基于UD-MHDC分割和MBD-RCNN分类技术的宫颈癌检测框架

Meghana A Rajeev
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引用次数: 0

摘要

子宫颈癌是一种发生在子宫入口的癌症。巴氏试验使子宫颈癌很可能成为最可预防的癌症之一,可用于初步鉴定。尽管如此,整个互动是乏味的,昂贵的,并且涉及到观察者的偏见。为了克服现有的挑战,该工作开发了一个使用UDMHDC分割和MBD-RCNN分类算法的宫颈癌自动检测框架。所提出的分割技术和MBDRCNN模型在计算时间较短的情况下提供了准确的子宫颈癌分类。
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A Framework for Detecting Cervical Cancer Based on UD-MHDC Segmentation and MBD-RCNN Classification Techniques
Cervical cancer is a cancer of the entrance to the uterus. Pap test has made cervical cancer quite possibly one of the most preventable types of cancer, which can be utilized for its initial identification. Be that as it may, the whole interaction is tedious, expensive and involves observer biases. In order to conquer existing challenges the work has developed an automated cervical cancer detection framework using the UDMHDC segmentation and MBD-RCNN classification algorithm. The proposed segmentation technique and MBDRCNN model provides accurate classification of cervical cancer along with low computational time.
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