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Curriculum Audiovisual Learning

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arxiv 2001.09414 v1 pith:2YPC2YZJ submitted 2020-01-26 cs.CV

Curriculum Audiovisual Learning

classification cs.CV
keywords audiovisualmodellearningsoundcomplexcurriculumlocalizationperformance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Associating sound and its producer in complex audiovisual scene is a challenging task, especially when we are lack of annotated training data. In this paper, we present a flexible audiovisual model that introduces a soft-clustering module as the audio and visual content detector, and regards the pervasive property of audiovisual concurrency as the latent supervision for inferring the correlation among detected contents. To ease the difficulty of audiovisual learning, we propose a novel curriculum learning strategy that trains the model from simple to complex scene. We show that such ordered learning procedure rewards the model the merits of easy training and fast convergence. Meanwhile, our audiovisual model can also provide effective unimodal representation and cross-modal alignment performance. We further deploy the well-trained model into practical audiovisual sound localization and separation task. We show that our localization model significantly outperforms existing methods, based on which we show comparable performance in sound separation without referring external visual supervision. Our video demo can be found at https://youtu.be/kuClfGG0cFU.

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