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Semi-automated techniques for the retrieval of dermatological condition in color skin images.

机译:在彩色皮肤图像中检索皮肤病学状况的半自动化技术。

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摘要

Dermatologists base the diagnosis of skin disease on the visual assessment of the skin. This fact shows that correct diagnosis is highly dependent on the observer's experience and on his or her visual perception. Moreover, the human vision system lacks accuracy, reproducibility, and quantification in the way it gathers information from an image. So, there is a great need for computer-aided diagnosis.;We propose a content-based image retrieval (CBIR) system to aid in the diagnosis of skin disease. First, after examining the skin images, pre-processing will be performed. Second, we examine the visual features for skin disease classified in the database and select color, texture and shape for characterization of a certain skin disease. Third, feature extraction techniques for each visual feature are investigated respectively. Fourth, similarity measures based on the extracted features will be discussed. Last, after discussing single feature performance, a distance metric combination scheme will be explored.;The experimental data set is divided into two parts: developmental data set used as an image library and an unlabeled independent test data set. Two sets of experiments are performed: the input image of the skin image retrieval algorithm is either from developmental data set or independent test data set.;The results are top five candidates of the input query image, that is, five labeled images from image library. Results are laid out separately for developmental data set and independent test data set. Two evaluation systems, both the standard precision vs. recall method, and the self-developed scoring method are carried out. The evaluation results obtained by both methods are given for each class of disease.;Among all visual features, we found the color feature played a dominating role in distinguishing different types of skin disease. Among all classes of images, the class with best feature consistency gained the best retrieval accuracy based on the evaluation result. For future research we recommend further work in image collection protocol, color balancing, combining the feature metrics, improving texture characterization and incorporating semantic assistance in the retrieved process.
机译:皮肤科医生基于皮肤的视觉评估来诊断皮肤疾病。这个事实表明正确的诊断高度依赖于观察者的经验以及他或她的视觉感知。此外,人类视觉系统从图像中收集信息的方式缺乏准确性,可重复性和量化性。因此,迫切需要计算机辅助诊断。我们提出了一种基于内容的图像检索(CBIR)系统,以帮助诊断皮肤疾病。首先,在检查皮肤图像之后,将执行预处理。其次,我们检查数据库中分类的皮肤疾病的视觉特征,并选择颜色,纹理和形状来表征某种皮肤疾病。第三,分别研究每个视觉特征的特征提取技术。第四,将讨论基于提取的特征的相似性度量。最后,在讨论了单特征性能之后,将探索一种距离度量组合方案。实验数据集分为两部分:用作图像库的开发数据集和未标记的独立测试数据集。进行了两组实验:皮肤图像检索算法的输入图像来自发育数据集或独立的测试数据集;结果是输入查询图像的前五名候选者,即图像库中的五张标记图像。结果分别针对开发数据集和独立测试数据集列出。实施了两种评估系统,标准精度和召回方法,以及自行开发的评分方法。通过两种方法获得的评估结果针对每种疾病。在所有视觉特征中,我们发现颜色特征在区分不同类型的皮肤疾病中起主要作用。在所有图像类别中,具有最佳特征一致性的类别根据评估结果获得了最佳检索精度。对于将来的研究,我们建议在图像收集协议,颜色平衡,组合特征量度,改善纹理特征以及在检索过程中合并语义辅助等方面进行进一步的工作。

著录项

  • 作者

    Huang, Ranxi.;

  • 作者单位

    Rochester Institute of Technology.;

  • 授予单位 Rochester Institute of Technology.;
  • 学科 Computer Science.
  • 学位 M.S.
  • 年度 2009
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:38:00

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