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Visual Saliency Detection Based on Multiscale Deep CNN Features

机译:基于多尺度深度CNN特征的视觉显着性检测

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摘要

Visual saliency is a fundamental problem in both cognitive and computational sciences, including computer vision. In this paper, we discover that a high-quality visual saliency model can be learned from multiscale features extracted using deep convolutional neural networks (CNNs), which have had many successes in visual recognition tasks. For learning such saliency models, we introduce a neural network architecture, which has fully connected layers on top of CNNs responsible for feature extraction at three different scales. The penultimate layer of our neural network has been confirmed to be a discriminative high-level feature vector for saliency detection, which we call deep contrast feature. To generate a more robust feature, we integrate handcrafted low-level features with our deep contrast feature. To promote further research and evaluation of visual saliency models, we also construct a new large database of 4447 challenging images and their pixelwise saliency annotations. Experimental results demonstrate that our proposed method is capable of achieving the state-of-the-art performance on all public benchmarks, improving the F-measure by 6.12% and 10%, respectively, on the DUT-OMRON data set and our new data set (HKU-IS), and lowering the mean absolute error by 9% and 35.3%, respectively, on these two data sets.
机译:视觉显着性是认知科学和计算科学(包括计算机视觉)中的基本问题。在本文中,我们发现可以从使用深度卷积神经网络(CNN)提取的多尺度特征中学习高质量的视觉显着性模型,该模型在视觉识别任务中取得了许多成功。为了学习这种显着性模型,我们介绍了一种神经网络架构,该架构在CNN之上具有完全连接的层,这些层在三个不同的尺度上负责特征提取。我们的神经网络的倒数第二层已被证实是用于显着性检测的可区分的高级特征向量,我们称之为深度对比特征。为了生成更强大的功能,我们将手工制作的低级功能与深度对比功能进行了集成。为了促进视觉显着性模型的进一步研究和评估,我们还构建了一个新的大型数据库,其中包含4447个具有挑战性的图像及其按像素显着性注释。实验结果表明,我们提出的方法能够在所有公共基准上达到最先进的性能,在DUT-OMRON数据集和我们的新数据上,将F值分别提高了6.12%和10%。设置(HKU-IS),并将这两个数据集的平均绝对误差分别降低9%和35.3%。

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