Dmitri Jarnikov

2papers

2 Papers

LGJan 12, 2023
Equivariant Representation Learning in the Presence of Stabilizers

Luis Armando Pérez Rey, Giovanni Luca Marchetti, Danica Kragic et al.

We introduce Equivariant Isomorphic Networks (EquIN) -- a method for learning representations that are equivariant with respect to general group actions over data. Differently from existing equivariant representation learners, EquIN is suitable for group actions that are not free, i.e., that stabilize data via nontrivial symmetries. EquIN is theoretically grounded in the orbit-stabilizer theorem from group theory. This guarantees that an ideal learner infers isomorphic representations while trained on equivariance alone and thus fully extracts the geometric structure of data. We provide an empirical investigation on image datasets with rotational symmetries and show that taking stabilizers into account improves the quality of the representations.

LGMay 24, 2017
Anomaly Detection in a Digital Video Broadcasting System Using Timed Automata

Xiaoran Liu, Qin Lin, Sicco Verwer et al.

This paper focuses on detecting anomalies in a digital video broadcasting (DVB) system from providers' perspective. We learn a probabilistic deterministic real timed automaton profiling benign behavior of encryption control in the DVB control access system. This profile is used as a one-class classifier. Anomalous items in a testing sequence are detected when the sequence is not accepted by the learned model.