Image segmentation aims at identifying regions of interest within an image, by grouping pixels according to their properties. This task resembles the statistical one of clustering, yet many standard clustering methods fail to meet the basic requirements of image segmentation: segment shapes are often biased toward predetermined shapes and their number is rarely determined automatically. Nonparametric clustering is, in principle, free from these limitations and turns out to be particularly suitable for the task of image segmentation. This is also witnessed by several operational analogies, as, for instance, the resort to topological data analysis and spatial tessellation in both the frameworks. We discuss the application of nonparametric clustering to image segmentation and provide an algorithm specific for this task. Pixel similarity is evaluated in terms of density of the color representation and the adjacency structure of the pixels is exploited to introduce a simple, yet effective method to identify image segments as disconnected high-density regions. The proposed method works both to segment an image and to detect its boundaries and can be seen as a generalization to color images of the class of thresholding methods.
翻译:图像分割法的目的是通过根据图像属性分组像素来识别图像中感兴趣的区域。 任务类似于分组的统计方法, 但许多标准组群方法无法满足图像分割的基本要求: 区块形状往往偏向预定形状, 其数量很少自动确定。 非对称组群原则上不受这些限制, 并被证明特别适合图像分割任务。 这还体现在一些实用的类比中, 例如在两个框架中都采用地貌数据分析和空间套接。 我们讨论将非参数组群应用于图像分割, 并为这一任务提供一种具体的算法。 对相形体的相似性从颜色代表的密度和像素的对称结构的角度进行评估, 以便引入简单而有效的方法, 将图像部分确定为相连接的高密度区域。 所提议的方法既可以将图像分割成一个部分, 也可以探测其边界, 并且可以被视为临界方法类别中彩色图像的一般化。