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LED color prediction using a boosting neural network model for a visual-MIMO system

机译:使用升压神经网络模型的LED颜色预测,用于视觉MIMO系统

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摘要

Color decision of Light-emitting diode (LED) by smartphone cameras is a challenging area in visual- multiple-input multiple-output (MIMO) systems. In this study, we use a generalized color modulation (GCM) technique for a visual-MIMO system. We propose a boosting neural network (BNN) model that can predict LED color from an LED image. To develop this learning model, we use LED image pixels as input features by resizing all LED images to 10 x 10 pixels through bicubic anti-aliasing interpolation. The model is trained in three stages: (1) select the coefficient of the activation function, (2) train each feature to build weak learners, and (3) train the weak learners to predict LED color. Then, we make a symbol decision by measuring the minimum Euclidean distance between the predicted color of the received symbol and transmitted symbol colors. We evaluate our prediction by measuring the root-mean-square error (RMSE) of our test dataset at different environmental light intensities. We also measure the average closeness accuracy and symbol error rate (SER) performance of the proposed method with respect to transmission distances and different sizes of constellation diagrams. Finally, we compare the performance of our proposed BNN model with that of a multiple-linear-regression method.
机译:通过智能手机相机的发光二极管(LED)的颜色决策是视觉多输入多输出(MIMO)系统中的具有挑战性的区域。在这项研究中,我们使用用于视觉模拟系统的广义颜色调制(GCM)技术。我们提出了一种升高的神经网络(BNN)模型,可以从LED图像预测LED颜色。为了开发这种学习模型,我们通过双向抗锯齿插值将所有LED图像调整为10 x 10像素来使用LED图像像素作为输入特征。该模型培训三个阶段:(1)选择激活函数的系数,(2)培训每个功能来构建弱学习者,(3)培训弱学习者预测LED颜色。然后,我们通过测量所接收的符号的预测颜色与传输符号颜色之间的最小欧几里德距离来进行符号决定。通过在不同的环境光强度下测量我们的测试数据集的根均方误差(RMSE)来评估我们的预测。我们还测量所提出的方法关于传输距离和不同大小的星座图的平均近距离精度和符号误差率(SER)性能。最后,我们将我们提出的BNN模型的性能与多线性回归方法的表现进行了比较。

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