Retrieving and ranking unannotated images through collaboratively mining online search results

Songhua Xu, Hao Jiang, F. Lau
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引用次数: 3

Abstract

We present a new image search and ranking algorithm for retrieving unannotated images by collaboratively mining online search results which consist of online image and text search results. The online image search results are leveraged as reference examples to perform content-based image search over unannotated images. The online text search results are utilized to estimate the reference images' relevance to the search query. The key feature of our method is its capability to deal with unreliable online image search results through jointly mining visual and textual aspects of online search results. Through such collaborative mining, our algorithm infers the relevance of an online search result image to a text query. Once we obtain the estimate of query relevance score for each online image search result, we can selectively use query specific online search result images as reference examples for retrieving and ranking unannotated images. We tested our algorithm both on the standard public image datasets and several modestly sized personal photo collections. We also compared our method with two well-known peer methods. The results indicate that our algorithm is superior to existing content-based image search algorithms for retrieving and ranking unannotated images.
通过协同挖掘在线搜索结果检索和排序未注释的图像
通过对在线图像和文本搜索结果的协同挖掘,提出了一种新的无注释图像检索排序算法。利用在线图像搜索结果作为参考示例,对未注释的图像执行基于内容的图像搜索。利用在线文本搜索结果来估计参考图像与搜索查询的相关性。该方法的主要特点是能够通过联合挖掘在线搜索结果的视觉和文本方面来处理不可靠的在线图像搜索结果。通过这种协同挖掘,我们的算法推断出在线搜索结果图像与文本查询的相关性。一旦我们获得了每个在线图像搜索结果的查询相关性评分估计值,我们就可以选择性地使用查询特定的在线搜索结果图像作为参考示例来检索和排序未注释的图像。我们在标准的公共图像数据集和几个中等大小的个人图片集上测试了我们的算法。我们还将我们的方法与两种知名的同类方法进行了比较。结果表明,我们的算法在检索和排序未注释图像方面优于现有的基于内容的图像搜索算法。
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