Publication | Closed Access
Unified Representation Learning for Cross Model Compatibility
17
Citations
26
References
2020
Year
Unknown Venue
EngineeringMachine LearningBiometricsRepresentation LearningFace DetectionFacial Recognition SystemImage AnalysisText-to-image RetrievalData SciencePattern RecognitionUnified ClassificationUnified RepresentationMachine VisionFeature LearningComputer ScienceDeep LearningCross Model CompatibilityComputer VisionCross CompatibilityHuman IdentificationTransfer Learning
We propose a unified representation learning framework to address the Cross Model Compatibility (CMC) problem in the context of visual search applications. Cross compatibility between different embedding models enables the visual search systems to correctly recognize and retrieve identities without re-encoding user images, which are usually not available due to privacy concerns. While there are existing approaches to address CMC in face identification, they fail to work in a more challenging setting where the distributions of embedding models shift drastically. The proposed solution improves CMC performance by introducing a light-weight Residual Bottleneck Transformation (RBT) module and a new training scheme to optimize the embedding spaces. Extensive experiments demonstrate that our proposed solution outperforms previous approaches by a large margin for various challenging visual search scenarios of face recognition and person re-identification.
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