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A fuzzy spatial coherence-based approach to background/foreground separation for moving object detection

机译:基于模糊空间相干性的运动物体检测背景/前景分离方法

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The detection of moving objects from stationary cameras is usually approached by background subtraction, i.e. by constructing and maintaining an up-to-date model of the background and detecting moving objects as those that deviate from such a model. We adopt a previously proposed approach to background subtraction based on self-organization through artificial neural networks, that has been shown to well cope with several of the well known issues for background maintenance. Here, we propose a spatial coherence variant to such approach to enhance robustness against false detections and formulate a fuzzy model to deal with decision problems typically arising when crisp settings are involved. We show through experimental results and comparisons that higher accuracy values can be reached for color video sequences that represent typical situations critical for moving object detection.
机译:通常通过背景减法,即通过构建和维护背景的最新模型并检测与该模型有偏差的运动物体,来对来自静止照相机的运动物体进行检测。我们采用以前提出的基于人工神经网络自组织的背景扣除方法,该方法已被证明可以很好地解决背景维护方面的一些众所周知的问题。在这里,我们为这种方法提出了一种空间相干性变体,以增强针对错误检测的鲁棒性,并制定一个模糊模型来处理通常涉及清晰设置的决策问题。我们通过实验结果和比较结果表明,彩色视频序列可以达到更高的精度值,这些彩色视频序列代表着对移动物体检测至关重要的典型情况。

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