4.6 Article

Self-Supervised Segmentation for Terracotta Warrior Point Cloud (EGG-Net)

期刊

IEEE ACCESS
卷 10, 期 -, 页码 12374-12384

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3146247

关键词

Point cloud compression; Three-dimensional displays; Image segmentation; Feature extraction; Semantics; Shape; Convolution; Point cloud; self-supervised learning; convolution neural network; terracotta warrior

资金

  1. National Natural Science Foundation of China [61731015]
  2. National Key Research and Development Program of China [2020YFC1523301, 2019YFC1521103, 2020YFC1523303]
  3. Key Research and Development Program of Shaanxi Province [2019ZDLSF07-02, 2019ZDLGY10-01]
  4. Major Research and Development Project of Qinghai [2020-SF-142]

向作者/读者索取更多资源

This study focuses on cultural relics restoration and fragment splicing research, proposing the EGG-Net method to automatically calibrate the terracotta warrior dataset. EGG-Net is a self-supervised model that extracts features and segments point cloud data through modular steps, achieving better results than existing methods.
At present, our team focuses on cultural relics restoration and fragment splicing research. In the research process of terracotta warrior splicing, we find that the existing calibrated fragment data is relatively small, which is not enough for related research. Therefore, we need to calibrate and segment different parts of the intact terracotta warrior data and extract some data we need to use in the future. However, at present, we are short of human resources. If we want to carry out manual calibration, it will take much time, bringing trouble to our future work. Therefore, we hope to design a method to automatically calibrate the terracotta warrior dataset with a small amount of calibrated data. The existing 3D neural network research mainly focuses on supervised classification, segmentation, and unsupervised reconstruction. We cannot find enough schemes to refer to, and the existing methods do not perform well on our terracotta warrior dataset. Therefore, in this article, we propose EGG-Net to solve this problem. EGG-Net is an end-to-end self-supervised model, and it consists of two modules. The first module is an encoder based on dynamic graph and edge convolution. We can extract point cloud features with this module. The second module, called segmenter, is based on multi-layer perceptron, adding labels to points and segmenting the point cloud. After the neural network, we add point refinement operation to the pipeline. Point refinement can adjust the cluster label estimated by the neural network with superpoint, which can optimize the loss function and help us train the neural network. Our EGG-Net can back-propagate with the refinement operation. We evaluated EGG-Net on the terracotta warrior data and ShapeNet Part by measuring the accuracy and the latency. The experiment result shows that our EGG-Net outperforms the state-of-the-art methods.

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