基于深度学习的血细胞检测和计数

Achal Narsale, Sakshi Nalwade, Medha Badgire, Sandhyarani Survase, Chetan. N. Aher
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引用次数: 0

摘要

临床医学诊断的一个重要组成部分是血细胞计数。CNN利用基于深度学习的检测方法,设计了一种自动计数血细胞的有效方法。不充分的边界框对齐和重叠项目识别是CNN检测方法面临的挑战。我们建议使用一种名为CNN的全新深度学习技术来克服这些限制。在特征提取网络中加入通道、空间注意机制,形成CNN。对于残差融合,CNN可以通过替换原有的特征向量,使用经过滤波和加权的特征向量来帮助网络提高检测精度。实验结果表明,典型的CNN网络可以在不增加太多额外参数的情况下提高血细胞计数检测性能,其中已经完成了细胞(红细胞、白细胞和血小板)识别的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blood Cell Detection and Counting via Deep Learning
A vital component of clinical medical diagnosis is blood cell count. CNN has devised an effective way of automatically counting blood cells using deep learning-based detection method. Inadequate bounding box alignment and overlapping item recognition are challenges for the CNN detection approach. We suggest a brand-new deep-learning technique called CNN to get over these restrictions. Channel, spatial attention mechanism is incorporated into the feature extraction network resulting in CNN. For residual fusion, CNN can assist the network in increasing detection accuracy by replacing the original feature vector and employing the filtered and weighted feature vector. The experimental results show that the typical CNN network may improve blood cell count detection performance without adding too many extra parameters, where the accuracy of identifying cells (RBCs, WBCs, and platelets) has been done.
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