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Learning visual saliency for stereoscopic images

机译:学习立体图像的视觉显着性

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Currently, there are various saliency detection models proposed for saliency prediction in 2D images/video in the previous decades. With the rapid development of stereoscopic display techniques, stereoscopic saliency detection is much desired for the emerging stereoscopic applications. Compared with 2D saliency detection, the depth factor has to be considered in stereoscopic saliency detection. Inspired by the wide applications of machine learning techniques in 2D saliency detection, we propose to use the machine learning technique for stereoscopic saliency detection in this paper. The contrast features from color, luminance and texture in 2D images are adopted in the proposed framework. For the depth factor, we consider both the depth contrast and depth degree in the proposed learned model. Additionally, the center-bias factor is also used as an input feature for learning the model. Experimental results on a recent large-scale eye tracking database show the better performance of the proposed model over other existing ones.
机译:当前,在过去的几十年中,提出了各种用于在2D图像/视频中进行显着性预测的显着性检测模型。随着立体显示技术的迅速发展,对于新兴的立体应用非常需要立体显着性检测。与2D显着性检测相比,在立体显着性检测中必须考虑深度因子。受机器学习技术在2D显着性检测中广泛应用的启发,我们建议在本文中将机器学习技术用于立体显着性检测。该框架采用了二维图像中颜色,亮度和纹理的对比度特征。对于深度因子,我们在建议的学习模型中同时考虑了深度对比和深度度。此外,中心偏置因子还用作学习模型的输入功能。在最近的大规模眼动跟踪数据库上的实验结果表明,与其他现有模型相比,该模型具有更好的性能。

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