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Multi-scale Self-Similarity Features of Terrain Surface

机译:地形表面的多尺度自相似特征

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Self-similarity features of natural surface play a key role in region segmentation and recognition. Due to long period of natural evolution, real terrain surface is composed of many self-similar structures. Consequently, the Self-similarity is not always so perfect that remains invariable in whole scale space and the traditional single self-similarity parameter can not represent such abundant self-similarity. In this view, the self-similarity is not a constant parameter over all scales, but multi-scale parameters. In order to describe such multi-scale self-similarities of real surface, firstly we adopt the Fractional Brownian Motion (FBM) model to estimate the self-similarity curve of terrain surface. Then the curve is divided into several linear regions to represent relevant self-similarities. Based on such regions, we introduce a parameter called Self-similar Degree (SSD) in the similitude of information entropy. Moreover, the small value of SSD indicates the more consistent self-similarity. We adopt fifty samples of terrain images and evaluate SSD that represents the multi-scale self-similarity features for each sample. The samples are clustered by unsupervised fuzzy c mean clustering into various classes according to SSD and traditional monotone Hurst feature respectively. The measurement for separability of features shows that the new parameter SSD is an effective feature for terrain classification. Therefore the similarity feature set that is made up of the monotone Hurst parameter and SSD provides more information than traditional monotone feature. Consequently, the performance of terrain classification is improved.
机译:天然表面的自相似特征在区域分割和识别中起关键作用。由于长期的自然演化,真实的地形表面由许多自相似的结构组成。因此,自相似性并不总是那么完美,以致在整个尺度空间中都保持不变,并且传统的单个自相似性参数不能代表如此丰富的自相似性。在这种情况下,自相似度不是所有尺度上的常数参数,而是多尺度参数。为了描述真实表面的这种多尺度自相似性,首先我们采用分数布朗运动(FBM)模型来估计地形表面的自相似性曲线。然后将曲线划分为几个线性区域以表示相关的自相似性。基于这些区域,我们在信息熵的相似性中引入了一个称为自相似度(SSD)的参数。而且,SSD的值越小,表示自相似性越一致。我们采用了50个地形图像样本,并对代表每个样本的多尺度自相似特征的SSD进行了评估。分别根据SSD和传统单调Hurst特征,通过无监督模糊c均值聚类将样本聚类为各种类别。对要素可分离性的测量表明,新参数SSD是用于地形分类的有效要素。因此,由单调Hurst参数和SSD组成的相似性功能集比传统的单调功能提供了更多的信息。因此,改善了地形分类的性能。

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