In this work, an extensive review of literature in the field of gesture recognition carried out along with the implementation of a simple classification system for hand hygiene stages based on deep learning solutions. A subset of robust dataset that consist of handwashing gestures with two hands as well as one-hand gestures such as linear hand movement utilized. A pretrained neural network model, RES Net 50, with image net weights used for the classification of 3 categories: Linear hand movement, rub hands palm to palm and rub hands with fingers interlaced movement. Correct predictions made for the first two classes with > 60% accuracy. A complete dataset along with increased number of classes and training steps will be explored as a future work.
翻译:在这项工作中,对手势识别领域的文献进行了广泛的审查,同时根据深层学习的解决办法,对手卫生阶段实施简单的分类系统; 一套可靠的数据集,包括用两只手洗手的手势和单手手手手势,例如使用的线性手动; 一种预先训练的神经网络模型,RES Net 50, 以及用于分类的三类图象网重量:线形手动、手掌手掌对手掌和用手指交叉移动。 前两类的精确度大于60%的正确预测; 今后将探讨一个完整的数据集,同时增加课程和培训步骤的数量。