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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Moving object detection and tracking in video by cellular learning automata and gradient method in fuzzy domain
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Moving object detection and tracking in video by cellular learning automata and gradient method in fuzzy domain

机译:模糊域中基于元学习自动机和梯度法的视频运动目标检测与跟踪

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In this paper we use cellular learning automata integrated with a normalized gradient based motion detection algorithm in fuzzy domain to detect and track the moving objects in a video. A sequence of the video frames with a preset interval are first converted to gray scale images and then based on the first frame a first order gradient is calculated in fuzzy domain. Normalization process is then performed and the gray levels are ranged between 0 and 255 for each pixel. A sequence of primary motion detected images are calculated from the normalized first order gradient images subject to a minimum threshold value for difference between every two sequent gradient images. If the condition of a minimum difference is met, each primary motion detected image is therefore computed as the products of the second order gradient of the image by the difference of the current frame with the average. Two terms of the products provide larger values for larger motions while vibrations and slight shakings are avoided. Resulting motion images are normalized to the gray scale range [0: 255]. Then, cellular learning automata algorithm is used to reconstruct and form the object(s) of interest based on a set of rules. Objects are detected by a contour after the reconstruction. Detected objects in the sequential frames are used for the tracking purpose. This algorithm can be used for controlling and supervising a secured public place viewed by a fixed camera. The objects may be considered as the traversing people, animals, cars or any carrying baggage and the algorithm can be parameterized for the objects of interest. Finally, all parameters of the method as the threshold values, score, penalty and the number of evolution cycles are analyzed to find the optimum values for the dataset under analysis. Comprehensive experiments are performed to show the capability and efficiency of the proposed method while it is stated that developing this code in MATLAB constrains working in offline processing mode.
机译:在本文中,我们将细胞学习自动机与模糊域中基于归一化梯度的运动检测算法集成在一起,以检测和跟踪视频中的运动对象。具有预定间隔的视频帧序列首先被转换为灰度图像,然后基于第一帧在模糊域中计算一阶梯度。然后执行归一化处理,并且每个像素的灰度级在0到255之间。从归一化的一阶梯度图像计算出一连串的主运动检测图像,该序列受最小阈值的限制,该阈值用于每两个后续梯度图像之间的差异。如果满足最小差异的条件,则因此将每个主要运动检测图像计算为图像的二阶梯度乘以当前帧与平均值之差的乘积。产品的两个术语为较大的运动提供较大的值,同时避免了振动和轻微摇动。所得到的运动图像被归一化为灰度范围[0:255]。然后,基于一组规则,将细胞学习自动机算法用于重建和形成感兴趣的对象。重建后通过轮廓检测对象。顺序帧中检测到的对象用于跟踪目的。该算法可用于控制和监督固定摄像机所观看的安全公共场所。可以将对象视为穿越的人,动物,汽车或任何携带的行李,并且可以为感兴趣的对象参数化算法。最后,分析该方法的所有参数,例如阈值,得分,罚分和进化周期数,以找到所分析数据集的最佳值。进行了全面的实验以证明所提出方法的能力和效率,同时指出在MATLAB中开发此代码会限制离线处理模式下的工作。

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