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Image Captioning with Sparse Recurrent Neural Network

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arxiv 1908.10797 v2 pith:E3MNHY4Y submitted 2019-08-28 cs.CV cs.CLcs.LG

Image Captioning with Sparse Recurrent Neural Network

classification cs.CV cs.CLcs.LG
keywords methodnetworkneuralproposedcaptioningimagelossmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recurrent Neural Network (RNN) has been widely used to tackle a wide variety of language generation problems and are capable of attaining state-of-the-art (SOTA) performance. However despite its impressive results, the large number of parameters in the RNN model makes deployment to mobile and embedded devices infeasible. Driven by this problem, many works have proposed a number of pruning methods to reduce the sizes of the RNN model. In this work, we propose an end-to-end pruning method for image captioning models equipped with visual attention. Our proposed method is able to achieve sparsity levels up to 97.5% without significant performance loss relative to the baseline (~ 2% loss at 40x compression after fine-tuning). Our method is also simple to use and tune, facilitating faster development times for neural network practitioners. We perform extensive experiments on the popular MS-COCO dataset in order to empirically validate the efficacy of our proposed method.

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