Developments in touch-sensitive textiles have enabled many novel interactive techniques and applications. Our digitally-knitted capacitive active sensors can be manufactured at scale with little human intervention. Their sensitive areas are created from a single conductive yarn, and they require only few connections to external hardware. This technique increases their robustness and usability, while shifting the complexity of enabling interactivity from the hardware to computational models. This work advances the capabilities of such sensors by creating the foundation for an interactive gesture recognition system. It uses a novel sensor design, and a neural network-based recognition model to classify 12 relatively complex, single touch point gesture classes with 89.8% accuracy, unfolding many possibilities for future applications. We also demonstrate the system's applicability and robustness to real-world conditions through its performance while being worn and the impact of washing and drying on the sensor's resistance.
翻译:近年来,触摸敏感的纺织品的发展已经实现了许多新颖的交互技术和应用。我们开发的数字化针织电容式传感器可以在几乎不需要人工干预的情况下批量生产。它们敏感的区域是由单根导电纱线构成,只需要与外部硬件连接几根导线。这种技术增加了它们的稳健性和可用性,同时将实现交互性的复杂度从硬件转移至计算模型。本研究通过创建一个交互手势识别系统的基础,进一步提高了该传感器的性能。该系统采用一种新颖的传感器设计和基于神经网络的识别模型,可以将12种相对复杂的单触点手势分类识别准确率达到89.8%,为未来的应用提供了很多可能性。我们还通过系统在佩戴过程中的表现以及洗涤对传感器电阻的影响证明了该系统的适用性和稳健性。