Determining Distance to an Object and Type of its Material Based on Data of Capacitive Sensor Signal and Machine Learning Techniques

Polina Kozyr, A. Saveliev, Lev Kuznetsov
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引用次数: 1

Abstract

Capacitive proximity sensors allow detecting the presence of nearby objects without any physical contact with them, as well as in poor visibility conditions in the presence of dust or smoke. Tactile sensors in robotic devices provide additional information about the environment to the robot control system, and particularly serve as a feedback element for an object gripping system or a robot's coordination and gait system. In this work, tactile sensors were used to determine the distance from the object to the sensor and to recognize the type of object material. An array of capacitive sensors of four cells was used. We tested the effectiveness of seven machine learning methods (support vector machine (SVM), decision tree, naive Bayesian classifier (NBC), random forest, k-nearest neighbors method, gradient boosting, neural network model (Keras, ReLU activation function) in the problem of determining the distance to an object, as well as its type of material. According to the results of the experiment, the most accurate method for recognizing the type of object material was the k-nearest neighbors method (96.9%), and the most accurate method for determining the distance to an object based on the output signal of capacitive sensors and the object material was a random forest (78.7%).
基于电容式传感器信号数据和机器学习技术确定物体的距离和材料类型
电容式接近传感器允许检测附近物体的存在,而无需与它们进行任何物理接触,以及在存在灰尘或烟雾的能见度较差的条件下。机器人设备中的触觉传感器为机器人控制系统提供有关环境的附加信息,特别是作为物体抓取系统或机器人协调和步态系统的反馈元素。在这项工作中,触觉传感器被用来确定物体到传感器的距离,并识别物体材料的类型。采用四单元电容式传感器阵列。我们测试了七种机器学习方法(支持向量机(SVM)、决策树、朴素贝叶斯分类器(NBC)、随机森林、k近邻方法、梯度增强、神经网络模型(Keras、ReLU激活函数)在确定物体距离及其材料类型问题上的有效性。实验结果表明,识别物体材料类型最准确的方法是k近邻法(96.9%),基于电容式传感器输出信号与物体材料确定物体距离最准确的方法是随机森林法(78.7%)。
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