吸收随机游走的图像相关性重排序方法

Zhong Ji, Yuting Su, Yanwei Pang, Xiaojie Qu
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引用次数: 7

摘要

图像视觉重排序既保留了典型用户偏好的简单搜索机制,又以另一种方式利用了视觉信息和图像分析方法。因此,它集实时性和准确性于一体,对建立实用的图像搜索系统具有重要意义。本文提出了一种新的重排序方法DIRRA,该方法利用吸收随机漫步来增强初始搜索结果的多样性和相关性。首先提取四种图像视觉特征,然后构建图,其中节点为图像,边缘为图像之间的相似度。接下来,通过传送图上的随机游走来确定第一个项目,最后通过吸收图上的随机游走来确定其他项目。在包含10个查询的web图像数据库上进行了实验,证明了重新排序结果的多样性和相关性,对于提高用户在web搜索中的满意度具有实际意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diversifying the Image Relevance Reranking with Absorbing Random Walks
Image visual reranking holds the simple search mechanism preferred by typical users, and exploits the visual information and image analysis methods in another way. Therefore, it integrates characteristics of real-time and accuracy, and has great importance to establish practical image search system. A novel reranking method named DIRRA is proposed in this paper, in which absorbing random walks is utilized to enhance the diversity as well as relevance of the initial search results. Four kinds of image visual features are extracted firstly, and then a graph is built, where nodes are images and edges are the similarities between images. Next, the first item is decided by teleporting random walks on the graph, and the other items are decided by absorbing random walks on the graph at last. Experiments are performed on a web image database including 10 queries, which prove the reranking results are both diverse and relevant, and practical to improve user's satisfaction in web search.
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