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Wheel Center Detection From Point Cloud Based on Recurrent Neural Networks

机译:基于递归神经网络的点云轮中心检测

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In the intelligent parking lot, the robot has to get the accurate position of the wheels in the process of automatic parking. The traditional image processing algorithm is not proper to be employed in this application because of sensitivity to the noises. Originating from natural language processing, RNN has now been used in the computer vision for its robustness and excellent performance. This paper proposes a method to position vehicle wheels from point cloud based on the RNN model. The experimental results show that the prediction accuracy of the bidirectional RNN is obviously higher than that of the unidirectional RNN. In a small-scale training set, the effect of BiLSTM/BiGRU is close, while the training speed of BiGRU is faster, which can be used in the wheel detection system.
机译:在智能停车场中,机器人必须在自动泊车过程中获得车轮的准确位置。由于对噪声的敏感性,传统的图像处理算法不适合在此应用中使用。 RNN源自自然语言处理,由于其健壮性和出色的性能,现已被用于计算机视觉中。提出了一种基于RNN模型的基于点云的车轮定位方法。实验结果表明,双向RNN的预测精度明显高于单向RNN。在小规模训练中,BiLSTM / BiGRU的效果接近,而BiGRU的训练速度更快,可以在车轮检测系统中使用。

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