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Proceedings of the AAAI Conference on Artificial Intelligence, 1(32), 2018

DOI: 10.1609/aaai.v32i1.12298

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Recurrently Aggregating Deep Features for Salient Object Detection

Journal article published in 2018 by Xiaowei Hu ORCID, Lei Zhu, Jing Qin, Chi-Wing Fu, Pheng-Ann Heng
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Salient object detection is a fundamental yet challenging problem in computer vision, aiming to highlight the most visually distinctive objects or regions in an image. Recent works benefit from the development of fully convolutional neural networks (FCNs) and achieve great success by integrating features from multiple layers of FCNs. However, the integrated features tend to include non-salient regions (due to low level features of the FCN) or lost details of salient objects (due to high level features of the FCN) when producing the saliency maps. In this paper, we develop a novel deep saliency network equipped with recurrently aggregated deep features (RADF) to more accurately detect salient objects from an image by fully exploiting the complementary saliency information captured in different layers. The RADF utilizes the multi-level features integrated from different layers of a FCN to recurrently refine the features at each layer, suppressing the non-salient noise at low-level of the FCN and increasing more salient details into features at high layers. We perform experiments to evaluate the effectiveness of the proposed network on 5 famous saliency detection benchmarks and compare it with 15 state-of-the-art methods. Our method ranks first in 4 of the 5 datasets and second in the left dataset.