2DKD:基于内容的本地图像搜索工具包。

Q2 Decision Sciences Source Code for Biology and Medicine Pub Date : 2020-02-10 eCollection Date: 2020-01-01 DOI:10.1186/s13029-020-0077-1
Julian S DeVille, Daisuke Kihara, Atilla Sit
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引用次数: 0

摘要

背景:由于需要对图像进行平移、旋转和缩放以评估其相似性,因此直接比较二维图像的计算效率很低。在数字病理学和低温电子显微镜等许多生物应用中,识别图像的特定局部区域往往特别重要。因此,寻找能够有效检索局部图像片段或子图像的不变描述符就变得十分必要:我们推出了一款名为 "二维 Krawtchouk 描述符 "的软件包,可在二维图像中执行局部子图像搜索。新工具包只使用每幅图像的少量不变描述符来进行高效的局部图像检索。这样就能在潜在的大型数据库中查询图像并比较本地的相似模式。我们展示了这些描述符似乎对搜索图像中的局部模式或小颗粒很有用,并演示了一些测试案例,这些案例对装配软件开发人员及其用户都很有帮助:局部图像比较和子图像搜索在计算复杂度和运行时间方面都很繁琐,这是由于相关对象的旋转、缩放和平移等因素造成的。通过使用 2DKD 工具包,只需开发相对较少的描述符即可描述给定图像,而且内存使用量极小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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2DKD: a toolkit for content-based local image search.

Background: Direct comparison of 2D images is computationally inefficient due to the need for translation, rotation, and scaling of the images to evaluate their similarity. In many biological applications, such as digital pathology and cryo-EM, often identifying specific local regions of images is of particular interest. Therefore, finding invariant descriptors that can efficiently retrieve local image patches or subimages becomes necessary.

Results: We present a software package called Two-Dimensional Krawtchouk Descriptors that allows to perform local subimage search in 2D images. The new toolkit uses only a small number of invariant descriptors per image for efficient local image retrieval. This enables querying an image and comparing similar patterns locally across a potentially large database. We show that these descriptors appear to be useful for searching local patterns or small particles in images and demonstrate some test cases that can be helpful for both assembly software developers and their users.

Conclusions: Local image comparison and subimage search can prove cumbersome in both computational complexity and runtime, due to factors such as the rotation, scaling, and translation of the object in question. By using the 2DKD toolkit, relatively few descriptors are developed to describe a given image, and this can be achieved with minimal memory usage.

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Source Code for Biology and Medicine
Source Code for Biology and Medicine Decision Sciences-Information Systems and Management
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期刊介绍: Source Code for Biology and Medicine is a peer-reviewed open access, online journal that publishes articles on source code employed over a wide range of applications in biology and medicine. The journal"s aim is to publish source code for distribution and use in the public domain in order to advance biological and medical research. Through this dissemination, it may be possible to shorten the time required for solving certain computational problems for which there is limited source code availability or resources.
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