Siemens AG, Technology, Guenther-Scharowsky-Str. 1, 91058 Erlangen, Germany.
Machine Learning and Data Analytics Lab, Department Artificial Intelligence in Biomedical Engineering (AIBE), Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU), Carl-Thiersch-Straße 2b, 91052 Erlangen, Germany.
Sensors (Basel). 2021 Oct 29;21(21):7210. doi: 10.3390/s21217210.
Smart sensors are an integral part of the Fourth Industrial Revolution and are widely used to add safety measures to human-robot interaction applications. With the advancement of machine learning methods in resource-constrained environments, smart sensor systems have become increasingly powerful. As more data-driven approaches are deployed on the sensors, it is of growing importance to monitor data quality at all times of system operation. We introduce a smart capacitive sensor system with an embedded data quality monitoring algorithm to enhance the safety of human-robot interaction scenarios. The smart capacitive skin sensor is capable of detecting the distance and angle of objects nearby by utilizing consumer-grade sensor electronics. To further acknowledge the safety aspect of the sensor, a dedicated layer to monitor data quality in real-time is added to the embedded software of the sensor. Two learning algorithms are used to implement the sensor functionality: (1) a fully connected neural network to infer the position and angle of objects nearby and (2) a one-class SVM to account for the data quality assessment based on out-of-distribution detection. We show that the sensor performs well under normal operating conditions within a range of 200 mm and also detects abnormal operating conditions in terms of poor data quality successfully. A mean absolute distance error of 11.6mm was achieved without data quality indication. The overall performance of the sensor system could be further improved to 7.5mm by monitoring the data quality, adding an additional layer of safety for human-robot interaction.
智能传感器是第四次工业革命的重要组成部分,广泛用于为人机交互应用添加安全措施。随着机器学习方法在资源受限环境中的进步,智能传感器系统变得越来越强大。随着更多的数据驱动方法在传感器上部署,时刻监控系统运行时的数据质量变得越来越重要。我们引入了一种带有嵌入式数据质量监控算法的智能电容式传感器系统,以增强人机交互场景的安全性。智能电容式皮肤传感器能够通过利用消费级传感器电子设备来检测附近物体的距离和角度。为了进一步提高传感器的安全性,在传感器的嵌入式软件中添加了一个专门的层来实时监控数据质量。为了实现传感器的功能,使用了两种学习算法:(1)全连接神经网络来推断附近物体的位置和角度,(2)单类 SVM 来根据离群检测进行数据质量评估。我们表明,该传感器在 200mm 的范围内正常工作条件下表现良好,并且能够成功检测到数据质量差的异常工作条件。在没有数据质量指示的情况下,实现了 11.6mm 的平均绝对距离误差。通过监控数据质量,传感器系统的整体性能可以进一步提高到 7.5mm,为人机交互增加了一层额外的安全性。