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3D point cloud registration denoising method for human motion image using deep learning algorithm

机译:基于深度学习算法的人体运动图像3D点云配准去噪方法

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摘要

Aiming at the problem of 3D point cloud noise affecting the efficiency and precision of human body 3D reconstruction in complex scenes, a 3D point cloud registration denoising method for human motion image using depth learning algorithm is proposed. First, two Kinect sensors are used to collect the three-dimensional data of the human body in the scene, and the spatial alignment under the Bursa linear model is used to pre-process the background point cloud data. The depth image of the point cloud is calculated, and the depth image pair is extracted by the convolutional neural network. Furthermore, the feature difference of the depth image pair is taken as the input of the fully connected network and the point cloud registration parameter is calculated, and the above operation is performed iteratively until the registration error is less than the acceptable threshold. Then, the improved C-means algorithm is used to remove the outlier, the noise is clustered, and the large-scale outlier noise is removed. Finally, the high-frequency information is processed by the depth data bilateral filtering method. The experimental results show that compared with the traditional bilateral filtering algorithm and fuzzy C-means algorithm, the proposed method can effectively remove noise of different scales and maintain good performance on the basis of maintaining human body features. In the point cloud model of A, B, and C, the average error of the proposed method is lower than that of the traditional bilateral filtering algorithm with 15.7%, 15.9%, and 19.8%, respectively, and it is lower than that of the fuzzy C-means algorithm with 25.8%, 26.9%, and 30.2%, respectively.
机译:针对3D点云噪声影响复杂场景下人体3D重建效率和精度的问题,提出了一种基于深度学习算法的人体运动图像3D点云配准去噪方法。首先,使用两个Kinect传感器收集场景中人体的三维数据,并使用Bursa线性模型下的空间对齐对背景点云数据进行预处理。计算点云的深度图像,并通过卷积神经网络提取深度图像对。此外,将深度图像对的特征差作为全连接网络的输入并计算点云配准参数,并且反复进行上述操作,直到配准误差小于可接受的阈值为止。然后,使用改进的C均值算法去除异常值,对噪声进行聚类,并去除大规模的异常值噪声。最后,通过深度数据双边滤波方法处理高频信息。实验结果表明,与传统的双边滤波算法和模糊C-均值算法相比,该方法在保持人体特征的基础上,可以有效地去除不同尺度的噪声并保持良好的性能。在A,B和C的点云模型中,该方法的平均误差分别低于传统的双边滤波算法的15.7%,15.9%和19.8%,并且低于传统的双边滤波算法。模糊C均值算法的比例分别为25.8%,26.9%和30.2%。

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