An investigation of gradient as a feature cue for saliency detection

Christopher Cooley, S. Coleman, B. Gardiner, B. Scotney
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Abstract

Salient object detection is a prominent research topic, based on a human's ability to selectively process conspicuous objects/regions within a scene. With many low-level features being adopted into saliency models, gradient is often overlooked. We investigate the effectiveness of gradient as a feature, applying and evaluating multiple image gradient operators. Scale is also addressed via the use of different sizes of convolutional masks and by varying the neighbour region to calculate gradient contrast. Finally, we present and evaluate a single scale saliency model with the respective gradient cue from each operator, for the detection of salient objects. Each model is evaluated on the publicly available MSRA10K salient object dataset.
梯度作为显著性检测特征线索的研究
显著目标检测是一个突出的研究课题,它基于人类有选择地处理场景中显著物体/区域的能力。随着许多低级特征被纳入显著性模型,梯度常常被忽略。我们研究了梯度作为特征的有效性,应用和评估了多个图像梯度算子。通过使用不同大小的卷积掩模和通过改变相邻区域来计算梯度对比度,也解决了尺度问题。最后,我们提出并评估了一个单尺度显著性模型,该模型具有每个算子各自的梯度提示,用于显著性对象的检测。每个模型都在公开可用的MSRA10K显著对象数据集上进行评估。
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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