Paying More Attention to Saliency

Author:

Cornia Marcella1,Baraldi Lorenzo1,Serra Giuseppe2,Cucchiara Rita1

Affiliation:

1. University of Modena and Reggio Emilia, Italy

2. University of Udine, Udine, Italy

Abstract

Image captioning has been recently gaining a lot of attention thanks to the impressive achievements shown by deep captioning architectures, which combine Convolutional Neural Networks to extract image representations and Recurrent Neural Networks to generate the corresponding captions. At the same time, a significant research effort has been dedicated to the development of saliency prediction models, which can predict human eye fixations. Even though saliency information could be useful to condition an image captioning architecture, by providing an indication of what is salient and what is not, research is still struggling to incorporate these two techniques. In this work, we propose an image captioning approach in which a generative recurrent neural network can focus on different parts of the input image during the generation of the caption, by exploiting the conditioning given by a saliency prediction model on which parts of the image are salient and which are contextual. We show, through extensive quantitative and qualitative experiments on large-scale datasets, that our model achieves superior performance with respect to captioning baselines with and without saliency and to different state-of-the-art approaches combining saliency and captioning.

Funder

ISCRA

“JUMP -Una piattaforma sensoristica avanzata per rinnovare la pratica e la fruizione dello sport, del benessere, della riabilitazione e del gioco educativo”

NVIDIA Corporation with the donation of the GPUs used for this research

“Città educante” of the National Technological Cluster on Smart Communities

Italian Ministry of Education, University and Research - MIUR

Emilia-Romagna region

CINECA

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference61 articles.

1. Hierarchical Boundary-Aware Neural Encoder for Video Captioning

2. Zoya Bylinskii Tilke Judd Ali Borji Laurent Itti Frédo Durand Aude Oliva and Antonio Torralba. 2017. MIT Saliency Benchmark. Retrieved from http://saliency.mit.edu/. Zoya Bylinskii Tilke Judd Ali Borji Laurent Itti Frédo Durand Aude Oliva and Antonio Torralba. 2017. MIT Saliency Benchmark. Retrieved from http://saliency.mit.edu/.

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