dlcp2023:restricted:review
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dlcp2023:restricted:review [02/10/2023 23:04] – [Track 2. Machine Learning in Natural Sciences] admin | dlcp2023:restricted:review [06/10/2023 09:21] – [Track 1. Machine Learning in Fundamental Physics] admin | ||
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| K.A.Galaktionov / Neural network approach to impact parameter estimation in high-energy collisions using the microchannel plate detector data | 21/09/2023 | Dudko \\ {{ : | | K.A.Galaktionov / Neural network approach to impact parameter estimation in high-energy collisions using the microchannel plate detector data | 21/09/2023 | Dudko \\ {{ : | ||
| E.O.Gres. The selection of gamma events from IACT images with deep learning methods | 30/09/2023 | Dudko \\ {{ : | | E.O.Gres. The selection of gamma events from IACT images with deep learning methods | 30/09/2023 | Dudko \\ {{ : | ||
- | | A.Kryukov. Preliminary results of convolutional neural network models in HiSCORE experiment | 21/09/2023 | **Dolenko< | + | | A.Kryukov. Preliminary results of convolutional neural network models in HiSCORE experiment | 03/10/2023 | Dolenko \\ {{ : |
- | | A.Kryukov. The use of conditional variational autoencoders for simulation of EASs images from IACTs | 21/09/2023 | Review || | + | | A.Kryukov. The use of conditional variational autoencoders for simulation of EASs images from IACTs | 21/ |
| V.S.Latypova / Method for separating extensive air showers by primary mass using machine learning for a SPHERE-type Cherenkov telescope | | V.S.Latypova / Method for separating extensive air showers by primary mass using machine learning for a SPHERE-type Cherenkov telescope | ||
| A.Y.Leonov. Deep Learning for Angle of Arrival Prediction in the Baikal Neutrino Telescope | | A.Y.Leonov. Deep Learning for Angle of Arrival Prediction in the Baikal Neutrino Telescope | ||
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| A.Kasatkin. Machine learning techniques for anomaly detection in high-frequency time series of wind speed and greenhouse gas concentration measurements | | Demichev \\ {{ : | | A.Kasatkin. Machine learning techniques for anomaly detection in high-frequency time series of wind speed and greenhouse gas concentration measurements | | Demichev \\ {{ : | ||
| I.Khabutdinov. Identifying cetacean mammals in high-resolution optical imagery using anomaly detection approach employing Machine Learning models | | I.Khabutdinov. Identifying cetacean mammals in high-resolution optical imagery using anomaly detection approach employing Machine Learning models | ||
- | | M.Krinitsky. Estimating significant wave height from X-band navigation radar using convolutional neural networks | + | | M.Krinitsky. Estimating significant wave height from X-band navigation radar using convolutional neural networks |
| M.A.Ledovskikh. Recognition of skin lesions from image | 21/09/2023 | Krinitsky \\ {{ : | | M.A.Ledovskikh. Recognition of skin lesions from image | 21/09/2023 | Krinitsky \\ {{ : | ||
| A.V.Orekhov. Unsupervised Machine Learning Methods for Determining Special Points of the Polymerase Chain Reaction Fluorescence Accumulation Curve | 13/ | | A.V.Orekhov. Unsupervised Machine Learning Methods for Determining Special Points of the Polymerase Chain Reaction Fluorescence Accumulation Curve | 13/ |
dlcp2023/restricted/review.txt · Last modified: 06/10/2023 12:30 by admin