Detection and Differentiation of blood cancer cells using Edge Detection method

Soumya T
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Abstract

Medical imaging is an essential data source that has been leveraged worldwide in health- care systems. In pathology, histopathology images are used for cancer diagnosis, whereas these images are very complex and their analyses by pathologists require large amounts of time and effort. On the other hand, although convolutional neural networks (CNNs) have produced near-human results in image processing tasks, their processing time is becoming longer and they need higher computational power. In this paper, we implement a quantized ResNet model on two histopathology image datasets to optimize the inference power consumption
利用边缘检测方法检测和分化血癌细胞
医学影像是一种重要的数据来源,已在全球卫生保健系统中得到利用。在病理学中,组织病理学图像用于癌症诊断,然而这些图像非常复杂,病理学家对其进行分析需要大量的时间和精力。另一方面,虽然卷积神经网络(cnn)在图像处理任务中产生了接近人类的结果,但其处理时间越来越长,需要更高的计算能力。在本文中,我们在两个组织病理学图像数据集上实现了量化的ResNet模型,以优化推理功耗
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