Motivated by a $2$-dimensional (unsupervised) image segmentation task whereby local regions of pixels are clustered via edge detection methods, a more general probabilistic mathematical framework is devised. Critical thresholds are calculated that indicate strong correlation between randomly-generated, high dimensional data points that have been projected into structures in a partition of a bounded, $2$-dimensional area, of which, an image is a special case. A neighbor concept for structures in the partition is defined and a critical radius is uncovered. Measured from a central structure in localized regions of the partition, the radius indicates strong, long and short range correlation in the count of occupied structures. The size of a short interval of radii is estimated upon which the transition from short-to-long range correlation is virtually assured, which defines a demarcation of when an image ceases to be "interesting".
翻译:以2美元维维(无人监督)图像分割任务为动力,通过边缘探测方法将像素的局部区域聚在一起,设计了一个更普遍的概率数学框架。计算出临界阈值,显示随机生成的高维数据点在被投射到一个捆绑的、2美元维的面积的分区结构中的结构中具有很强的关联性,其中图像是一个特殊案例。对分区结构的邻近概念进行了定义,并发现了一个关键半径。从分区局部区域的中央结构中测量,半径表示所占用结构的计数中具有强、长、短距离的关联性。估计了短距离辐射的间隔,从短距离到长距离的关联性几乎可以保证,这就界定了图像停止为“感兴趣”时的界限。