首页> 外文期刊>Journal of The Institution of Engineers (India): Series B >Fundus Image Features Extraction for Exudate Mining in Coordination with Content Based Image Retrieval: A Study
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Fundus Image Features Extraction for Exudate Mining in Coordination with Content Based Image Retrieval: A Study

机译:与基于内容的图像检索相配合的渗出液眼底图像特征提取研究

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Medical field has seen a phenomenal improvement over the previous years. The invention of computers with appropriate increase in the processing and internet speed has changed the face of the medical technology. However there is still scope for improvement of the technologies in use today. One of the many such technologies of medical aid is the detection of afflictions of the eye. Although a repertoire of research has been accomplished in this field, most of them fail to address how to take the detection forward to a stage where it will be beneficial to the society at large. An automated system that can predict the current medical condition of a patient after taking the fundus image of his eye is yet to see the light of the day. Such a system is explored in this paper by summarizing a number of techniques for fundus image features extraction, predominantly hard exudate mining, coupled with Content Based Image Retrieval to develop an automation tool. The knowledge of the same would bring about worthy changes in the domain of exudates extraction of the eye. This is essential in cases where the patients may not have access to the best of technologies. This paper attempts at a comprehensive summary of the techniques for Content Based Image Retrieval (CBIR) or fundus features image extraction, and few choice methods of both, and an exploration which aims to find ways to combine these two attractive features, and combine them so that it is beneficial to all.
机译:在过去的几年中,医学领域取得了惊人的进步。适当增加处理速度和互联网速度的计算机的发明改变了医疗技术的面貌。然而,当今仍在使用中改进技术的空间。医疗援助的许多此类技术之一是检测眼睛的不适。尽管在该领域已经完成了一系列研究,但是大多数研究人员仍未解决如何将这种检测推进到对整个社会都有利的阶段。可以在拍摄患者眼底图像后预测患者当前医疗状况的自动化系统尚未见到实际情况。本文通过总结多种眼底图像特征提取技术(主要是硬渗出物挖掘)以及基于内容的图像检索来开发自动化工具,来探索这种系统。相同的知识将在眼睛的渗出液提取领域带来有价值的变化。这在患者可能无法获得最佳技术的情况下至关重要。本文尝试对基于内容的图像检索(CBIR)或眼底特征图像提取技术进行全面总结,以及两者的选择方法很少,并进行了一次探索,目的是寻找结合这两种吸引人的特征并将其结合在一起的方法。对所有人都有益。

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