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首页> 外文期刊>Nature reviews Cancer >Touch Position Detection in Electrical Tomography Tactile Sensors Through Quadratic Classifier
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Touch Position Detection in Electrical Tomography Tactile Sensors Through Quadratic Classifier

机译:通过二次分类器触摸电断层术触觉传感器中的触摸位置检测

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摘要

Traditional electrical tomography tactile sensors consider the usage of the system's finite element model. This approach brings disadvantages that jeopardize their applicability aspect and wide use. To address this limitation, the main thrust of this paper is to present a method for touch position identification for an electrical tomography flexible tactile sensor. This is done by using a supervised machine learning algorithm for performing classification, namely quadratic discriminant analysis. This approach provides accurate contact location identification, increasing the detection speed and the sensor versatility when compared with traditional electrical tomography approaches. Results obtained show classification accuracy rates of up to 91.6% on unseen test data and an average Euclidean error ranging from 1 to 10 mm depending on the contact location over the sensor. The sensor is then applied in real case scenarios to show its efficiency. These outcomes are encouraging since they promote the future practical usage of flexible and low-cost sensors.
机译:传统的电断层扫描触觉传感器考虑系统的有限元模型的使用。这种方法带来了危害其适用性方面和广泛使用的缺点。为了解决这个限制,本文的主要推力是为电断层扫描灵活触觉传感器的触摸位置识别方法。这是通过使用监督机器学习算法来执行分类,即二次判别分析。与传统电断层扫描方法相比,这种方法提供了准确的接触位置识别,增加了检测速度和传感器多功能性。结果显示了在看不见的测试数据上的分类精度率高达91.6%,平均欧几里德误差根据传感器上的接触位置为1至10 mm。然后将传感器应用于实际情况,以显示其效率。这些结果是令人鼓舞的,因为他们促进了未来的灵活和低成本传感器的实际使用。

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