显微图像分析和微生物目标检测(MOD)的机器学习方法作为决策支持系统

Rapti Chaudhuri, S. Deb
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引用次数: 2

摘要

微生物是一种肉眼无法看到的微小生物,它们与其他动物一起共存于生物圈周围。从细胞结构的基本形式到致命的大流行致病因素,对微生物进行重大鉴定对卫生和卫生支持系统至关重要。人工识别这些生物消耗了无限的时间,导致频繁的污染。在这项工作中,上下文主要集中在视觉特征的自动显微图像分析上,通过结合系统的模式匹配方法来快速识别微生物。利用最新的实时目标检测策略对微生物进行分类和识别。用细菌图像对实验结果进行了分析,以验证所采用技术的精密度和准确性。所得到的结果的可视化和图形化表示证明了有关程序的有效性和正确性。此外,还讨论了微生物鉴定过程中面临的挑战和困难以及需要解决的技术问题。该方法是一种有组织的病原微生物快速分析技术,可作为现场级病理决策支持系统的来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning approaches for Microscopic Image analysis and Microbial Object Detection(MOD) as a decision support system
Microbes are tiny living organisms beyond the scope to be seen by the naked eye that are coexisting all around the biosphere along with other animals. Significant identification of the microbes from the elementary forms of cell structure to deadly pandemic causing elements are vital for health and hygiene support systems. Manual identification of such creatures consumes infinite amount of time resulting in frequent contamination. In this work, the context is primarily focused on automated microscopic image analysis on visual features by incorporating systematic pattern matching approaches for rapid identification of the microbes. The microbes are classified and recognized using the state of art of real time object detection strategy. Experimental result analysis is done with bacterial images to confirm the precision and accuracy of the utilized technique. Visual and graphical representation of the result obtained confers the validity and correctness of the concerned procedure. Further, the challenges and the difficulties faced during the microbe identification and the techniques to tackle have also been discussed subsequently. The proposed solution is proved to be quick and swift analyzing technique of pathogenic microbes in an organized way and has potential to be used as a source of field-level pathology decision support system.
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