图像相关强化学习的概念预消化方法

Sudhakara P. Reddy, R. Bapi, C. Bhagvati, B. Deekshatulu
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引用次数: 1

摘要

相关反馈(RF)通常用于改进CBIR系统的性能,允许迭代地合并用户反馈。最近,一种称为图像相关强化学习(IRRL)的方法被提出,用于集成几种现有的射频技术以及利用多个用户的射频会话。在基于q学习的强化学习(RL)方法中,每次迭代结束时获得的精度作为奖励信号。在IRRL中学习的目的是估计在特定迭代中对给定查询应用的最佳RF技术。irl的主要缺点是它的学习时间和存储要求过高。我们提出了一种解决这些困难的方法,即在应用IRRL之前对概念进行“预消化”。在两个图像数据库上的实验结果证明了该方法的可行性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concept Pre-digestion Method for Image Relevance Reinforcement Learning
Relevance feedback (RF) is commonly used to improve the performance of CBIR system by allowing incorporation of user feedback iteratively. Recently, a method called image relevance reinforcement learning (IRRL) has been proposed for integrating several existing RF techniques as well as for exploiting RF sessions of multiple users. The precision obtained at the end of every iteration is used was a reward signal in the Q-learning based reinforcement learning (RL) approach. The objective of learning in IRRL is to estimate the optimal RF technique to be applied for a given query at a specific iteration. The main drawback of IRRL is its prohibitive learning time and storage requirement. We propose a way of addressing these difficulties by performing `pre-digestion' of concepts before applying IRRL. Experimental results on two databases of images demonstrated the viability of the proposed approach
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