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Title MatchMakerNet: Enabling Fragment Matching for Cultural Heritage Analysis
Authors Ariana Villegas, Cristian Lopez, Iván Sipirán
Publication date 2023
Abstract Automating the reassembly of fragmented objects is a complex
task
with applications in cultural heritage preservation, paleontology, and
medicine. However, the matching subtask of the reassembly process has
received limited attention, despite its crucial role in reducing the
alignment search space. To address this gap, we propose MatchMakerNet, a
network architecture designed to automate the pairing of object fragments
for reassembly. By taking two point clouds as input and leveraging graph
convolution alongside a simplified version of DGCNN, MatchMakerNet achieves
remarkable results. After training on the Artifact (synthetic) dataset, we
achieve an accuracy of 87.31% in all-to-all comparisons between the
fragments. In addition, it demonstrates robust generalization capabilities,
achieving 86.93% accuracy on the Everyday (synthetic) dataset and 83.03% on
the Puzzles 3D (real-world) dataset. These findings highlight the
effectiveness and versatility of MatchMakerNet in solving the matching
subtask.
Pages 1632-1641
Conference name ICCV Workshop on e-Heritage
Publisher IEEE Computer Society Press (Los Alamitos, CA, USA)
Reference URL View reference page