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Improved Static Hand Gesture Classification on Deep Convolutional Neural Networks Using Novel Sterile Training Technique

机译:利用新型无菌训练技术改进了深度卷积神经网络的静态手势分类

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In this paper, we investigate novel data collection and training techniques towards improving classification accuracy of non-moving (static) hand gestures using a convolutional neural network (CNN) and frequency-modulated-continuous-wave (FMCW) millimeter-wave (mmWave) radars. Recently, non-contact hand pose and static gesture recognition have received considerable attention in many applications ranging from human-computer interaction (HCI), augmented/virtual reality (AR/VR), and even therapeutic range of motion for medical applications. While most current solutions rely on optical or depth cameras, these methods require ideal lighting and temperature conditions. mmWave radar devices have recently emerged as a promising alternative offering low-cost system-on-chip sensors whose output signals contain precise spatial information even in non-ideal imaging conditions. Additionally, deep convolutional neural networks have been employed extensively in image recognition by learning both feature extraction and classification simultaneously. However, little work has been done towards static gesture recognition using mmWave radars and CNNs due to the difficulty involved in extracting meaningful features from the radar return signal, and the results are inferior compared with dynamic gesture classification. This article presents an efficient data collection approach and a novel technique for deep CNN training by introducing “sterile” images which aid in distinguishing distinct features among the static gestures and subsequently improve the classification accuracy. Applying the proposed data collection and training methods yields an increase in classification rate of static hand gestures from 85% to 93% and 90% to 95% for range and range-angle profiles, respectively.
机译:在本文中,我们研究了新颖的数据收集和培训技术,以提高使用卷积神经网络(CNN)和频率调制连续波(FMCW)毫米波(MMWAVE)的非移动(静态)手势的分类精度雷达。最近,非接触式手部姿势和静态手势识别在来自人机交互(HCI),增强/虚拟现实(AR / VR),以及医疗应用的甚至治疗运动范围内,在许多应用中获得了相当大的关注。虽然大多数电流解决方案依赖光学或深度摄像机,但这些方法需要理想的照明和温度条件。 MMWave雷达设备最近被出现为有希望的替代方案,提供低成本的片上传感器,其输出信号即使在非理想的成像条件下也包含精确的空间信息。另外,通过同时学习特征提取和分类,在图像识别中已经采用了深度卷积神经网络。然而,由于难以从雷达返回信号提取有意义的特征而难以提取有意义的特征,因此使用MMWVES雷达和CNNS对静态手势识别进行了很少的工作,并且结果与动态手势分类相比较差。本文介绍了一种有效的数据收集方法,并通过引入“无菌”图像来实现深层CNN培训的新技术,这有助于区分静态手势中的明显特征,随后提高分类精度。应用建议的数据收集和培训方法分别产生85%至93%和90%至95%的静态手势分类率的增加,分别为范围和范围角分析。

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