Visual Saliency Modeling with Deep Learning: A Comprehensive Review

S. Abraham, Binsu C. Kovoor
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Abstract

Visual saliency models mimic the human visual system to gaze towards fixed pixel positions and capture the most conspicuous regions in the scene. They have proved their efficacy in several computer vision applications. This paper provides a comprehensive review of the recent advances in eye fixation prediction and salient object detection, harnessing deep learning. It also provides an overview on multi-modal saliency prediction that considers audio in dynamic scenes. The underlying network structure and loss function for each model are explored to realise how saliency models work. The survey also investigates the inclusion of specific low-level priors in deep learning-based saliency models. The public datasets and evaluation metrics are succinctly introduced. The paper also makes a discussion on the key issues in saliency modeling along with some open problems and growing research directions in the field.
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基于深度学习的视觉显著性建模:综述
视觉显著性模型模仿人类视觉系统,注视固定的像素位置,捕捉场景中最显眼的区域。它们已经在多个计算机视觉应用中证明了其有效性。本文综述了利用深度学习技术在眼球注视预测和显著目标检测方面的最新进展。它还提供了考虑动态场景中的音频的多模态显著性预测的概述。探讨了每个模型的底层网络结构和损失函数,以实现显著性模型的工作原理。该调查还研究了在基于深度学习的显著性模型中包含特定的低级先验。简要介绍了公共数据集和评价指标。本文还讨论了显著性建模中的一些关键问题,以及该领域有待解决的一些问题和发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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