Litcius/Paper detail

Unified Probabilistic Deep Continual Learning through Generative Replay and Open Set Recognition

Martin Mundt, Iuliia Pliushch, Sagnik Majumder, Yongwon Hong, Visvanathan Ramesh

2022Journal of Imaging38 citationsDOIOpen Access PDF

Abstract

Modern deep neural networks are well known to be brittle in the face of unknown data instances and recognition of the latter remains a challenge. Although it is inevitable for continual-learning systems to encounter such unseen concepts, the corresponding literature appears to nonetheless focus primarily on alleviating catastrophic interference with learned representations. In this work, we introduce a probabilistic approach that connects these perspectives based on variational inference in a single deep autoencoder model. Specifically, we propose to bound the approximate posterior by fitting regions of high density on the basis of correctly classified data points. These bounds are shown to serve a dual purpose: unseen unknown out-of-distribution data can be distinguished from already trained known tasks towards robust application. Simultaneously, to retain already acquired knowledge, a generative replay process can be narrowed to strictly in-distribution samples, in order to significantly alleviate catastrophic interference.

Topics & Concepts

Computer scienceAutoencoderArtificial intelligenceProbabilistic logicGenerative grammarMachine learningGenerative modelInferenceFocus (optics)Deep learningSet (abstract data type)Bayesian inferenceProcess (computing)Bayesian probabilityProgramming languagePhysicsOperating systemOpticsDomain Adaptation and Few-Shot LearningGeophysical Methods and ApplicationsGenerative Adversarial Networks and Image Synthesis