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Knowledge as Priors: Cross-Modal Knowledge Generalization for Datasets without Superior Knowledge

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arxiv 2004.00176 v1 pith:K5UF4EPF submitted 2020-04-01 cs.CV

Knowledge as Priors: Cross-Modal Knowledge Generalization for Datasets without Superior Knowledge

classification cs.CV
keywords knowledgemodalitiescross-modaldatasethandstudentsuperiordatasets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Cross-modal knowledge distillation deals with transferring knowledge from a model trained with superior modalities (Teacher) to another model trained with weak modalities (Student). Existing approaches require paired training examples exist in both modalities. However, accessing the data from superior modalities may not always be feasible. For example, in the case of 3D hand pose estimation, depth maps, point clouds, or stereo images usually capture better hand structures than RGB images, but most of them are expensive to be collected. In this paper, we propose a novel scheme to train the Student in a Target dataset where the Teacher is unavailable. Our key idea is to generalize the distilled cross-modal knowledge learned from a Source dataset, which contains paired examples from both modalities, to the Target dataset by modeling knowledge as priors on parameters of the Student. We name our method "Cross-Modal Knowledge Generalization" and demonstrate that our scheme results in competitive performance for 3D hand pose estimation on standard benchmark datasets.

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