首页> 外文期刊>Information retrieval >Evaluating multimodal relevance feedback techniques for medical image retrieval
【24h】

Evaluating multimodal relevance feedback techniques for medical image retrieval

机译:评价用于医学图像检索的多峰相关反馈技术

获取原文
获取原文并翻译 | 示例
           

摘要

Medical image retrieval can assist physicians in finding information supporting their diagnosis and fulfilling information needs. Systems that allow searching for medical images need to provide tools for quick and easy navigation and query refinement as the time available for information search is often short. Relevance feedback is a powerful tool in information retrieval. This study evaluates relevance feedback techniques with regard to the content they use. A novel relevance feedback technique that uses both text and visual information of the results is proposed. The two information modalities from the image examples are fused either at the feature level using the Rocchio algorithm or at the query list fusion step using a common late fusion rule. Results using the ImageCLEF 2012 benchmark database for medical image retrieval show the potential of relevance feedback techniques in medical image retrieval. The mean average precision (mAP) is used as the evaluation metric and the proposed method outperforms commonly-used methods. The baseline without feedback reached 16 % whereas the relevance feedback with 20 images reached up to 26.35 % with three steps and when using 100 images up to 34.87 % in four steps. Most improvements occur in the first two steps of relevance feedback and then results start to become relatively flat. This might also be due to only using positive feedback as negative feeback often also improves results after more steps. The effect of relevance feedback in automatically spelling corrected and translated queries is investigated as well. Results without mistakes were better than spell-corrected results but the spelling correction more than double results over non-corrected retrieval. Multimodal relevance feedback has shown to be able to help visual medical information retrieval. Next steps include integrating semantics into relevance feedback techniques to benefit from the structured knowledge of ontologies and experimenting on the fusion of text and visual information.
机译:医学图像检索可以帮助医师找到支持他们的诊断和满足信息需求的信息。由于可用于信息搜索的时间通常很短,因此允许搜索医学图像的系统需要提供快速简便的导航和查询细化工具。相关性反馈是信息检索中的强大工具。这项研究针对其使用的内容评估了相关性反馈技术。提出了一种新颖的关联反馈技术,该技术同时使用文本和结果的视觉信息。使用Rocchio算法在特征级别上融合图像示例中的两种信息模态,或者使用通用后期融合规则在查询列表融合步骤中融合两种图像模态。使用ImageCLEF 2012基准数据库进行医学图像检索的结果显示了相关反馈技术在医学图像检索中的潜力。将平均平均精度(mAP)用作评估指标,并且所提出的方法优于常用方法。没有反馈的基线达到16%,而具有20张图像的相关性反馈通过三个步骤达到了26.35%,而使用100张图像的相关反馈则以四个步骤达到了34.87%。大多数改进发生在相关性反馈的前两个步骤中,然后结果开始变得相对平坦。这也可能是由于仅使用正面反馈,因为负面的回报通常还会在采取更多措施后改善结果。还研究了相关性反馈在自动拼写更正和翻译的查询中的作用。没有错误的结果要比拼写校正的结果要好,但是拼写校正的结果要比未校正的检索结果翻倍。多模式相关性反馈已显示能够帮助视觉医学信息检索。下一步包括将语义集成到相关性反馈技术中,以从本体的结构化知识中受益,并尝试进行文本和视觉信息的融合。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号