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Raspberry pi based single object tracking using Bayesian filter example

机译:基于覆盆子PI的单一对象跟踪,使用贝叶斯过滤器示例

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In recent trends the movable object detection is locating its position & location with reference of higher weighted particles. The color based target detection & tracking is the main role for developing the application like video streaming, research area like color template matching processing & open source visual surveillance area. A Bayesian filtering method & video analysis modeling is required for locating the position of object & template matching under the segmentation area of the interest for the movable objects which comprises evolutionary modules. The extended kalman filter method is used different areas just like video streaming, monitoring application, counting & extraction. The position & tracking the location of single movable object is implemented on the basis of extended kalman filter. The design of video streaming system is directed the evolutionary application for formalization of specific parameter just like especially tracking & location of given moving target. The recent development process is demonstrated by the Bayesian filtering method. This method is including an advance technique & very desirable methodology for signal processing with highly usable the region of application. The particle filter is depends on performing step by step sampling with generation of discrete sets of pdf's of set of particles. By using of color based algorithm the particle filter method is solving the drawbacks of kalman filter. It is included combination of higher & lower level segmentation function & algorithm such as object detection, features matching & tracking. The ARM based raspberry Pi Model 2 is obtaining on line video tracking by using Open source Linux OS.
机译:在最近的趋势中,可移动物体检测在较高加权粒子的参考中定位其位置和位置。基于颜色的目标检测和跟踪是开发视频流等应用的主要作用,如彩色模板匹配处理和开源视觉监控区域等研究面积。贝叶斯滤波方法和视频分析建模是在包括进化模块的可移动物体的兴趣下定位对象和模板匹配的位置。扩展的卡尔曼滤波方法使用不同的区域,就像视频流,监控应用,计数和提取一样。在扩展卡尔曼滤波器的基础上实现单个可移动物体位置的位置和跟踪。视频流系统的设计是针对特定参数形式化的进化应用,就像特别跟踪和给定的移动目标的位置。贝叶斯滤波方法证明了最近的开发过程。该方法包括预先技术和非常理想的方法,用于使用高度可用的应用区域的信号处理。粒子滤波器取决于通过产生的离散组的PDF组粒子的产生的步骤采样执行步骤。通过使用颜色的算法,粒子滤波器方法正在解决卡尔曼滤波器的缺点。包括较高和下层分割功能和算法的组合,例如对象检测,具有匹配和跟踪功能。基于ARM的Raspberry PI模型2通过使用开源Linux操作系统获得线路视频跟踪。

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