Learning Modality-Invariant Representations for Speech and Images

11 Dec 2017Kenneth LeidalDavid HarwathJames Glass

In this paper, we explore the unsupervised learning of a semantic embedding space for co-occurring sensory inputs. Specifically, we focus on the task of learning a semantic vector space for both spoken and handwritten digits using the TIDIGITs and MNIST datasets... (read more)

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