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Segmentation by Adaptive Prediction and Region Merging

机译:通过自适应预测和区域合并分割

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This paper presents a segmentation technique based on prediction and adaptive region merging. While many techniques for segmentation exist, few of them are suited for the segmentation of natural images containing regular textures defined on non-rectangular segments. In this paper, we propose a description of regions based on a deconvolution algorithm whose purpose is to remove the influence of the shape on region contents. The decoupling of shape and texture information is achieved either by adapting waveforms to the segment shape, which is a time-consuming task that needs to be repeated for each segment shape, or by the extrapolation of a signal to fit a rectangular window, which is the chosen path. The deconvolution algorithm is the key of a new segmentation technique that uses extrapolation as a prediction of neighbouring regions. When the prediction of a region fits the actual content of a connected region reasonably well, both regions are merged. The segmentation process starts with an over-segmented image. It progressively merges neighbouring regions whose extrapolations fit according to an energy criterion. After each merge, the algorithm updates the values of the merging criterion for regions connected to the merged region pair. It stops when no further gain is achieved in merging regions or when mean values of adjacent regions are too different. Simulation results indicate that, although our technique is tailored for natural images containing periodic signals and flat regions, it is in fact usable for a large set of natural images.
机译:本文提出了一种基于预测和自适应区域合并的分段技术。虽然存在许多用于分割的技术,但它们中的很少是适用于在非矩形段上定义的常规纹理的自然图像的分割。在本文中,我们提出了基于解卷积算法的区域的描述,其目的是消除区域内容物的影响。形状和纹理信息的去耦通过将波形调整到段形状,这是需要为每个段形状重复的耗时的任务,或者通过信号的外推成形为矩形窗口,这是所选的道路。 Deconvolulate算法是使用外推的新分段技术作为邻居区域的预测的键。当区域的预测适合连接区域的实际内容,两个区域都被合并。分段过程从过分段图像开始。它逐渐合并了相邻地区,其外推根据能量标准适应。在每个合并之后,算法更新连接到合并区域对的区域的合并标准的值。当在合并区域中没有实现进一步增益或者当相邻区域的平均值太大时,它停止。仿真结果表明,尽管我们的技术量身定制用于含周期信号和平面区域的自然图像,但实际上是可用于一大集的自然图像。

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