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Context inclusive function evaluation: a case study with EM-based multi-scale multi-granular image classification

机译:上下文包容性功能评估:基于基于EM的多尺度多粒度图像分类的案例研究

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摘要

Many statistical queries such as maximum likelihood estimation involve finding the best candidate model given a set of candidate models and a quality estimation function. This problem is common in important applications like land-use classification at multiple spatial resolutions from remote sensing raster data. Such a problem is computationally challenging due to the significant computation cost to evaluate the quality estimation function for each candidate model. For example, a recently proposed method of multi-scale, multi-granular classification has high computational overhead of function evaluation for various candidate models independently before comparison. In contrast, we propose an upper bound based context-inclusive approach that reduces computational overhead based on the context, i.e. the value of the quality estimation function for the best candidate model so far. We also prove that an upper bound exists for each candidate model and the proposed algorithm is correct. Experimental results using land-use classification at multiple spatial resolutions from satellite imagery show that the proposed approach reduces the computational cost significantly.
机译:诸如最大似然估计之类的许多统计查询涉及在给定一组候选模型和质量估计函数的情况下找到最佳候选模型。这个问题在重要应用中很常见,例如来自遥感栅格数据的多种空间分辨率的土地利用分类。由于评估每个候选模型的质量估计函数需要大量的计算成本,因此该问题在计算上具有挑战性。例如,最近提出的多尺度,多粒度分类的方法在比较之前独立地对各种候选模型进行函数评估具有高计算开销。相反,我们提出了一种基于上限的基于上下文的方法,该方法可减少基于上下文的计算开销,即迄今为止最佳候选模型的质量估计函数的值。我们还证明了每个候选模型的上限,并且所提出的算法是正确的。在卫星图像的多个空间分辨率下使用土地利用分类的实验结果表明,该方法显着降低了计算成本。

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