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Reasoning and algorithm selection augmented symbolic segmentation

机译:推理和算法选择增强符号分割

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In this paper an alternative method to symbolic segmentation is studied. Semantic segmentation being one of the most difficult tasks currently in the computer vision area, and large number of algorithms is being developed. Thus the proposed approach in this paper exploits this large amount of available computational tools by using the algorithm selection approach. That is, let there be a set A of available algorithms for symbolic segmentation, a set of input features F, a set of image attribute A and a selection mechanism S(F, A, A) that selects on a case by case basis the best algorithm. The semantic segmentation is then an optimization process that combines best component segments from multiple results into a single optimal result. The experiments compare three different algorithm selection mechanisms using three selected semantic segmentation algorithms. The results show that using the current state of art algorithms and relatively low accuracy of algorithm selection the accuracy of the semantic segmentation can be improved by 2%.
机译:本文研究了符号分割的另一种方法。语义分割是当前计算机视觉领域中最困难的任务之一,并且正在开发大量算法。因此,本文提出的方法通过使用算法选择方法来利用大量可用的计算工具。就是说,存在一组用于符号分割的可用算法A,一组输入特征F,一组图像属性A和一个选择机制S(F,A,A),该选择机制视情况选择最佳算法。然后,语义分割是一个优化过程,将来自多个结果的最佳组成部分组合为一个最佳结果。实验使用三种选择的语义分割算法比较了三种不同的算法选择机制。结果表明,使用当前的算法水平和较低的算法选择精度,语义分割的精度可以提高2%。

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