College of Computer Science and Cyber Security, Chengdu University of Technology, Chengdu 610059, China.
The Key Laboratory of Optoelectronic Technology and Systems, Ministry of Education, Chongqing University, Chongqing 400044, China.
Sensors (Basel). 2022 Jan 21;22(3):821. doi: 10.3390/s22030821.
Currently, the tuberculosis (TB) detection model based on chest X-ray images has the problem of excessive reliance on hardware computing resources, high equipment performance requirements, and being harder to deploy in low-cost personal computer and embedded devices. An efficient tuberculosis detection model is proposed to achieve accurate, efficient, and stable tuberculosis screening on devices with lower hardware levels. Due to the particularity of the chest X-ray images of TB patients, there are fewer labeled data, and the deep neural network model is difficult to fully train. We first analyzed the data distribution characteristics of two public TB datasets, and found that the two-stage tuberculosis identification (first divide, then classify) is insufficient. Secondly, according to the particularity of the detection image(s), the basic residual module was optimized and improved, and this is regarded as a crucial component of this article's network. Finally, an efficient attention mechanism was introduced, which was used to fuse the channel features. The network architecture was optimally designed and adjusted according to the correct and sufficient experimental content. In order to evaluate the performance of the network, it was compared with other lightweight networks under personal computer and Jetson Xavier embedded devices. The experimental results show that the recall rate and accuracy of the E-TBNet proposed in this paper are better than those of classic lightweight networks such as SqueezeNet and ShuffleNet, and it also has a shorter reasoning time. E-TBNet will be more advantageous to deploy on equipment with low levels of hardware.
目前,基于胸部 X 光图像的结核病(TB)检测模型存在过度依赖硬件计算资源、对设备性能要求高、难以在低成本个人计算机和嵌入式设备中部署等问题。本文提出了一种高效的结核病检测模型,旨在实现更低硬件水平设备上的准确、高效、稳定的结核病筛查。由于 TB 患者的胸部 X 光图像的特殊性,标记数据较少,深度神经网络模型难以充分训练。我们首先分析了两个公共 TB 数据集的数据分布特征,发现两阶段结核病识别(先划分,再分类)不够充分。其次,根据检测图像的特殊性,对基本残差模块进行了优化和改进,这被视为本文网络的关键组成部分。最后,引入了高效的注意力机制,用于融合通道特征。根据正确和充分的实验内容,对网络架构进行了优化设计和调整。为了评估网络的性能,将其与个人计算机和 Jetson Xavier 嵌入式设备上的其他轻量级网络进行了比较。实验结果表明,本文提出的 E-TBNet 的召回率和准确率均优于 SqueezeNet 和 ShuffleNet 等经典轻量级网络,推理时间也更短。E-TBNet 将更有利于在硬件水平较低的设备上部署。