Bag-of-Visual Words (BoVW) and deep learning techniques have been widely used in several domains, which include computer-assisted medical diagnoses. In this work, we are interested in developing tools for the automatic identification of Parkinson's disease using machine learning and the concept of BoVW. The proposed approach concerns a hierarchical-based learning technique to design visual dictionaries through the Deep Optimum-Path Forest classifier. The proposed method was evaluated in six datasets derived from data collected from individuals when performing handwriting exams. Experimental results showed the potential of the technique, with robust achievements.
翻译:在这项工作中,我们有兴趣开发各种工具,利用机器学习和生命之宝概念自动识别帕金森氏病。拟议方法涉及一种基于等级的学习技术,通过深最佳-帕特森林分类器设计视觉词典。拟议方法在六个数据集中进行了评价,这些数据集来自个人在笔迹测试时收集的数据。实验结果显示了该技术的潜力,并取得了扎实的成就。