A New Camera Calibration Based on Neural Network with Tunable Activation Function in Intelligent Space

Mingxin Yuan, Haixiu Hu, Yafeng Jiang, Sheng Hang
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引用次数: 7

Abstract

In order to solve the camera calibration in intelligent space of mobile robot, a new calibration method based on neural network with tunable activation function (TAF) is presented. In the TAF model, the inner product mode is adopted in the calculation of output signal in synapse model and the S function is adopted in base function. Taking the coordinate in image coordinate system as the network input, and the coordinate in world coordinate system as the network output, the weight matrix, threshold matrix and activation function parameter are achieved firstly through the network training based on sample data, then the calibration test are carried out using the TAF network which is trained. The experiment results show that, compared with the test results of BP network, the proposed calibration method is characterized by high detection precision and quick detection speed, which verifies the validity of TAF network in camera calibration.
智能空间中基于可调激活函数神经网络的摄像机标定新方法
为了解决移动机器人智能空间中的摄像机标定问题,提出了一种基于可调激活函数(TAF)的神经网络标定方法。在TAF模型中,突触模型的输出信号计算采用内积方式,基函数采用S函数。以图像坐标系中的坐标作为网络输入,世界坐标系中的坐标作为网络输出,首先通过基于样本数据的网络训练获得权值矩阵、阈值矩阵和激活函数参数,然后利用训练好的TAF网络进行标定测试。实验结果表明,与BP网络的测试结果相比,所提出的标定方法具有检测精度高、检测速度快的特点,验证了TAF网络在摄像机标定中的有效性。
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