Airwriting Recognition refers to the problem of identification of letters written in space with movement of the finger. It can be seen as a special case of dynamic gesture recognition wherein the set of gestures are letters in a particular language. Surface Electromyography (sEMG) is a non-invasive approach used to capture electrical signals generated as a result of contraction and relaxation of the muscles. sEMG has been widely adopted for gesture recognition applications. Unlike static gestures, dynamic gestures are user-friendly and can be used as a method for input with applications in Human Computer Interaction. There has been limited work in recognition of dynamic gestures such as airwriting, using sEMG signals and forms the core of the current work. In this work, a multi-loss minimization framework for sEMG based airwriting recognition is proposed. The proposed framework aims at learning a feature embedding vector that minimizes the triplet loss, while simultaneously learning the parameters of a classifier head to recognize corresponding alphabets. The proposed method is validated on a dataset recorded in the lab comprising of sEMG signals from 50 participants writing English uppercase alphabets. The effect of different variations of triplet loss, triplet mining strategies and feature embedding dimension is also presented. The best-achieved accuracy was 81.26% and 65.62% in user-dependent and independent scenarios respectively by using semihard positive and hard negative triplet mining. The code for our implementation will be made available at https://github.com/ayushayt/TripCEAiR.
翻译:空投识别是指在空间写成的字母与手指移动的识别问题。它可以被视为一个动态手势识别的特例,在这种动态手势识别中,一套手势是特定语言的字母。地表电磁学(SEMG)是一种非侵入性的方法,用于捕捉肌肉收缩和放松所产生的电子信号。 SEMG被广泛用于手势识别应用程序。与静态手势不同,动态手势便于用户使用,可以用作在人类计算机互动应用中输入信息的一种方法。在确认诸如空写等动态手势方面,工作有限,使用SEMG信号并构成当前工作的核心。在此工作中,提出了一个基于SEMG的空写识别的多损最小化框架。拟议的框架旨在学习一个嵌入矢量的特性,最大限度地减少三重损失,同时学习分类头的参数以识别相应的字母。拟议方法在实验室记录的由SEMG信号组成的由50名参与者编写英文上行字母的SEMG信号构成的数据集。在使用三重精确度、三重的采矿战略中分别展示了三重的精确度变化的效果。