论文标题
使用定制的智能手套来识别3个维度形状之间的差异
Identifying the differences between 3 dimensional shapes Using a Custom-built Smart Glove
论文作者
论文摘要
据报道,传感器嵌入式手套系统需要仔细,耗时和精确的校准,以获取一致的可用数据。我们已经开发了低成本的基于Flex传感器的智能手套系统,该系统可能对数据手套的共同限制有弹性。该系统利用基于Arduino的微控制器以及每个手指上的单个弹性传感器。来自Arduinos类似物对数字转换器的反馈可以用于推断对象的尺寸属性,每个手指的反应在握把对象的大小和形状方面会有所不同。在这项工作中,我们报告了它在不同半径的球形和圆柱形形状的统计区分固定物体中的使用,无论手套用户引入了什么变化。使用我们的传感器嵌入式手套系统,我们根据智能手套的每个手指的触觉传感器响应探索了对象分类的实用性。均值的估计标准误差是根据五个手指的平均弹性传感器读数计算得出的。与文献一致,我们发现对象形状,尺寸和Flex传感器读数之间存在系统的依赖性。在比较同一半径的球形和圆柱体对象时,传感器从至少一个手指中输出,表明非重叠的置信区间。当感测各大尺寸的球体和圆柱体时,所有五个手指都对每种形状都有明显不同的反应。我们认为,我们的发现可用于实时对象识别的机器学习模型。
Sensor embedded glove systems have been reported to require careful, time consuming and precise calibrations on a per user basis in order to obtain consistent usable data. We have developed a low cost, flex sensor based smart glove system that may be resilient to the common limitations of data gloves. This system utilizes an Arduino based micro controller as well as a single flex sensor on each finger. Feedback from the Arduinos analog to digital converter can be used to infer objects dimensional properties, the reactions of each individual finger will differ with respect to the size and shape of a grasped object. In this work, we report its use in statistically differentiating stationary objects of spherical and cylindrical shapes of varying radii regardless of the variations introduced by gloves users. Using our sensor embedded glove system, we explored the practicability of object classification based on the tactile sensor responses from each finger of the smart glove. An estimated standard error of the mean was calculated from each of the of five fingers averaged flex sensor readings. Consistent with the literature, we found that there is a systematic dependence between an objects shape, dimension and the flex sensor readings. The sensor output from at least one finger, indicated a non-overlapping confidence interval when comparing spherical and cylindrical objects of the same radius. When sensing spheres and cylinders of varying sizes, all five fingers had a categorically varying reaction to each shape. We believe that our findings could be used in machine learning models for real-time object identification.