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Coin Reconstruction Data

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DataCite Commons2024-04-30 更新2024-07-13 收录
下载链接:
https://rdr.ucl.ac.uk/articles/dataset/Coin_Reconstruction_Data/24921564/2
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These data are used for training, testing, and evaluating the CycleGAN project related to coin reconstructions. Data are used to train the given CycleGAN model and coins are used to evaluate the model both internally, computationally, and by other users.<br>trainingData.zip: This file provides training data obtained used to train the CycleGAN. There is a training folder which contains two folders (mixedBadCoins and mixedGoodCoins). The mixedGoodCoins folder contains coins that are better preserved and used to train what a coin should look like. The mixedBadCoins folder contains damaged coins and attempts to train to reconstruct from these coins. The name of each file corresponds to coins that can be found using the identifier for coins referenced on http://numismatics.org.<br>testCoins.zip: These are image data used to test the developed CycleGAN model. The images folder contains the testing data used to generate model test data. The names of the coins correspond to the identifier on http://numismatics.org. <br>CoinsEvaluation.pdf: This file is used by testers to evaluate if they think given reconstructed coins shows improved quality or not from the real coin. The users are asked to evaluate coins on a 1-5 scale, with 1 indicating no difference and 5 indicating much improved reconstructions.<br>testCoinReconstruction.zip: This folder contains real and fake (i.e., reconstructed coins) that is used to ask judges or users to determine if they can tell if a given coin is real or reconstructed (i.e., fake). In addition to the real and reconstructed coins, a pdf (Real_or_Fake.pdf) is used to ask judges to determine which given coins are real and which are generated reconstructions.<br>finalModel.zip: This is the final CycleGAN model used for reconstructions applied in the paper.<br>
提供机构:
University College London
创建时间:
2024-04-29
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