Large scale region-merging segmentation using the local mutual best fitting concept

P. Lassalle, J. Inglada, J. Michel, M. Grizonnet, J. Malik
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引用次数: 7

Abstract

Large scale segmentation remains a challenging task because of time and memory consuming. A usual strategy to process efficiently a large volume of data is to divide into chunks to be processed separately, either sequentially to reduce memory footprint or in parallel in order to speed up the computation. In image processing in general this boils down to dividing the input image into tiles. However, for image segmentation, the tile splitting usually leads incoherent segments on the borders of the tiles even when some overlap between the tiles is applied. In this paper we propose a new strategy making possible the tiling for image segmentation algorithms while maintaining the accuracy of the final results. Specifically, we focus on iterative region merging methods but the strategy can be extended to any segmentation algorithm. The introduction of the local mutual best fitting concept and the area of influence of a segment allows to establish a new methodology of segmentation based on three phases: the tile-based reduction, the iterative reduction and the completion of the segmentation. This new methodology was applied on a large Pleiades HR image with success proving the feasibility of the approach.
基于局部互最优拟合的大规模区域合并分割
由于时间和内存的消耗,大规模分段仍然是一个具有挑战性的任务。有效处理大量数据的一种常用策略是将数据块分成单独处理,或者按顺序处理以减少内存占用,或者并行处理以加快计算速度。在一般的图像处理中,这可以归结为将输入图像划分为块。然而,对于图像分割,即使在瓦片之间应用了一些重叠,瓦片分割通常也会导致瓦片边界上的不一致的瓦片。在本文中,我们提出了一种新的策略,使图像分割算法的平铺成为可能,同时保持最终结果的准确性。具体来说,我们关注的是迭代区域合并方法,但该策略可以扩展到任何分割算法。引入局部相互最佳拟合概念和段的影响范围,可以建立一种基于三个阶段的分割方法:基于瓦片的约简、迭代约简和分割完成。这个新方法被应用在一个大型昴宿星团HR图像上,成功地证明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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