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Attention computation model for coal-mine surveillance video based on non-uniform sampling in spatial domain and time domain

机译:基于时域和时域非均匀采样的煤矿监控视频注意力计算模型

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There are few methods to deal with the coal-mine surveillance video, the only few existing methods all make use of the traditional image engineering ideas. Visual attention has the prominent functions that can reduce computation and accelerate the computing speed. This paper firstly analyzes the limitations of existing down-top attention model in the application of coalmine surveillance video, then proposes a new visual attention computation model based on sequential scale space and multi-features. Different from the existing model, non-uniform sampling in spatial domain of our algorithm is expressed as discrete structure of sequential scale space, and we choose the modified Bessel function as the smooth kernel, in time domain, we establish a threshold for frame sampling. About feature extraction, we choose the motion conspicuity, wavelet package decomposition and gray intensity as measures of saliency, DOG (Difference of Gaussian) operator as the generalized method. Finally, a global saliency map for the interesting objects is formed. The experiment results show the flexibility and effectiveness of this model.
机译:处理煤矿监控视频的方法很少,仅有的几种现有方法都利用了传统的图像工程思想。视觉注意力具有突出的功能,可以减少计算并加快计算速度。本文首先分析了现有的向下注意模型在煤矿监控视频应用中的局限性,然后提出了一种基于连续尺度空间和多特征的视觉注意计算模型。与现有模型不同的是,我们算法的空间域中的非均匀采样被表示为连续尺度空间的离散结构,我们选择了改进的贝塞尔函数作为平滑核,在时域中,我们为帧采样建立了阈值。关于特征提取,我们选择运动显着性,小波包分解和灰度强度作为显着性的度量,选择DOG(高斯差分)算子作为广义方法。最终,形成了有趣对象的全局显着性图。实验结果表明了该模型的灵活性和有效性。

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