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首页> 外文期刊>IEEE Transactions on Robotics >Deep Neural Network Based Electrical Impedance Tomographic Sensing Methodology for Large-Area Robotic Tactile Sensing
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Deep Neural Network Based Electrical Impedance Tomographic Sensing Methodology for Large-Area Robotic Tactile Sensing

机译:大面积机器人触觉感应深度神经网络的电气阻抗断层扫描方法

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Electrical impedance tomography (EIT) based tactile sensor offers significant benefits on practical deployment because of its sparse electrode allocation, including durability, large-area scalability, and low fabrication cost, but the degradation of a tactile spatial resolution has remained challenging. This article describes a deep neural network based EIT reconstruction framework, the EIT neural network (EIT-NN), alleviating this tradeoff between tactile sensing performance and hardware simplicity. EIT-NN learns a computationally efficient, nonlinear reconstruction attribute, achieving high-resolution tactile sensation and well-generalized reconstruction capability to address arbitrary complex touch modalities. We train EIT-NN by presenting a sim-to-real dataset synthesis strategy for computationally efficient generalizability. Furthermore, we propose a spatial sensitivity aware mean-squared error loss function, which uses an intrinsic spatial sensitivity of the sensor to guarantee a well-posed EIT operation. We validate an outperformance of EIT-NN against conventional EIT sensing methods by conducting a simulation study, a single-touch indentation test, and a two-point discrimination test. The results show improved spatial resolution, sensitivity, and localization accuracy. The beneficial features of the generalized sensing of EIT-NN were demonstrated by examining touch modality discrimination performance.
机译:由于其稀疏电极分配,包括稀疏电极分配,包括耐用性,大面积可扩展性和低制造成本,电阻断层扫描(EIT)的触觉传感器在实际部署方面具有显着的优势,但触觉空间分辨率的降低仍然挑战。本文介绍了基于深度神经网络的EIT重建框架,EIT神经网络(EIT-NN),减轻了触觉传感性能和硬件简单之间的这种权衡。 EIT-NN了解计算效率,非线性重建属性,实现高分辨率触觉感觉和广泛的重建能力,以解决任意复杂的触摸模式。我们通过呈现SIM-to-Real DataSet合成策略来培训EIT-Nn,以进行计算有效的概括性。此外,我们提出了一种空间敏感性意识意识到的误差损失函数,其使用传感器的内在空间灵敏度来保证良好的EIT操作。我们通过进行仿真研究,单触凹口测试和两点辨别试验来验证EIT-NN对传统EIT感测方法的表现。结果显示出改善的空间分辨率,灵敏度和本地化精度。通过检查触摸模态辨别性能来证明EIT-NN的广义感测的有益特征。

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