Bayesian Network for algorithm selection: Real-world hierarchy for nodes reduction

M. Lukac, M. Kameyama
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引用次数: 1

Abstract

In order to obtain the best result in image understanding it is desirable to select the best algorithm on a case by case basis. An algorithm can be selected using only image features, however such selected algorithms will often generate errors due to occlusion, shadows and other environmental conditions. To avoid such errors, it is necessary to understand processing errors on a symbolic level. Using symbolic information to determine the best algorithm is however difficult task because the possible combinations of elements and environmental conditions are almost infinite. Consequently it is impossible to predict best algorithm for all possible combinations of objects, environment conditions and context variations. In this paper we investigate selection of algorithms using symbolic image description and the determination of algorithms' error from high level image description. The proposed method transforms and minimize the high level information contained in the symbolic image description in such manner that will preserve the algorithm selection quality. The transformation takes a high level information label and transforms it into a set of generic features while the minimization uses hierarchy to reduce the specific nature of the information. Both methods of information reduction are used in a Bayesian Network because a BN is well known for using the generalization and hierarchy. As is shown in this paper, such representation efficiently reduces the fine grain high-level symbolic description to a coarser-grain hierarchy that preserves the selection quality but reduces the number of nodes.
贝叶斯网络的算法选择:现实世界的层次结构节点缩减
为了获得最佳的图像理解结果,需要逐案选择最佳算法。可以仅根据图像特征选择算法,但是所选择的算法往往会由于遮挡、阴影等环境条件而产生误差。为了避免这种错误,有必要在符号级别上理解处理错误。然而,使用符号信息来确定最佳算法是一项困难的任务,因为元素和环境条件的可能组合几乎是无限的。因此,不可能预测所有可能的对象、环境条件和上下文变化组合的最佳算法。本文研究了符号图像描述算法的选择以及从高层次图像描述中确定算法误差的问题。该方法对包含在符号图像描述中的高级信息进行变换和最小化,从而保持算法选择的质量。转换采用高级信息标签并将其转换为一组通用特征,而最小化使用层次结构来减少信息的特定性质。这两种信息约简方法都用于贝叶斯网络,因为BN以使用泛化和层次结构而闻名。如本文所示,这种表示有效地将细粒度高级符号描述简化为粗粒度层次结构,在保留选择质量的同时减少了节点数量。
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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