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Commentary Paper 2 on 'Robust Unattended and Stolen Object Detection by Fusing Simple Algorithms'

机译:评注3“通过熔断简单算法通过稳健无人看管和偷窃和被盗物体检测”

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The technique discussed in this article proposes to distinguish between unattended and stolen objects by combining shape and appearance similarity measures of foreground objects observed in consecutive frames of a video. Static objects are detected by examining trajectories and people are removed from consideration. Object shape boundary is first refined using active contours. Shape similarity is then defined by computing gradient magnitudes along the object boundaries and counting how many boundary pixels have values higher/lower than predefined thresholds. Appearance similarity is based on differences between histograms using the foreground mask on the current and background images. Probabilities are defined assuming the shape and appearance measures follow the Gaussian distribution (with trained parameters). Final measures of unattended/stolen objects are produced by averaging the probabilities and used to classify static-nonhuman objects. Experiments show that combining the three measures gives better results than using each of the measures alone.
机译:本文讨论的技术提出通过组合在视频的连续帧中观察到的前景对象的形状和外观相似度来区分无人看管和被盗物体。通过检查轨迹检测静态对象,并从考虑中删除人员。对象形状边界首先使用活动轮廓改进。然后通过沿着对象边界计算梯度大小来定义形状相似度,并计算多于预定阈值的值更高/低的值。外观相似性是基于使用当前和背景图像上的前景掩模的直方图之间的差异。假设形状和外观测量遵循高斯分布(具有训练有素的参数),定义了概率。通过平均概率来生成无人看管/被盗对象的最终测量,并用于对静态非人对象进行分类。实验表明,组合三种措施提供比使用每个措施的更好的结果。

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