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2,541 to 2,550 of 11,426 Results
Apr 4, 2023
Aspaas, Per Pippin, 2023, "Swedish observations of the Aurora Borealis in the period 1716-1732 in contemporaneous scholarly publications", https://doi.org/10.18710/G5J4YS, DataverseNO, V1
This dataset gives an overview of all Swedish observations of the aurora borealis that were published in various Latin publications from the first half of the eighteenth century.
Mar 31, 2023
Henriksen, André; Woldaregay, Ashenafi Zebene; Issom, David-Zacharie; Pfuhl, Gerit; Sato, Keiichi; Årsand, Eirik; Hartvigsen, Gunnar, 2023, "Replication Data for: Dataset of motivational factors for using mobile health applications and systems", https://doi.org/10.18710/AOQF05, DataverseNO, V1
This dataset contains responses from a questionnaire about what motivates people to collect and share their health data for research and public health benefits. The online questionnaire was open for data collection between November 2018 and March 2020. The questionnaire was published in a Norwegian, English and French version, and published online....
Plain Text - 23.1 KB - MD5: d29a0fa833e1d0878531dd44fccd154a
Comma Separated Values - 26.1 KB - MD5: d2413d54d36192d98442c49e22bdd9f0
Describes which answer options are available for each question
Comma Separated Values - 281.0 KB - MD5: c3b1ace55b8d7348abe8c22d7b8b6039
Questionnaire responses
Mar 29, 2023
Gupta, Deepak K.; Bhamba, Udbhav; Thakur, Abhishek; Gupta, Akash; Sharan, Suraj; Demir, Ertugrul; Prasad, Dilip K., 2023, "Supporting Data for: UltraMNIST Classification: A Benchmark to Train CNNs for Very Large Images", https://doi.org/10.18710/4F4KJS, DataverseNO, V1
Convolutional neural network (CNN) approaches available in the current literature are designed to work primarily with low-resolution images. When applied on very large images, challenges related to GPU memory, smaller receptive field than needed for semantic correspondence and the need to incorporate multi-scale features arise. The resolution of in...
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