Detecting Anomalies in Space using Multivariate Convolutional LSTM with Mixtures of Probabilistic PCA
- 25 July 2019
- conference paper
- conference paper
- Published by Association for Computing Machinery (ACM)
Abstract
No abstract availableFunding Information
- South Korea NRF (NRF-2017R1C1B5076474)
- The ICT CC Program MSIT South Korea (IITP-2019-2011-1-00783)
- Korea Aerospace Research Institute (KARI) South Korea (grant funded by MSIT (Satellite Mission Operations) South Korea)
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