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Object Tracking and Elimination Using Level-of-Detail Canny Edge Maps

机译:使用详细程度Canny Edge贴图的对象跟踪和消除

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摘要

We propose a method for tracking a nonparameterized subject contour in a single video stream with a moving camera. Then we eliminate the tracked contour object by replacing the background scene we get from other frame that is not occluded by the tracked object. Our method consists of two parts: first we track the object using LOD (Level-of-Detail) canny edge maps, then we generate background of each image frame and replace the tracked object in a scene by a background image from other frame. In order to track a contour object, LOD Canny edge maps are generated by changing scale parameters for a given image. A simple (strong) Canny edge map has the smallest number of edge pixels while the most detailed Canny edge map, WcannyN, has the largest number of edge pixels. To reduce side-effects because of irrelevant edges, we start our basic tracking by using simple (strong) Canny edges generated from large image intensity gradients of an input image, called Scanny edges. Starting from Scanny edges, we get more edge pixels ranging from simple Canny edge maps until the most detailed (weaker) Canny edge maps, called Wcanny maps along LOD hierarchy. LOD Canny edge pixels become nodes in routing, and LOD values of adjacent edge pixels determine routing costs between the nodes. We find the best route to follow Canny edge pixels favoring stronger Canny edge pixels. In order to remove the tracked object, we generate approximated background for the first frame. Background images for subsequent frames are based on the first frame background or previous frame images. This approach is based on computing camera motion, camera movement between two image frames. Our method works nice for moderate camera movement with small object shape changes.
机译:我们提出了一种使用移动摄像机跟踪单个视频流中非参数化主体轮廓的方法。然后,通过替换从其他帧获得的,未被跟踪对象遮挡的背景场景,我们消除了跟踪轮廓对象。我们的方法包括两部分:首先,我们使用LOD(详细程度)精明边缘贴图跟踪对象,然后生成每个图像帧的背景,并用其他帧中的背景图像替换场景中的跟踪对象。为了跟踪轮廓对象,可以通过更改给定图像的比例参数来生成LOD Canny边缘贴图。简单的(强)Canny边缘贴图具有最少的边缘像素,而最详细的Canny边缘贴图WcannyN具有最多的边缘像素。为了减少由于不相关的边缘而产生的副作用,我们使用从输入图像的大图像强度梯度(称为“斯堪尼边缘”)产生的简单(强)Canny边缘开始基本的跟踪。从Scanny边缘开始,我们得到更多的边缘像素,从简单的Canny边缘贴图到最详细(较弱)的Canny边缘贴图,沿LOD层次称为Wcanny贴图。 LOD Canny边缘像素成为路由中的节点,相邻边缘像素的LOD值确定节点之间的路由成本。我们找到了遵循Canny边缘像素,偏爱更强Canny边缘像素的最佳路线。为了删除被跟踪的对象,我们为第一帧生成了近似的背景。后续帧的背景图像基于第一帧背景或先前帧图像。该方法基于计算摄像机运动,即两个图像帧之间的摄像机运动。我们的方法适用于物体形状变化较小的适度相机运动。

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