4.7 Article

AMS-Net: An Attention-Based Multi-Scale Network for Classification of 3D Terracotta Warrior Fragments

期刊

REMOTE SENSING
卷 13, 期 18, 页码 -

出版社

MDPI
DOI: 10.3390/rs13183713

关键词

self-attention; multi-scale; deep neural networks; point cloud classification; Terracotta Warrior fragments

资金

  1. National Key Research and Development Program of China [2019YFC1521103, 2019YFC1521102]
  2. National Natural Science Foundation of China [61701403, 61731015]
  3. Key R&D Projects in Shaanxi Province [2019ZDLSF07-02, 2019ZDLGY1001]
  4. Key R&D Projects in Qinghai Province [2020-SF-140]
  5. China Post-doctoral Science Foundation [2018M643719]
  6. Young Talent Support Program of the Shaanxi Association for Science and Technology [20190107]
  7. Scientific Research Program-Shaanxi Provincial Education Department [18JK0767]

向作者/读者索取更多资源

AMS-Net is an attention-based multi-scale neural network proposed for extracting significant geometric and semantic features of Terracotta Warrior fragments for effective classification. With a multi-scale strategy, it can extract local and global features from different scales in parallel, enhancing accuracy and performance in classification tasks.
As an essential step in the restoration of Terracotta Warriors, the results of fragments classification will directly affect the performance of fragments matching and splicing. However, most of the existing methods are based on traditional technology and have low accuracy in classification. A practical and effective classification method for fragments is an urgent need. In this case, an attention-based multi-scale neural network named AMS-Net is proposed to extract significant geometric and semantic features. AMS-Net is a hierarchical structure consisting of a multi-scale set abstraction block (MS-BLOCK) and a fully connected (FC) layer. MS-BLOCK consists of a local-global layer (LGLayer) and an improved multi-layer perceptron (IMLP). With a multi-scale strategy, LGLayer can parallel extract the local and global features from different scales. IMLP can concatenate the high-level and low-level features for classification tasks. Extensive experiments on the public data set (ModelNet40/10) and the real-world Terracotta Warrior fragments data set are conducted. The accuracy results with normal can achieve 93.52% and 96.22%, respectively. For real-world data sets, the accuracy is best among the existing methods. The robustness and effectiveness of the performance on the task of 3D point cloud classification are also investigated. It proves that the proposed end-to-end learning network is more effective and suitable for the classification of the Terracotta Warrior fragments.

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