has been sued to test the method on different classification problems. Experimental results are presented on both synthetic and real images corrupted by various levels of noise and containing an object in different positions. Comparisons with other existing shape descriptor operators have been also performed.
机译:已经开发出一种新的形状描述符,即高阶统计图案谱(HSP),它能够从真实图像中提取出一组描述性特征,这些特征可用于对物体进行分类,而无论其位置,大小,方向和是否存在噪声。 HSP是一个内部的,噪声健壮的,不保留信息的算子,它结合了高阶模式谱不变性和统计模式谱的噪声鲁棒性。提出了一种使用反向传播算法进行神经处理的神经网络,对不同的分类问题进行测试。在合成图像和真实图像上均给出了实验结果,这些图像被各种级别的噪声破坏并且在不同位置包含一个对象。还与其他现有形状描述符算符进行了比较。

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