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1 to 10 of 1,527 Results
Apr 15, 2026 - YANG Jianfei
Chen, Xinyan, 2026, "RF-MatID Frequency-domain Dataset", https://doi.org/10.21979/N9/YLDFJM, DR-NTU (Data), V1
We introduce RF-MatID, a comprehensive dataset and benchmark designed to bridge the gap in robust material identification. RF-MatID is the largest and most diverse dataset of its kind, featuring: - 16 fine-grained categories derived from 5 superclasses (e.g., Plastic, Metal, Wood...
ZIP Archive - 2.2 GB - MD5: 08401c8ce2834ffb714d2409e57a6924
RF-MatID Dataset in Frequency Domain
Apr 15, 2026 - YANG Jianfei
Chen, Xinyan, 2026, "RF-MatID Time-domain Dataset", https://doi.org/10.21979/N9/ZJ50DD, DR-NTU (Data), V1
We introduce RF-MatID, a comprehensive dataset and benchmark designed to bridge the gap in robust material identification. RF-MatID is the largest and most diverse dataset of its kind, featuring: - 16 fine-grained categories derived from 5 superclasses (e.g., Plastic, Metal, Wood...
ZIP Archive - 3.7 GB - MD5: cf736c143f74c923b9a546c2c08e2738
ZIP Archive - 6.1 GB - MD5: da54397ac5fcc01ad520e609865057a2
YANG Jianfei(Nanyang Technological University)
YANG Jianfei logo
Apr 15, 2026
This dataverse for the projects and datasets published by MARS Lab.
Feb 25, 2026 - Airfoils Datasets For Deep Learning (AI4Science)
Lim, Wei Xian; Chan, Wai Lee; Kong, Wai-Kin Adams; Jessica, Loh Sher En, 2026, "TandemFoilSet: Datasets for Flow Field Prediction of Tandem-Airfoil Through the Reuse of Single Airfoils", https://doi.org/10.21979/N9/KTXSCU, DR-NTU (Data), V1
Accurate simulation of flow fields around tandem geometries is critical for engineering design but remains computationally intensive. Existing machine learning approaches typically focus on simpler cases and lack evaluation on multi-body configurations. To support research in thi...
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