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Moving Object Detection Based on a New Level Set Algorithm Using Directional Speed Function

机译:基于方向速度函数的新水平集算法的运动目标检测

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In this paper, a moving object detection method is proposed based on a level set algorithm of which speed function employs three properties based on human visual characteristics. The speed function is composed of three factors: directional filtered difference, proximity weighted spatial edgeness, and directional intensity consistency. For the directional filtered difference factor, directional filtering of the difference image between background and current images is introduced to utilize temporal edgeness along a detected contour. The edgeness in the current image is also employed for an initial estimation of moving object regions. The last factor, directional intensity consistency, is based on the continuity assumption of gray-level intensities along an estimated contour. The effectiveness of the proposed algorithm is shown with four real image sequences in terms of objective detection accuracies for various experimental conditions.
机译:本文提出了一种基于水平集算法的运动物体检测方法,该算法的速度函数具有基于人类视觉特征的三种特性。速度函数由三个因素组成:方向滤波差,邻近加权空间边缘度和方向强度一致性。对于定向滤波的差异因子,引入背景图像和当前图像之间的差异图像的定向滤波,以利用沿检测到的轮廓的时间边缘性。当前图像中的边缘度也用于移动物体区域的初始估计。最后一个因素是方向强度一致性,它是基于沿估计轮廓线的灰度强度的连续性假设。就各种实验条件下的目标检测精度而言,该算法的有效性以四个真实图像序列表示。

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