Multimodal sensor fusion in the latent representation space
Robert J. Piechocki, Xiaoyang Wang, Mohammud Junaid Bocus
Abstract
A new method for multimodal sensor fusion is introduced. The technique relies on a two-stage process. In the first stage, a multimodal generative model is constructed from unlabelled training data. In the second stage, the generative model serves as a reconstruction prior and the search manifold for the sensor fusion tasks. The method also handles cases where observations are accessed only via subsampling i.e. compressed sensing. We demonstrate the effectiveness and excellent performance on a range of multimodal fusion experiments such as multisensory classification, denoising, and recovery from subsampled observations.
Topics & Concepts
Computer scienceArtificial intelligenceFusionGenerative grammarPattern recognition (psychology)Sensor fusionRepresentation (politics)Generative modelRange (aeronautics)Process (computing)Computer visionMachine learningPoliticsPhilosophyComposite materialPolitical scienceOperating systemLinguisticsLawMaterials scienceUnderwater Acoustics ResearchSpeech and Audio ProcessingBlind Source Separation Techniques