Diabetes is a raising problem that affects many people globally. Diabetic patients are at risk of developing foot ulcer that usually leads to limb amputation, causing significant morbidity, and psychological distress. In order to develop a self monitoring mobile application, it is necessary to be able to classify such ulcers into either of the following classes: Infection, Ischaemia, None, or Both. In this work, we compare the performance of a classical transfer-learning-based method, with the performance of a hybrid classical-quantum Classifier on diabetic foot ulcer classification task. As such, we merge the pre-trained Xception network with a multi-class variational classifier. Thus, after modifying and re-training the Xception network, we extract the output of a mid-layer and employ it as deep-features presenters of the given images. Finally, we use those deep-features to train multi-class variational classifier, where each classifier is implemented on an individual variational circuit. The method is then evaluated on the blind test set DFUC2021. The results proves that our proposed hybrid classical-quantum Classifier leads to considerable improvement compared to solely relying on transfer learning concept through training the modified version of Xception network.
翻译:糖尿病是影响全球许多人的一个新问题。糖尿病患者面临发展通常导致截肢、严重发病和心理痛苦的脚溃疡的风险。为了开发自我监测的移动应用程序,必须能够将这种溃疡分为以下两类:感染、白血病、无病或两种。在这项工作中,我们比较传统转移-学习方法的性能和糖尿病溃疡分类任务的混合古典-分子分级器的性能。因此,我们将预先培训的Xception网络与多级变异分类器合并。因此,在修改和再培训Xception网络之后,我们提取中层的产值,并将其作为给定图像的深功能展示器。最后,我们用这些深功能来培训多级变异分类器,每个分级器都用在个别变异电路上。然后用盲人测试来评价这一方法,设置了DFUC2021。结果证明,在修改和再培训Xcion网络后,我们拟议的中层输出了中层的混合感官感官感官,通过分析网络进行相当程度的升级。