Pattern classification using bag-of-keypoints for improper object extraction

Izumi Suzuki
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引用次数: 0

Abstract

The classifications when a target is not properly extracted due to improper segmentation include the multi-class case, in which the target contains objects belonging to different classes. In this paper, a method is applied to transform the multiclass case to a single-label classification by creating merged classes. To train merged classes, each feature must be defined in a very small domain, and the range of each feature must be binary, i.e., {0, 1}. It is not a contradiction to consider that the range of each feature is binary when the naïve Bayes classifier is employed in the bag-of-keypoints method. Thus, a fuzzy extension technique is proposed that enables us to consider the range of each feature as continuous, i.e., [0, 1]. By using the weighted average operation of the fuzzy vector, the ordinary Bayes classifier can be applied to solve multiclass cases. The experimental results verify that the classifier correctly detects 1) multi-class targets, and 2) targets in the incomplete case, in which the target is not properly extracted.
利用关键点袋进行模式分类,对不适当的目标进行提取
由于分割不当导致目标无法正确提取的分类包括多类情况,即目标包含属于不同类别的对象。本文提出了一种通过创建合并类,将多类情况转化为单标签分类的方法。为了训练合并类,每个特征必须定义在一个非常小的域中,并且每个特征的范围必须是二进制的,即{0,1}。在关键点袋方法中使用naïve贝叶斯分类器时,认为每个特征的范围是二值的,这并不矛盾。因此,提出了一种模糊扩展技术,使我们能够将每个特征的范围视为连续的,即[0,1]。通过对模糊向量进行加权平均运算,普通贝叶斯分类器可用于求解多类情况。实验结果表明,该分类器能够正确地检测1)多类目标,2)不完整情况下的目标,即未正确提取目标。
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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