Abstract:
We tackle the problem of finding good architectures for multimodal classification problems. We propose a novel and generic search space that spans a large number of possi...Show MoreMetadata
Abstract:
We tackle the problem of finding good architectures for multimodal classification problems. We propose a novel and generic search space that spans a large number of possible fusion architectures. In order to find an optimal architecture for a given dataset in the proposed search space, we leverage an efficient sequential model-based exploration approach that is tailored for the problem. We demonstrate the value of posing multimodal fusion as a neural architecture search problem by extensive experimentation on a toy dataset and two other real multimodal datasets. We discover fusion architectures that exhibit state-of-the-art performance for problems with different domain and dataset size, including the \ntu~dataset, the largest multimodal action recognition dataset available.
Date of Conference: 15-20 June 2019
Date Added to IEEE Xplore: 09 January 2020
ISBN Information: