论文标题
基于编码器的基于COVID-19的肺部感染分割的方法
An encoder-decoder-based method for COVID-19 lung infection segmentation
论文作者
论文摘要
COVID-19疾病的新颖性和传播的速度造成了巨大的混乱,在全球研究人员中冲动,以利用所有资源和能力来理解和分析冠状病毒的特征,以其传播方式和病毒孵化时间的方式。为此,使用了现有的医疗功能,例如CT和X射线图像。例如,CT扫描图像可用于检测肺部感染。但是这些特征的挑战,例如图像和感染特征的质量限制了这些特征的有效性。使用人工智能(AI)工具和计算机视觉算法,检测的准确性可以更准确,并且可以帮助克服这些问题。本文提出了一种使用CT扫描图像的多任务深度学习方法,用于肺部感染分割。我们提出的方法首先要分割可感染的肺部区域。然后,将这些区域的感染分割。同样,要执行多级分割,使用两流入者输入训练了所提出的模型。本文使用的多任务学习使我们能够克服标记数据的短缺。此外,多输入流允许模型对许多可以改善结果的功能进行学习。为了评估所提出的方法,已经使用了许多功能。同样,从实验中,即使数据短缺和标记的图像,提出的方法也可以分割具有高度性能的肺部感染。此外,与最先进的方法相比,我们的方法可获得良好的性能结果。
The novelty of the COVID-19 disease and the speed of spread has created a colossal chaos, impulse among researchers worldwide to exploit all the resources and capabilities to understand and analyze characteristics of the coronavirus in term of the ways it spreads and virus incubation time. For that, the existing medical features like CT and X-ray images are used. For example, CT-scan images can be used for the detection of lung infection. But the challenges of these features such as the quality of the image and infection characteristics limitate the effectiveness of these features. Using artificial intelligence (AI) tools and computer vision algorithms, the accuracy of detection can be more accurate and can help to overcome these issues. This paper proposes a multi-task deep-learning-based method for lung infection segmentation using CT-scan images. Our proposed method starts by segmenting the lung regions that can be infected. Then, segmenting the infections in these regions. Also, to perform a multi-class segmentation the proposed model is trained using the two-stream inputs. The multi-task learning used in this paper allows us to overcome shortage of labeled data. Also, the multi-input stream allows the model to do the learning on many features that can improve the results. To evaluate the proposed method, many features have been used. Also, from the experiments, the proposed method can segment lung infections with a high degree performance even with shortage of data and labeled images. In addition, comparing with the state-of-the-art method our method achieves good performance results.