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Refining the histogram based segmentation of hyperspectral data

机译:完善基于直方图的高光谱数据分割

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A recently-developed technique of histogram-based segmentation of hyperspectral data allows for a plethora of segmentations. The user can specify the desired number of levels of segmentations, minimum number of pixels defining a peak, and degree of non-linearity in mapping from principal component floating values to histogram bins, all of which affect the derived segmentation. In the present work, we seek to extend previous work which arrives at a small range of clusters or segmentation levels from the image itself. We seek within this range to find "better" segmentations or possibly a unique representative segmentation. The method employed to achieve this goal starts with an over-fine segmentation, i.e. more segmentation levels than needed, and uses quantitative metrics to measure the "quality" of that segmentation and to guide a compression into a reduced segmentation. If the method has merit, different starts should compress down into comparable segmentations. Therefore a measure to establish the similarity of two or more segmentations was developed. Different quantitative metrics were studied and several modes of compression were examined. Some impressive results are presented but the methods are still not robust with respect to segmentation starts and are image dependent as to the best modes of compression.
机译:最近开发的基于直方图的高光谱数据分割技术可以进行大量分割。用户可以指定所需的分割级别数,定义峰值的最小像素数以及从主成分浮动值到直方图块的映射中的非线性程度,所有这些因素都会影响得出的分割。在当前的工作中,我们试图扩展以前的工作,这些工作会从图像本身到达较小的聚类或分割级别范围。我们在此范围内寻找“更好的”细分,或者可能是唯一的代表性细分。用于实现此目标的方法始于超精细的细分,即比需要的细分级别更多的细分级别,并使用定量指标来衡量该细分的“质量”,并指导压缩成缩小的细分。如果该方法具有优点,则应将不同的开始压缩为可比较的细分。因此,开发了一种建立两个或多个分割的相似性的措施。研究了不同的量化指标,并研究了几种压缩模式。提出了一些令人印象深刻的结果,但是这些方法在分割开始方面仍然不够鲁棒,并且与图像的最佳压缩模式有关。

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