Determining the coordinates of objects detected by a 1Tx + 4Rx antenna system using an artificial neural network; free space case

V. Plakhtii, G. Pochanin, P. Falorni, V. Ruban, T. Bechtel, L. Bossi
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Abstract

We investigated the implementation of artificial neural networks in the detection and discrimination of landmines and similar objects. The experimental data were obtained by using impulse GPR with a 1 Tx + 4Rx antenna system. The possibility of improving the input data by the moving average method was shown. Object identifications and positions are perfect for low noise and for object positions directly under the antenna array. Accuracy declines with increased noise and with distance from the antenna array. For positions of objects that are offset from the training data, the position is still determined with the greatest possible accuracy. The artificial neural network has proven successful in the task of determining the type and positions of the test objects.
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利用人工神经网络确定1Tx + 4Rx天线系统检测到的物体的坐标;自由空间情况
我们研究了人工神经网络在地雷和类似物体的检测和识别中的实现。实验数据采用脉冲探地雷达与1 Tx + 4Rx天线系统。说明了采用移动平均法对输入数据进行改进的可能性。目标识别和位置对于低噪声和直接在天线阵列下的目标位置是完美的。精度随噪声的增加和与天线阵列的距离而下降。对于偏离训练数据的对象位置,仍然以尽可能高的精度确定位置。人工神经网络在确定测试对象的类型和位置方面已经被证明是成功的。
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