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首页> 外文期刊>Circuits, systems, and signal processing >Saliency Detection via Sparse Reconstruction Errors of Covariance Descriptors on Riemannian Manifolds
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Saliency Detection via Sparse Reconstruction Errors of Covariance Descriptors on Riemannian Manifolds

机译:通过黎曼流形上协方差描述符的稀疏重构错误进行显着性检测

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摘要

We present a novel visual saliency detection method using covariance matrices on a Riemannian manifold. After over-segmentation, superpixels are generated and featured by the region covariance matrix. The superpixels on image boundary are regarded as possible background cues and are used to build the background dictionary. A sparse model is then constructed based on the background dictionary, where a kernel method, embedding Riemannian manifolds into reproducing kernel Hilbert space, is used. For each superpixel, we compute sparse reconstruction errors as a saliency measurement, which are then weighted based on the local context and global context information. Finally, multi-scale reconstruction errors are integrated to reduce the effect of the scale problem, and an object-biased Gaussian model is adopted to refine the saliency map. The main contribution of this paper is using a kernel sparse representation of the region covariance descriptors for saliency detection. Experiments with public benchmark dataset show that the proposed algorithm outperforms the state-of-the-art methods in terms of precision, recall, and mean absolute error, which demonstrate that our method is more effective in uniformly highlighting salient objects and is robust to background noise.
机译:我们提出了在黎曼流形上使用协方差矩阵的新型视觉显着性检测方法。在过度分割之后,生成超像素并通过区域协方差矩阵对其进行特征化。图像边界上的超像素被视为可能的背景提示,并用于构建背景字典。然后,基于背景字典构建一个稀疏模型,其中使用了一种将黎曼流形嵌入到再生内核希尔伯特空间中的核方法。对于每个超像素,我们将稀疏重建误差计算为显着性度量,然后根据局部上下文和全局上下文信息对其进行加权。最后,对多尺度重构误差进行了综合处理,以减小尺度问题的影响,并采用对象偏置的高斯模型对显着性图进行细化。本文的主要贡献是使用区域协方差描述符的核稀疏表示来进行显着性检测。在公开基准数据集上进行的实验表明,该算法在精度,查全率和平均绝对误差方面均优于最新方法,这表明我们的方法在统一突出显示显着对象方面更有效,并且对背景具有鲁棒性噪声。

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