计算机科学 ›› 2010, Vol. 37 ›› Issue (6): 278-282.

• 图形图像 • 上一篇    下一篇

基于QPSO-MIL算法的图像标注

李大湘,彭进业,卜起荣   

  1. (西北大学信息科学与技术学院 西安710069);(西北工业大学电子信息学院 西安710072)
  • 出版日期:2018-12-01 发布日期:2018-12-01
  • 基金资助:
    本文受教育部新世纪优秀人才支持计划项目(NCET-07-0693)资助。

QPSO-based Multi-instance Learning for Image Annotation

LI Da-xiang,PENG Jin-ye,BU Qi-rong   

  • Online:2018-12-01 Published:2018-12-01

摘要: 在多数现有图像标注图像库中,关键字只标注在图像级而非区域级,使有监督学习方法在图像标注中难以应用。基于量子粒子群优化算法(quantum-bchavcd particle swarm optimization, QPSO)提出了一种新的多示例学习(mufti instance learning,MIL)算法—QPSC}MIL算法,在多示例学习的框架下将基于区域的图像标注问题描述成一个有监督的学习问题。该方法将图像当作包,分割的区域当作包中的示例,利用多样性密度(DD)函数,定义了粒子的适应度向量。在示例空间,利用QPSO方法在各个维度上同时搜索DD函数的全局极大值点,作为关键字的概念点,然后根据Bayesian后验概率最大准则(MAP)对图像进行标注。通过ECCV 2002图像库的实验结果表明,QPSO-MIL算法是有效的。

关键词: 多示例学习,图像标注,量子粒子群优化

Abstract: In most existing training data set for image annotation, keywords are usually associated with images instead of individual regions, so it is difficult to use supervised learning methods for image annotation. In this paper, based on quantum-behaved particle swarm optimization algorithm(QPSO) , a novel multi instance learning (MIL) algorithm was presented( QPSO-MIL),we formulated image annotation as a supervised learning problem under Multiple-Instance Learning framework. This algorithm regards every image as a bag, and the feature vectors of the segmented regions in this image as instances. We defined a fitness vector for each particle based on the diversity density(Dl)) function. In the instance feature space we used QPSO to search the global maxima of DD function in each dimension simultaneously, and took the result as a concept point of the keyword,finally assigned corresponding key words to a test image according to the Bayesian maximum a posteriori probability criteria. Experimental results on ECCV 2002 data set indicated that the QPSO-MIL method is effective.

Key words: Multi-instance learning(MIL),Image annotation,Quantum-behaved particle swarm optimization(QPSO)

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