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A random center surround bottom up visual attention model useful for salient region detection

机译:随机中心环绕的自下而上的视觉注意模型可用于显着区域检测

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In this article, we propose a bottom-up saliency model which works on capturing the contrast between random pixels in an image. The model is explained on the basis of the stimulus bias between two given stimuli (pixel intensity values) in an image and has a minimal set of tunable parameters. The methodology does not require any training bases or priors. We followed an established experimental setting and obtained state-of-the-art-results for salient region detection on the MSR dataset. Further experiments demonstrate that our method is robust to noise and has, in comparison to six other state-of-the-art models, a consistent performance in terms of recall, precision and F-measure.
机译:在本文中,我们提出了一种自下而上的显着性模型,该模型可用于捕获图像中随机像素之间的对比度。该模型是基于图像中两个给定刺激​​(像素强度值)之间的刺激偏差进行解释的,并且具有最少的一组可调参数。该方法不需要任何培训基础或先验知识。我们遵循既定的实验设置,并获得了MSR数据集上显着区域检测的最新结果。进一步的实验表明,我们的方法对噪声具有鲁棒性,并且与其他六个最新模型相比,在查全率,精度和F量度方面具有一致的性能。

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